Abstract
The Tile Calorimeter is the hadron calorimeter covering the central region of the ATLAS experiment at the Large Hadron Collider. Approximately 10,000 photomultipliers collect light from scintillating tiles acting as the active material sandwiched between slabs of steel absorber. This paper gives an overview of the calorimeter’s performance during the years 2008–2012 using cosmic-ray muon events and proton–proton collision data at centre-of-mass energies of 7 and 8 TeV with a total integrated luminosity of nearly 30 fb\(^{-1}\). The signal reconstruction methods, calibration systems as well as the detector operation status are presented. The energy and time calibration methods performed excellently, resulting in good stability of the calorimeter response under varying conditions during the LHC Run 1. Finally, the Tile Calorimeter response to isolated muons and hadrons as well as to jets from proton–proton collisions is presented. The results demonstrate excellent performance in accord with specifications mentioned in the Technical Design Report.
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1 Introduction
ATLAS [1] is a general-purpose detector designed to reconstruct events from colliding hadrons at the Large Hadron Collider (LHC) [2]. The hadronic barrel calorimeter system of the ATLAS detector is formed by the Tile Calorimeter (TileCal), which provides essential input to the measurement of the jet energies and to the reconstruction of the missing transverse momentum. The TileCal, which surrounds the barrel electromagnetic calorimeter, consists of tiles of plastic scintillator regularly spaced between low-carbon steel absorber plates. Typical thicknesses in one period are 3 mm of the scintillator and 14 mm of the absorber parallel to the colliding beams’ axis, with the steel:scintillator volume ratio being 4.7:1. The calorimeter is divided into three longitudinal segments; one central long barrel (LB) section with 5.8 m in length (\(|\eta | < 1.0\)), and two extended barrel (EB) sections (\(0.8< |\eta | < 1.7\)) on either side of the barrel each 2.6 m long.Footnote 1 Full azimuthal coverage around the beam axis is achieved with 64 wedge-shaped modules, each covering \(\Delta \phi = 0.1\) radians. The Tile Calorimeter is located at an inner radial distance of 2.28 m from the LHC beam-line, and has three radial layers with depths of 1.5, 4.1, and \(1.8\lambda \) (\(\lambda \) stands for the nuclear interaction lengthFootnote 2) for the LB, and 1.5, 2.6, and \(3.3\lambda \) for the EB. The amount of material in front of the TileCal corresponds to \(2.3\lambda \) at \(\eta =0\) [1]. A detailed description of the ATLAS TileCal is provided in a dedicated Technical Design Report [3]; the construction, optical instrumentation and installation into the ATLAS detector are described in Refs. [4, 5].
The TileCal design is driven by its ability to reconstruct hadrons, jets, and missing transverse momentum within the physics programme intended for the ATLAS experiment. For precision measurements involving the reconstruction of jets, the TileCal is designed to have a stand-alone energy resolution for jets of \(\sigma /E = 50\%/\sqrt{E \mathrm {(GeV)}} \oplus 3\%\) [1, 3]. To be sensitive to the full range of energies expected in the LHC lifetime, the response is expected to be linear within 2% for jets up to 4 TeV. Good energy resolution and calorimeter coverage are essential for precise missing transverse momentum reconstruction. A special Intermediate Tile Calorimeter (ITC) system is installed between the LB and EB to correct for energy losses in the region between the two calorimeters.
This paper presents the performance of the Tile Calorimeter during the first phase of LHC operation. Section 2 describes the experimental data and simulation used throughout the paper. Details of the online and offline signal reconstruction are provided in Sect. 3. The calibration and monitoring of the approximately 10,000 channels and data acquisition system are described in Sect. 4. Section 5 explains the system of online and offline data quality checks applied to the hardware and data acquisition systems. Section 6 validates the full chain of the TileCal calibration and reconstruction using events with single muons and hadrons. The performance of the calorimeter is summarised in Sect. 7.
1.1 The ATLAS Tile Calorimeter structure and read-out electronics
The light generated in each plastic scintillator is collected at two edges, and then transported to photomultiplier tubes (PMTs) by wavelength shifting (WLS) fibres [5]. The read-out cell geometry is defined by grouping the fibres from individual tiles on the corresponding PMT. A typical cell is read out on each side (edge) by one PMT, each corresponding to one channel. The dimensions of the cells are \(\Delta \eta \times \Delta \phi = 0.1 \times 0.1\) in the first two radial layers, called layers A and BC (just layer B in the EB), and \(\Delta \eta \times \Delta \phi = 0.2 \times 0.1\) in the third layer, referred to as layer D. The projective layout of cells and naming convention are shown in Fig. 1. The so-called ITC cells (D4, C10 and E-cells) are located between the LB and EB, and provide coverage in the range \(0.8< |\eta | < 1.6\). Some of the C10 and D4 cells have reduced thickness or special geometry in order to accommodate services and read-out electronics for other ATLAS detector systems [3, 6]. The gap (E1–E2) and crack (E3–E4) cells are only composed of scintillator and are exceptionally read out by only one PMT. For Run 1, eight crack scintillators were removed per side, to allow for routing of fibres for 16 Minimum Bias Trigger Scintillators (MBTS), used to trigger on events from colliding particles, as well as to free up the necessary electronics channels for read-out of the MBTS. The MBTS scintillators are also read out by the TileCal EB electronics.
The PMTs and front-end electronics are housed in a steel girder at the outer radius of each module in 1.4 m long aluminium units that can be fully extracted while leaving the remaining module in place, and hence are given the name of electronics drawers. Each drawer holds a maximum of 24 channels, two of which form a super-drawer. There are nominally 45 and 32 active channels per super-drawer in the LB and EB, respectively. Each channel consists of a unit called a PMT block, which contains the light-mixer, PMT tube and voltage divider, and a so-called 3-in-1 card [7, 8]. This card is responsible for fast signal shaping in two gains (with a bi-gain ratio of 1:64), the slow integration of the PMT signal, and provides an input for a charge injection calibration system.
The maximum height of the analogue pulse in a channel is proportional to the amount of energy deposited by the incident particle in the corresponding cell. The shaped signals are sampled and digitised every 25 ns by 10-bit ADCs [9]. The sampled data are temporarily stored in a pipeline memory until a trigger Level-1 signal is received. Seven samples, centred around the pulse peak, are obtained. A gain switch is used to determine which gain information is sent to the back-end electronics for event processing. By default the high-gain signal is used, unless any of the seven samples saturates the ADC, at which point the low-gain signal is transmitted.
Adder boards receive the analogue low-gain signal from the 3-in-1 cards and sum the signal from six 3-in-1 cards within \(\Delta \eta \times \Delta \phi = 0.1 \times 0.1\) before transmitting it to the ATLAS hardware-based trigger system as a trigger tower.
The integrator circuit measures PMT currents (0.01 nA to 1.4 \(\upmu \)A) over a long time window of 10–20 ms with one of the six available gains, and is used for calibration with a radioactive caesium source and to measure the rate of soft interactions during collisions at the LHC [10]. It is a low-pass DC amplifier that receives less than 1% of the PMT current, which is then digitised by a 12-bit ADC card (which saturates at 5 V) [11].
Power is supplied to the front-end electronics of a single super-drawer by means of a low-voltage power supply (LVPS) source, which is positioned in an external steel box mounted just outside the electronics super-drawer. The high voltage is set and distributed to each individual PMT using dedicated boards positioned inside the super-drawers located with the front-end electronics.
The back-end electronics is located in a counting room approximately 100 m away from the ATLAS detector. The data acquisition system of the Tile Calorimeter is split into four partitions, the ATLAS A-side (\(\eta > 0\)) and C-side (\(\eta < 0\)) for both the LB and EB, yielding four logical partitions: LBA, LBC, EBA, and EBC. Optical fibres transmit signals between each super-drawer and the back-end trigger, timing and control (TTC) and read-out driver (ROD [12]) crates. There are a total of four TTC and ROD crates, one for each physical partition. The ATLAS TTC system distributes the LHC clock, trigger decisions, and configuration commands to the front-end electronics. If the TTC system sends the trigger acceptance command to the front-end electronics, the corresponding digital signals for all channels of the calorimeter are sent to the ROD via optical links, where the signal is reconstructed for each channel.
2 Experimental set-up
The data used in this paper were taken by the Tile Calorimeter system using the full ATLAS data acquisition chain. In addition to the TileCal, there are also other ATLAS subsystems used to assist in particle identification, track, momentum, and energy reconstruction. The inner detector is composed of a silicon pixel detector (Pixel), a semiconductor tracker (SCT), and a transition radiation tracker (TRT). Together they provide tracking of charged particles for \(|\eta | < 2.5\), with a design resolution of \(\sigma _{p_\mathrm {T}}/p_{\mathrm {T}} = 0.05\% \cdot p_{\mathrm {T}} \mathrm {(GeV)} \oplus 1\%\) [1]. The electromagnetic lead/liquid-argon barrel (EMB [13]) and endcap (EMEC [14]) calorimeters provide coverage for \(|\eta | < 3.2\). The energy resolution of the liquid-argon (LAr) electromagnetic calorimeter is designed to be \(\sigma _E/E = 10\%/\sqrt{E \mathrm {(GeV)}} \oplus 0.7\%\). The hadronic calorimetry in the central part of the detector (\(|\eta | < 1.7\)) is provided by the TileCal, which is described in detail in Sect. 1. In the endcap region (\(1.5< |\eta | < 3.2\)) hadronic calorimetry is provided by a LAr/copper sampling calorimeter (HEC [15]) behind a LAr/lead electromagnetic calorimeter with accordion geometry, while in the forward region (\(3.2< |\eta | < 4.9\)) the FCal [16] provides electromagnetic (the first module with LAr/copper) and hadronic (the second and third module with LAr/tungsten) calorimetry. The muon spectrometer system, the outermost layer of the ATLAS detector, is composed of monitored drift tubes, and cathode strip chambers for the endcap muon track reconstruction for \(|\eta | < 2.7\). Resistive plate chambers (RPCs) and thin gap chambers (TGCs) are used to trigger muons in the range \(|\eta | < 2.4\). ATLAS has four superconducting magnet systems. In the central region, a 2 T solenoid placed between the inner detector and calorimeters is complemented with 0.5 T barrel toroid magnets located outside of TileCal. Both endcap regions encompass their own toroid magnet placed between TileCal and muon system, producing the field of 1.0 T.
A three-level trigger system [17] was used by ATLAS in Run 1 to reduce the event rate from a maximum raw rate of 40 MHz to 200 Hz, which is written to disk. The Level 1 Trigger (L1) is a hardware-based decision using the energy collected in coarse regions of the calorimeter and hits in the muon spectrometer trigger system. The High Level Trigger (HLT) is composed of the Level 2 Trigger (L2) and the Event Filter (EF). The HLT uses the full detector information in the regions of interest defined by L1. The reconstruction is further refined in going from L2 to the EF, with the EF using the full offline reconstruction algorithms. A trigger chain is defined by the sequence of algorithms used in going from L1 to the EF. Events passing trigger selection criteria are separated into different streams according to the trigger category for which the event is triggered. Physics streams are composed of triggers that are used to identify physics objects (electrons, photons, muons, jets, hadronically-decaying \(\tau \)-leptons, missing transverse momentum) in collision data. There are also calibration streams used by the various subsystems for calibration and monitoring purposes, which take data during empty bunch crossings in collision runs or in dedicated calibration runs. Empty bunch crossings are those with no proton bunch and are separated from any filled bunch by at least five bunch crossings to ensure signals from collision events are cleared from the detector. The calibration and monitoring data are explained in more detail in the next sections.
2.1 ATLAS experimental data
The full ATLAS detector started recording events from cosmic-ray muons in 2008 as a part of the detector commissioning [6, 18]. Cosmic-ray muon data from 2008–2010 are used to validate test beam and in situ calibrations, and to study the full calorimeter in the ATLAS environment; these results are presented in Sect. 6.1.1.
The first \(\sqrt{s} = 7\) TeV proton–proton (pp) collisions were recorded in March 2010, and started a rich physics programme at the LHC. In 2011 the LHC pp collisions continued to be at \(\sqrt{s} = 7\) TeV, but the instantaneous luminosity increased and the bunch spacing decreased to 50 ns. Moving to 2012 the centre-of-mass energy increased to 8 TeV. In total, nearly 30 fb\(^{-1}\) of proton collision data were delivered to ATLAS during Run 1. A summary of the LHC beam conditions is shown in Table 1 for 2010–2012, representing the collision data under study in this paper. In ATLAS, data collected over long periods of time spanning an LHC fill or generally stable conditions are grouped into a “run”, while the entire running period under similar conditions for several years is referred to as a “Run”. Data taken within a run are broken down into elementary units called luminosity blocks, corresponding to up to one minute of collision data for which detector conditions or software calibrations remain approximately constant.
ATLAS also recorded data during these years with lower-energy proton collisions (at \(\sqrt{s}\) = 900 GeV, 2.76 TeV), and data containing lead ion collisions. Nevertheless, this paper focuses on the results obtained in pp collisions at \(\sqrt{s} = 7\) and 8 TeV.
2.2 Monte Carlo simulations
Monte Carlo (MC) simulated data are frequently used by performance and physics groups to predict the behaviour of the detector. It is crucial that the MC simulation closely matches the actual data, so those relying on simulation for algorithm optimisations and/or searches for new physics are not misled in their studies.
The MC process is divided into four steps: event generation, simulation, digitisation, and reconstruction. Various event generators were used in the analyses as described in each subsection. The ATLAS MC simulation [19] relies on the Geant4 toolkit [20] to model the detector and interactions of particles with the detector material. During Run 1, ATLAS used the so-called QGSP_BERT physics model to describe the hadronic interactions with matter, where at high energies the hadron showers are modelled using the Gluon String Plasma model, and the Bertini intra-nuclear cascade model is used for lower-energy hadrons [21]. The input to the digitisation is a collection of hits in the active scintillator material, characterised by the energy, time, and position. The amount of energy deposited in scintillator is divided by the calorimeter sampling fraction to obtain the channel energy [22]. In the digitisation step, the channel energy in GeV is converted into its equivalent charge using the electromagnetic scale constant (Sect. 4) measured in the beam tests. The charge is subsequently translated into the signal amplitude in ADC counts using the corresponding calibration constant (Sect. 4.3). The amplitude is convolved with the pulse shape and digitised each 25 ns as in real data. The electronic noise is emulated and added to the digitised samples as described in Sect. 3.2. Pile-up (i.e. contributions from additional minimum-bias interactions occurring in the same bunch crossing as the hard-scattering collision or in nearby ones), are simulated with Pythia 6 [23] in 2010–2011 and Pythia 8 [24] in 2012, and mixed at realistic rates with the hard-scattering process of interest during the digitisation step. Finally, the same reconstruction methods, detailed in Sect. 3, as used for the data are applied to the digitised samples of the simulations.
3 Signal reconstruction
The electrical signal for each TileCal channel is reconstructed from seven consecutive digital samples, taken every 25 ns. Nominally, the reconstruction of the signal pulse amplitude, time, and pedestal is made using the Optimal Filtering (OF) technique [25]. This technique weights the samples in accordance with a reference pulse shape. The reference pulse shape used for all channels is taken as the average pulse shape from test beam data, with reference pulses for both high- and low-gain modes, each of which is shown in Fig. 2. The signal amplitude (A), time phase (\(\tau \)), and pedestal (p) for a channel are calculated using the ADC count of each sample \(S_i\) taken at time \(t_i\):
where the weights (\(a_i\), \(b_i\), and \(c_i\)) are derived to minimise the resolution of the amplitude and time, with a set of weights extracted for both high and low gain. Only electronic noise was considered in the minimisation procedure in Run 1.
The expected time of the pulse peak is calibrated such that for particles originating from collisions at the interaction point the pulse should peak at the central (fourth) sample, synchronous with the LHC 40 MHz clock. The reconstructed value of \(\tau \) represents the small time phase in ns between the expected pulse peak and the time of the actual reconstructed signal peak, arising from fluctuations in particle travel time and uncertainties in the electronics read-out.
Two modes of OF reconstruction were used during Run 1, an iterative and a non-iterative implementation. In the iterative method, the pulse shape is recursively fit when the difference between maximum and minimum sample is above a noise threshold. The initial time phase is taken as the time of the maximum sample, and subsequent steps use the previous time phase as the starting input for the fit. Only one iteration is performed assuming a pulse with the peak in the central sample for signals below a certain threshold. For events with no out-of-time pile-up (see Sect. 3.3) this iterative method proves successful in reconstructing the pulse peak time to within 0.5 ns. This method is used when reconstructing events occurring asynchronously with the LHC clock, such as cosmic-ray muon data and also to reconstruct data from the 2010 proton collisions. With an increasing number of minimum-bias events per bunch crossing, the non-iterative method, which is more robust against pile-up, is used. The time phase was fixed for each individual channel and only a single fit to the samples was applied in 2011–2012 data.
In real time, or online, the digital signal processor (DSP) in the ROD performs the signal reconstruction using the OF technique, and provides channel energy and time to the HLT. The conversion between signal amplitude in ADC counts and energy units of MeV is done by applying channel-dependent calibration constants which are described in the next section. The DSP reconstruction is limited by the use of fixed point arithmetic, which has a precision of 0.0625 ADC counts (approximately 0.75 MeV in high gain), and imposes precision limitations for the channel-dependent calibration constants.
The offline signal is reconstructed using the same iterative or non-iterative OF technique as online. In 2010 the raw data were transmitted from the ROD for offline signal reconstruction, and the amplitude and time computations from the ROD were used only for the HLT decision. From 2011 onward, with increasing instantaneous luminosity the output bandwidth of the ROD becomes saturated, and only channels for which the difference between the maximum and minimum \(S_i\) is larger than five ADC counts (approximately 60 MeV) have the raw data transmitted from the ROD for the offline signal reconstruction; otherwise the ROD signal reconstruction results are used for the offline data processing.
The reconstructed phase \(\tau \) is expected to be small, but for any non-zero values of the phase, there is a known bias when the non-iterative pulse reconstruction is used that causes the reconstructed amplitude to be underestimated. A correction based on the phase is applied when the phase is reconstructed within half the LHC bunch spacing and the channel amplitude is larger than 15 ADC counts, to reduce contributions from noise. Figure 3 shows the difference between the non-iterative energy reconstructed in the DSP without (circles) and with (squares) this parabolic correction, relative to the iterative reconstruction calculated offline for data taken during 2011. Within time phases of \(\pm \,10\) ns the difference between the iterative and non-iterative approaches with the parabolic correction applied is less than 1%.
The difference between the energies reconstructed using the non-iterative (with the parabolic correction applied) and iterative OF technique as a function of energy can be seen in Fig. 4 for high \(p_{\text {T}} \) (\(> 20\) GeV) isolated muons taken from the 2010 \(\sqrt{s}=7\) TeV collision data. For channel energies between 200 and 400 MeV the mean difference between the two methods is smaller than 10 MeV. For channel energies larger than 600 MeV, the mean reconstructed energy is the same for the two methods.
3.1 Channel time calibration and corrections
Correct channel time is essential for energy reconstruction, object selection, and for time-of-flight analyses searching for hypothetical long-lived particles entering the calorimeter. Initial channel time calibrations are performed with laser and cosmic-ray muon events, and are later refined using beam-splash events from a single LHC beam [6]. A laser calibration system pulses laser light directly into each PMT. The system is used to calibrate the time of all channels in one super-drawer such that the laser signal is sampled simultaneously. These time calibrations are used to account for time delays due to the physical location of the electronics. Finally, the time calibration is set with collision data, considering in each event only channels that belong to a reconstructed jet. This approach mitigates the bias from pile-up noise (Sect. 3.3) and non-collision background. Since the reconstructed time slightly depends on the energy deposited by the jet in a cell (Fig. 5 left), the channel energy is further required to be in a certain range (2–4 GeV) for the time calibration. An example of the reconstructed time spectrum in a channel satisfying these conditions is shown in Fig. 5(right). The distribution shows a clear Gaussian core (the Gaussian mean determines the time calibration constant) with a small fraction of events at both high- and low-time tails. The higher-time tails are more evident for low-energy bins and are mostly due to the slow hadronic component of the shower development. Symmetric tails are due to out-of-time pile-up (see Sect. 3.3) and are not seen in 2010 data where pile-up is negligible. The overall time resolution is evaluated with jets and muons from collision data, and is described in Sect. 6.3.
During Run 1 a problem was identified in which a digitiser could suddenly lose its time calibration settings. This problem, referred to as a “timing jump”, was later traced to the TTCRx chip in the digitiser board, which received clock configuration commands responsible for aligning that digitiser sampling clock with the LHC clock. During operation these settings are sent to all digitisers during configuration of the super-drawers, so a timing jump manifests itself at the beginning of a run or after a hardware failure requiring reconfiguration during a run. All attempts to avoid this feature at the hardware or configuration level failed, hence the detection and correction of faulty time settings became an important issue. Less than 15% of all digitisers were affected by these timing jumps, and were randomly distributed throughout the TileCal. All channels belonging to a given digitiser exhibit the same jump, and the magnitude of the shift for one digitiser is the same for every jump.
Laser and collision events are used to detect and correct for the timing jumps. Laser events are recorded in parallel to physics data in empty bunch crossings. The reconstructed laser times are studied for each channel as a function of luminosity block. As the reconstructed time phase is expected to be close to zero the monitoring algorithm searches for differences (\(> 3\) ns) from this baseline. Identified cases are classified as potential timing jumps, and are automatically reported to a team of experts for manual inspection. The timing differences are saved in the database and applied as a correction in the offline data reconstruction.
Reconstructed jets from collision data are used as a secondary tool to verify timing jumps, but require completion of the full data reconstruction chain and constitute a smaller sample as a function of luminosity block. These jets are used to verify any timing jumps detected by the laser analysis, or used by default in cases where the laser is not operational. For the latter, problematic channels are identified after the full reconstruction, but are corrected in data reprocessing campaigns.
A typical case of a timing jump is shown in Fig. 6 before (left) and after (right) the time correction. Before the correction the time step is clearly visible and demonstrates good agreement between the times measured by the laser and physics collision data.
The overall impact of the timing jump corrections on the reconstructed time is studied with jets using 1.3 fb\(^{-1}\) of collision data taken in 2012. To reduce the impact of the time dependence on the reconstructed energy, the channel energy is required to be \(E > 4\) GeV, and read out in high-gain mode. The results are shown in Fig. 7, where the reconstructed time is shown for all calorimeter channels with and without the timing jump correction. While the Gaussian core, corresponding to channels not affected by timing jumps, remains basically unchanged, the timing jump correction significantly reduces the number of events in the tails. The 95% quantile range around the peak position shrinks by 12% (from 3.3 ns to 2.9 ns) and the overall RMS improves by 9% (from 0.90 ns to 0.82 ns) after the corrections are applied. In preparation for Run 2, problematic digitisers were replaced and repaired. The new power supplies, discussed in the next section, also contribute to the significant reduction in the number of the timing jumps since the trips almost ceased (Sect. 5.4) and thus the module reconfigurations during the run are eliminated in Run 2.
3.2 Electronic noise
The total noise per cell is calculated taking into account two components, electronic noise and a contribution from pile-up interactions (so-called pile-up noise). These two contributions are added in quadrature to estimate the total noise. Since the cell noise is directly used as input to the topological clustering algorithm [28] (see Sect. 6), it is very important to estimate the noise level per cell with good precision.
The electronic noise in the TileCal, measured by fluctuations of the pedestal, is largely independent of external LHC beam conditions. Electronic noise is studied using large samples of high- and low-gain pedestal calibration data, which are taken in dedicated runs without beam in the ATLAS detector. Noise reconstruction of pedestal data mirrors that of the data-taking period, using the OF technique with iterations for 2010 data and the non-iterative version from 2011 onward.
The electronic noise per channel is calculated as a standard deviation (RMS) of the energy distributions in pedestal events. The fluctuation of the digital noise as a function of time is studied with the complete 2011 dataset. It fluctuates by an average of 1.2% for high gain and 1.8% for low gain across all channels, indicating stable electronic noise constants.
As already mentioned in Sect. 1.1, a typical cell is read out by two channels. Therefore, the cell noise constants are derived for the four combinations of the two possible gains from the two input channels (high–high, high–low, low–high, and low–low). Figure 8 shows the mean cell noise (RMS) for all cells as a function of \(\eta \) for the high–high gain combinations. The figure also shows the variations with cell type, reflecting the variation with the cell size. The average cell noise is approximately 23.5 MeV. However, cells located in the highest \(|\eta |\) ranges show noise values closer to 40 MeV. These cells are formed by channels physically located near the LVPS. The influence of the LVPS on the noise distribution is discussed below. A typical electronic noise values for other combinations of gains are 400–700 MeV for high–low/low–high gain combinations and 600–1200 MeV for low–low gain case. Cells using two channels with high gain are relevant when the deposited energy in the cell is below about 15 GeV, above that both channels are often in low-gain mode, and if they fall somewhere in the middle range of energies (10–20 GeV) one channel is usually in high gain and the other in low gain.
During Run 1 the electronic noise of a cell is best described by a double Gaussian function, with a narrow central single Gaussian core and a second central wider Gaussian function to describe the tails [6]. A normalised double Gaussian template with three parameters (\(\sigma _1\), \(\sigma _2\), and the relative normalisation of the two Gaussian functions R) is used to fit the energy distribution:
The means of the two Gaussian functions are set to \(\mu _1 = \mu _2 = 0\), which is a good approximation for the cell noise. As input to the topological clustering algorithm an equivalent \(\sigma _{\mathrm {eq}}(E)\) is introduced to measure the significance (\(S = |E| /\sigma _{\mathrm {eq}}(E)\)) of the double Gaussian probability distribution function in units of standard deviations of a normal distribution.Footnote 3
The double Gaussian behaviour of the electronic noise is believed to originate from the LVPS used during Run 1, as the electronic noise in test beam data followed a single Gaussian distribution, and this configuration used temporary power supplies located far from the detector. During December 2010, five original LVPS sources were replaced by new versions of the LVPS. During operation in 2011 these LVPSs proved to be more reliable by suffering virtually no trips, and resulted in lower and more single-Gaussian-like behaviour of channel electronic noise. With this success, 40 more new LVPS sources (corresponding to 16% of all LVPSs) were installed during the 2011–2012 LHC winter shutdown. Figure 9 shows the ratio of the RMS to the width of a single Gaussian fit to the electronic noise distribution for all channels averaged over the 40 modules before and after the replacement of the LVPS. It can be seen that the new LVPS have values of RMS\(/\sigma \) closer to unity, implying a shape similar to a single Gaussian function, across all channels. The average cell noise in the high–high gain case decreases to 20.6 MeV with the new LVPS.
The coherent component of the electronic noise was also investigated. A considerable level of correlation was only found among channels belonging to the same motherboard,Footnote 4 for other pairs of channels the correlations are negligible. Methods to mitigate the coherent noise were developed;Footnote 5 they reduce the correlations from (\(-\,40\%\), \(+\,70\%\)) to (\(-\,20\%\), \(+\,10\%\)) and also decrease the fraction of events in the tails of the double Gaussian noise distribution.
Electronic noise in the Monte Carlo simulations
The emulation of the electronic noise, specific to each individual calorimeter cell, is implemented in the digitisation of the Monte Carlo signals. It is assumed that it is possible to convert the measured cell noise to an ADC noise in the digitisation step, as the noise is added to the individual samples in the MC simulation. The correlations between the two channels in the cell are not considered. As a consequence, the constants of the double Gaussian function, used to generate the electronic noise in the MC simulation, are derived from the cell-level constants used in the real data. As a closure test, after reconstruction of the cell energies in the MC simulation the cell noise constants are calculated using the same procedure as for real data. The reconstructed cell noise in the MC reconstruction is found to be in agreement with the original cell noise used as input from the real data. Good agreement between data and MC simulation of the energy of the TileCal cells, also for the low and negative amplitudes, is found (see Fig. 10). The measurement is performed using 2010 data where the pile-up contribution is negligible. The noise contribution can be compared with data collected using a random trigger.
3.3 Pile-up noise
The pile-up effects consist of two contributions, in-time pile-up and out-of-time pile-up. The in-time pile-up originates from multiple interactions in the same bunch crossing. In contrast, the out-of-time pile-up comes from minimum-bias events from previous or subsequent bunch crossings. The out-of-time pile-up is present if the width of the electrical pulse (Fig. 2) is longer than the bunch spacing, which is the case in Run 1 where the bunch spacing in runs used for physics analyses is 50 ns. These results are discussed in the following paragraphs.
The pile-up in the TileCal is studied as a function of the detector geometry and the mean number of inelastic pp interactions per bunch crossing \(\left<\mu \right>\) (averaged over all bunch crossings within a luminosity block and depending on the actual instantaneous luminosity and number of colliding bunches). The data are selected using a zero-bias trigger. This trigger unconditionally accepts events from collisions occurring a fixed number of LHC bunch crossings after a high-energy electron or photon is accepted by the L1 trigger, whose rate scales linearly with luminosity. This triggering provides a data sample which is not biased by any residual signal in the calorimeter system. Minimum-bias MC samples for pile-up noise studies were generated using Pythia 8 and Pythia 6 for 2012 and 2011 simulations, respectively. The noise described in this section contains contributions from both electronic noise and pile-up, and is computed as the standard deviation (RMS) of the energy deposited in a given cell.
The total noise (electronic noise and contribution from pile-up) in different radial layers as a function of \(|\eta |\) for a medium pile-up run (average number of interactions per bunch crossing over the whole run \(\left<\mu _{\mathrm {run}}\right>=15.7\)) taken in 2012 is shown in Fig. 11. The plots make use of the \(\eta \) symmetry of the detector and use cells from both \(\eta \) sides in the calculation. In the EB standard cells (all except E-cells), where the electronic noise is almost flat (see Fig. 8), the amount of upstream material as a function of \(|\eta |\) increases [1], causing the contribution of pile-up to the total noise to visibly decrease. The special cells (E1–E4), representing the gap and crack scintillators, experience the highest particle flux, and have the highest amount of pile-up noise, with cell E4 (\(|\eta | = 1.55\)) exhibiting about 380 MeV of noise at \(\left<\mu _{\mathrm {run}}\right>=15.7\) (of which about 5 MeV is attributed to electronic noise). In general, the trends seen in the data for all layers as a function of \(|\eta |\) are reproduced by the MC simulation. The total noise observed in data exceeds that in the simulation, the differences are up to 20%.
The energy spectrum in the cell A12 is shown in Fig. 12(left) for two different pile-up conditions with \(\left<\mu \right>=20\) and \(\left<\mu \right>=30\). The mean energy reconstructed in TileCal cells is centred around zero in minimum-bias events. Increasing pile-up widens the energy distribution both in data and MC simulation. Reasonable agreement between data and simulation is found above approximately 200 MeV. However, below this energy, the simulated energy distribution is narrower than in data. This results in lower total noise in simulation compared with that in experimental data as already shown in Fig. 11. Figure 12(right) displays the average noise for all cells in the A-layer as a function of \(\left<\mu \right>\). Since this layer is the closest to the beam pipe among LB and EB layers, it exhibits the largest increase in noise with increasing \(\left<\mu \right>\). When extrapolating \(\left<\mu \right>\) to zero, the noise values are consistent with the electronic noise.
4 Calibration systems
Three calibration systems are used to maintain a time-independent electromagnetic (EM) energy scaleFootnote 6 in the TileCal, and account for changes in the hardware and electronics due to irradiation, ageing, and faults. The caesium (Cs) system calibrates the scintillator cells and PMTs but not the front-end electronics used for collision data. The laser calibration system monitors both the PMT and the same front-end electronics used for physics. Finally, the charge injection system (CIS) calibrates and monitors the front-end electronics. Figure 13 shows a flow diagram that summarises the components of the read-out tested by the different calibration systems. These three complementary calibration systems also aid in identifying the source of problematic channels. Problems originating strictly in the read-out electronics are seen by both laser and CIS, while problems related solely to the PMT are not detected by the charge injection system.
The signal amplitude A is reconstructed in units of ADC counts using the OF algorithm defined in Eq. (1). The conversion to channel energy, \(E_{\mathrm {channel}}\), is performed with the following formula:
where each \(C_i\) represents a calibration constant or correction factor, which are described in the following paragraphs.
The overall EM scale \(C_{\mathrm {TB}}\) was determined in dedicated beam tests with electrons incident on 11% of the production modules [6, 27]. It amounts to \(1.050\,\pm \,0.003\) pC/GeV with an RMS spread of \((2.4\,\pm \,0.1)\)% in layer A, with additional corrections applied to the other layers as described in Sect. 4.1. The remaining calibration constants in Eq. (2) are used to correct for both inherent differences and time-varying optical and electrical read-out differences between individual channels. They are calculated using three dedicated calibration systems (caesium, laser, charge injection) that are described in more detail in the following subsections. Each calibration system determines their respective constants to a precision better than 1%.
4.1 Caesium calibration
The TileCal exploits a radioactive \(^{137}\)Cs source to maintain the global EM scale and to monitor the optical and electrical response of each PMT in the ATLAS environment [30]. A hydraulic system moves this Cs source through the calorimeter using a network of stainless steel tubes inserted into small holes in each tile scintillator.Footnote 7 The beta decay of the \(^{137}\)Cs source produces 0.665 MeV photons at a rate of \(\sim 10^6\) Hz, generating scintillation light in each tile.Footnote 8 In order to collect a sufficient signal, the electrical read-out of the Cs calibration is performed using the integrator read-out path; therefore the response is a measure of the integrated current in a PMT. As is described in Sect. 4.3, dedicated calibration runs of the integrator system show that the stability of individual channels was better than 0.05% throughout Run 1.
In June 2009 the high voltage (HV) of each PMT was modified so that the Cs source response in the same PMTs was equal to that observed in the test beam. Corrections are applied to account for differences between these two environments, namely the activity of the different sources and half-life of \(^{137}\)Cs.
Three Cs sources are used to calibrate the three physical TileCal partitions in the ATLAS detector, one in the LB and one in each EB. A fourth source was used for beam tests and another is used in a surface research laboratory at CERN. The response to each of the five sources was measured in April 2009 [6] and again in March 2013 at the end of Run 1 using a test module for both the LB and EB. The relative response to each source measured on these two dates agrees to within 0.2% and confirms the expected \(^{137}\)Cs activity during Run 1.
A full Cs calibration scan through all tiles takes approximately six hours and was performed roughly once per month during Run 1. The precision of the Cs calibration in one typical cell is approximately 0.3%. For cells on the extreme sides of a partition the precision is 0.5% due to larger uncertainties associated with the source position. Similarly, the precision for the narrow C10 and D4 ITC cells is 3% and \(\sim \)1%, respectively, due to the absence of an iron end-plate between the tile and Cs pipe. It makes more challenging the distinction between the desired response when the Cs source is inside that particular tile of interest versus a signal detected when the source moves towards a neighbouring tile row.
The Cs response as a function of time is shown in Fig. 14(left) averaged over all cells of a given radial layer. The solid line, enveloped by an uncertainty band, represents the expected response due to the reduced activity of the three Cs sources in the ATLAS detector (\(-2.3\%\)/year). The error bars on each point represent the RMS spread of the response in all cells within a layer. There is a clear deviation from this expectation line, with the relative difference between the measured and expected values shown in Fig. 14(right). The average up-drift of the response relative to the expectation was about 0.8%/year in 2009–2010. From 2010 when the LHC began operation, the upward and downward trends are correlated with beam conditions–the downward trends correspond to the presence of colliding beams, while the upward trends are evident in the absence of collisions. This effect is pronounced in the innermost layer A, while for layer D there is negligible change in response. This effect is even more evident when looking at pseudorapidity-dependent responses in individual layers. While in most LB-A cells a deviation of approximately 2.0% is seen (March 2012 to December 2012), in EB-A cells the deviation ranges from 3.5% (cell A13) to 0% (outermost cell A16). These results indicate the total effect, as seen by the Cs system, is due to the scintillator irradiation and PMT gain changes (see Sect. 4.5 for more details).
The Cs calibration constants are derived using Cs calibration data taken with the full ATLAS magnetic field system on, as in the nominal physics configuration. The magnetic field effectively increases the light yield in scintillators approximately by 0.7% in the LB and 0.3% in the EB.
Since the response to the Cs source varies across the surface of each tile, additional layer-dependent weights are applied to maintain the EM scale across the entire calorimeter [27]. These weights reflect the different radial tile sizes in individual layers and the fact that the Cs source passes through tiles at their outer edge.
The total systematic uncertainty in applying the EM scale from the test beam environment to ATLAS was found to be 0.7%, with the largest contributions from variations in the response to the Cs sources in the presence of a magnetic field (0.5%) and the layer weights (0.3%) [27].
4.2 Laser calibration
A laser calibration system is used to monitor and correct for PMT response variations between Cs scans and to monitor channel timing during periods of collision data-taking [31, 32].
This laser calibration system consists of a single laser source, located off detector, able to produce short light pulses that are simultaneously distributed by optical fibres to all 9852 PMTs. The intrinsic stability of the laser light was found to be 2%, so to measure the PMT gain variations to a precision of better than 0.5% using the laser source, the response of the PMTs is normalised to the signal measured by a dedicated photodiode. The stability of this photodiode is monitored by an \(\alpha \)-source and, throughout 2012, its stability was shown to be 0.1%, and the linearity of the associated electronics response within 0.2%.
The calibration constants, \(C_{\mathrm {laser}}\) in Eq. (2), are calculated for each channel relative to a reference run taken just after a Cs scan, after new Cs calibration constants are extracted and applied. Laser calibration runs are taken for both gains approximately twice per week.
For the E3 and E4 cells, where the Cs calibration is not possible, the reference run is taken as the first laser run before data-taking of the respective year. A sample of the mean gain variation in the PMTs for each cell type averaged over \(\phi \) between 19 March 2012 (before the start of collisions) and 21 April 2012 is shown in Fig. 15. The observed down-drift of approximately 1% mostly affects cells at the inner radius with higher current draws.
The laser calibration constants were not used during 2010. For data taken in 2011 and 2012 these constants were calculated and applied for channels with PMT gain variations larger than 1.5% (2%) in the LB (EB) as determined by the low-gain calibration run, with a consistent drift as measured in the equivalent high-gain run. In 2012 up to 5% of the channels were corrected using the laser calibration system. The laser calibration constants for E3 and E4 cells were applied starting in the summer of 2012, and were retroactively applied after the ATLAS data were reprocessed with updated detector conditions. The total statistical and systematic errors of the laser calibration constants are 0.4% for the LB and 0.6% for the EBs, where the EBs experience larger current draws due to higher exposure.
4.3 Charge injection calibration
The charge injection system is used to calculate the constant \(C_{{\mathrm {ADC}\rightarrow \mathrm {pC}},\mathrm {CIS}}\) in Eq. (2) and applied for physics signals and laser calibration data. A part of this system is also used to calibrate the gain conversion constant for the slow integrator read-out.
All 19704 ADC channels in the fast front-end electronics are calibrated by injecting a known charge from the 3-in-1 cards, repeated for a wide range of charge values (approximately 0–800 pC in low-gain and 0–12 pC in high-gain). A linear fit to the mean reconstructed signal (in ADC counts) yields the constant \(C_{{\mathrm {ADC}\rightarrow \mathrm {pC}},\mathrm {CIS}}\). During Run 1 the precision of the system was better than 0.7% for each ADC channel.
Charge injection calibration data are typically taken twice per week in the absence of colliding beams. For channels where the calibration constant varies by more than 1.0% the constant is updated for the energy reconstruction. Figure 16 shows the stability of the charge injection constants as a function of time in 2012 for the high-gain and low-gain ADC channels. Similar stability was seen throughout 2010 and 2011. At the end of Run 1 approximately 1% of all ADC channels were unable to be calibrated using the CIS mostly due to hardware problems evolving in time, so default \(C_{{\mathrm {ADC}\rightarrow \mathrm {pC}},\mathrm {CIS}}\) constants are used in such channels.
The slow integrator read-out is used to measure the PMT current over \(\sim \!\!10\) ms. Dedicated runs are periodically taken to calculate the integrator gain conversion constant for each of the six gain settings, by fitting the linear relationship between the injected current and measured voltage response. The stability of individual channels is better than 0.05%, the average stability is better than 0.01%.
4.4 Minimum-bias currents
Minimum-bias (MB) inelastic proton–proton interactions at the LHC produce signals in all PMTs, which are used to monitor the variations of the calorimeter response over time using the integrator read-out (as used by the Cs calibration system).Footnote 9 The MB rate is proportional to the instantaneous luminosity, and produces signals in all subdetectors, which are uniformly distributed around the interaction point. In the integrator circuit of the Tile Calorimeter this signal is seen as an increased PMT current I calculated from the ADC voltage measurement as:
where the integrator gain constant (Int. gain) is calculated using the CIS calibration, and the pedestal (ped) from physics runs before collisions but with circulating beams (to account for beam background sources such as beam halo and beam–gas interactions). Studies found the integrator has a linear response (non-linearity \(<1\%\)) for instantaneous luminosities between \(1\times 10^{30}\) and \(3\times 10^{34}\) cm\(^{-2}\)s\(^{-1}\).
Due to the distribution of upstream material and the distance of cells from the interaction point the MB signal seen in the TileCal is not expected to be uniform. Figure 17 shows the measured PMT current versus cell \(\eta \) (averaged over all modules) for a fixed instantaneous luminosity. As expected, the largest signal is seen for the A-layer cells which are closer to the interaction point, with cell A13 (\(|\eta | = 1.3\)) located in the EB and (with minimal upstream material) exhibiting the highest currents.
The currents induced in the PMTs due to MB activity are used to validate response changes observed by the Cs calibration system as well as for response monitoring during the physics runs. Moreover, they probe the response in the E3 and E4 cells, which are not calibrated by Cs.
4.5 Combination of calibration methods
The TileCal response is expected to vary over time, with particular sensitivity to changing LHC luminosity conditions. Figure 18 shows the variation of the response to MB, Cs, and laser calibration systems for cell A13 as a function of the time in 2012. Cell A13 is located in the EB, and due to the smaller amount of upstream material, it is exposed to one of the highest radiation doses of all cells as also seen in Fig. 17. To disentangle the effects of PMT and scintillator changes one can study the laser versus MB (or Cs) responses.
The PMT gain, as monitored with the laser, is known to decrease with increasing light exposure due to lower secondary emissions from the dynode surfaces [33].Footnote 10 When a PMT is initially exposed to light after a long period of ‘rest’, its gain decreases rapidly and then a slow stabilisation occurs [34]. This behaviour is demonstrated in Fig. 18 – the data-taking in 2012 started after four months of inactivity, followed by the gain stabilisation after several weeks of LHC operation. The same trends were also observed in 2011. The periods of recovery, where the laser response tends towards initial conditions, coincide with times when LHC is not colliding protons. This is consistent with the known behaviour of ‘fatigued’ PMTs that gradually return towards original operating condition after the exposure is removed [35]. A global PMT gain increase of 0.9% per year is observed even without any exposure (e.g. between 2003 and 2009). This is consistent with Fig. 14(right) – after 3.5 years the total gain increase corresponds to approximately 3.5%. Throughout Run 1 the maximum loss of the PMT gain in A13 is approximately 3%, but at the end of 2012 after periods of inactivity the gain essentially recovered from this loss.
The responses to the Cs and MB systems, which are sensitive to both the PMT gain changes and scintillator irradiation show consistent behaviour. The difference between MB (or Cs) and laser response variations is interpreted as an effect of the scintillators’ irradiation. The transparency of scintillator tiles is reduced after radiation exposure [36]; in the TileCal this is evident in the continued downward response to MB events (and Cs) with increasing integrated luminosity of the collisions, despite the eventual slow recovery of the PMTs as described above. In the absence of the radiation source the annealing process is believed to slowly restore the scintillator material, hence improving the collected light yield. The rate and amount of scintillator damage and recovery are complicated combinations of factors, such as particle energies, temperatures, exposure rates and duration, and are difficult to quantify.
The overlap between the different calibration systems allows calibration and monitoring of the complete hardware and read-out chain of the TileCal, and correct for response changes with fine granularity for effects such as changing luminosity conditions. These methods enable the identification of sources of response variations, and during data-taking, the correction of these variations to maintain the global EM scale throughout Run 1. When possible, problematic components are repaired or replaced during maintenance periods.
5 Data quality analysis and operation
A suite of tools is available to continuously monitor detector hardware and data acquisition systems during their operation. The work-flow is optimised to address problems that arise in real time (online) and afterwards (offline). For cases of irreparable problems, data quality flags are assigned to fractions of the affected data, indicating whether those data are usable for physics analyses with care (depending on the analysis) or must be discarded entirely.
5.1 ATLAS detector control system
An ATLAS-wide Detector Control System (DCS) [37, 38] provides a common framework to continuously monitor, control, and archive the status of all hardware and infrastructure components for each subsystem. The status and availability of each hardware component is visually displayed in real time on a web interface. This web interface also provides a detailed history of conditions over time to enable tracking of the stability. The DCS infrastructure stores information about individual device properties in databases.
The TileCal DCS is responsible for tracking the low voltage, high voltage, front-end electronics cooling systems, and back-end crates. The DCS monitoring data are used by automatic scripts to generate alarms if the actual values are outside the expected operating conditions. Actions to address alarm states can be taken manually by experts, or subject to certain criteria the DCS system can automatically execute actions.
The TileCal DCS system monitors the temperature of the front-end electronics with seven probes at various locations in the super-drawer. A temperature variation of \(1\,^{\circ }\)C would induce a PMT gain variation of 0.2% [6]. Analyses done over several data periods within Run 1 indicated the temperature is maintained within \(0.2\,^{\circ }\)C.
One key parameter monitored by the Tile DCS is the HV applied to each PMT; typical values are 650–700 V. Since the HV changes alter the PMT gain, an update of the calibration constants is required to account for the response change. The relative PMT gain variation \(\Delta G\) between a reference time \(t_\mathrm {r}\) and a time of interest t depends on the HV variation over the same period according to:
where the parameter \(\beta \) is extracted experimentally for each PMT. Its mean value is \(\beta = 7.0\) with an RMS of 0.2 across 97% of the measured PMTs; hence a variation of 1 V corresponds to a gain variation of 1% (for \(\beta = 7\)).
The TileCal high-voltage system is based on remote HV bulk power supplies providing a single high voltage to each super-drawer. Each drawer is equipped with a regulator system (HVopto card) that provides fine adjustment of the voltage for each PMT. One controller (HVmicro card) manages two HVopto cards of the super-drawer. The HVmicro card reports actual HV values to the DCS through a CANbus network every few seconds.
Several studies were performed to quantify the stability of the HV of the PMTs and to identify unstable PMTs. One study compares the value of the measured HV with the expected HV for each PMT over the 2012 period. The difference between the measured and set high voltage (\(\Delta \mathrm {HV}\)) for each PMT is fitted with a Gaussian distribution, and the mean value is plotted for all good channels in a given partition. Good channels are all channels except those in modules that were turned off or in the so-called emergency state (described later). For each partition the mean value is approximately 0 V with an RMS spread of 0.44 V, showing good agreement. Another study investigates the time evolution of \(\Delta \mathrm {HV}\) for a given partition. The variation of the mean values versus time is lower than 0.05 V, demonstrating the stability of the HV system over the full period of the 2012 collision run.
In order to identify PMTs with unstable HV over time, \(\Delta \mathrm {HV}\) is computed every hour over the course of one day for each PMT. Plots showing the daily variation in HV over periods of several months are made. PMTs with \(\Delta \mathrm {HV} > 0.5\) V are classified as unstable. The gain variation for these unstable channels is calculated using Eq. (3) (with knowledge of the \(\beta \) value for that particular PMT), and compared with the gain variation as seen by the laser and Cs calibration systems. These calibration systems are insensitive to electrical failures associated with reading back the measured HV and provide a cross-check of apparent instabilities. Figure 19 shows the gain variation for one PMT that suffered from large instabilities in 2012, as measured by the HV and calibration systems. The gain variations agree between the three methods used. Only those channels that demonstrate instabilities in both the HV and calibration systems are classified as unstable. During 2012, a total of only 15 PMTs (0.15% of the total number of PMTs) were found to be unstable.
5.2 Online data quality assessment and monitoring
During periods of physics collisions, the Tile Calorimeter has experts in the ATLAS control room 24 hours per day and a handful of remote experts available on call to assist in advanced interventions. The primary goal is to quickly identify and possibly correct any problem that cannot be fixed later in software, and that can result in overall data loss. The ATLAS data quality framework is designed to perform automatic checks of the data and to alert experts to potential problems that warrant further investigation [39].
Common problems identified by TileCal experts during the online shifts include hardware failures that do not automatically recover, or software configuration problems that might present themselves as data corruption flags from the ROD data integrity checks. The trigger efficiency and data acquisition, as well as higher-level reconstruction data quality, might be influenced by such problems.
5.3 Offline data quality review
Shortly after the data are taken, a small fraction is quickly reconstructed using the Tier-0 computing farm within the ATLAS Athena software framework [40]. Reconstructed data are then used by the offline data quality experts with more complex tools to evaluate the quality of the data. The experts are given 48 hours to identify, and, where possible, to correct problems, before the bulk reconstruction of the entire run is made. The TileCal offline experts can update the conditions database, where information such as the calibration constants and status of each channel is stored. Channels that suffer from high levels of noise have calibration constants in the database updated accordingly. For channels that suffer from intermittent data corruption problems, data quality flags are assigned to the affected data to exclude the channels in the full reconstruction during that period. This 48-hour period is also used to identify cases of digitiser timing jumps and to add the additional time phases to the time constants of the digitiser affected to account for the magnitude of the time jump.
Luminosity blocks can be flagged as defective to identify periods of time when the TileCal is not operating in its nominal configuration. These defects can either be tolerable whereby corrections are applied but additional caution should be taken while analysing these data, or intolerable in which case the data are not deemed suitable for physics analyses. Defects are entered into the ATLAS Data Quality Defect database [41] with the information propagating to analyses as well as to integrated luminosity calculations.
One luminosity block nominally spans one minute, and removing all data within that time can accumulate to a significant data loss. For rare situations where only a single event is affected by the data corruption, an additional error-state flag is introduced into the reconstruction data. This flag is used to remove such events from the analysis.
Once all offline teams review the run, it is sent to the Tier-0 computing farm for bulk reconstruction, where the entire run is reconstructed using the most up-to-date conditions database. Subsequently the data can be re-reconstructed when reconstruction algorithms are improved and/or the conditions database is further refined to improve the description of the detector.Footnote 11 These data reprocessing campaigns typically occur several months after the data are taken.
5.4 Overall Tile Calorimeter operation
Overall the TileCal operation was highly successful in Run 1, with an extremely high fraction of data acceptable for a physics analysis. A summary of the total integrated luminosity delivered to ATLAS and approved for analysis is shown in Table 2, along with the fraction of data passing the Tile Calorimeter data quality reviews.
In 2012, the total integrated luminosity lost after the first bulk reconstruction of the data due to TileCal data-quality-related problems was \(104\,\mathrm {pb}^{-1}\) out of \(21.7\,\mathrm {fb}^{-1}\), and is summarised in Fig. 20 as a function of time for various categories of intolerable defects.Footnote 12 The primary source of Tile luminosity losses are cases when a read-out link (ROL), which transmits data from the ROD to the subsequent chain in the trigger and data acquisition system, is removed from processing. It implies no data are received from the four corresponding modules. ROLs are disabled in situations when they are flooding the trigger with data (malfunctioning configuration or difficulty processing data), putting the trigger into a busy state where effectively no data can be read from any part of the detector. Removing a ROL during a run is done in a so-called stop-less recovery state, whereby the run is not stopped, as restarting a run can take several minutes. One role of the online experts is to identify these cases and to respond by correcting the source of the removal and re-enabling the ROL in the run. After a new run begins any ROLs that were previously removed are re-included. Improvements for handling ROL removals include adding monitoring plots counting the number of reconstructed Tile cells, where large drops can indicate a ROL removal, and an automatic ROL recovery procedure. With the automatic recovery in place, a single ROL removal lasts less than 30 seconds, and losses due to ROL removal dramatically dropped in the second half of 2012. As the removal of a ROL affects four consecutive modules, this defect is classified as intolerable, and it accounted for 45.2 pb\(^{-1}\) of data loss in 2012.
Power cuts or trips of the HV bulk power supply sources accounted for 22.6 pb\(^{-1}\) of lost integrated luminosity. The last 4.9 pb\(^{-1}\) of loss came from situations when the laser ROD became busy.Footnote 13 During 2012 this was improved by prompting the online expert to disable the laser ROD.
An additional loss of 31.3 pb\(^{-1}\) was due to a 25 ns timing shift in a large fraction of the EBC partition which was not caught by the online or offline experts or tools. Improvements for large timing shifts include data quality monitoring warnings when the reconstructed time for large numbers of Tile channels differs from the expected value by a large amount. These data are subsequently recovered in later data reprocessing campaigns when the timing database constants are updated accordingly.
There are several operational problems with the LVPS sources that contribute to the list of tolerable defects. In some cases the LVPS fails entirely, implying an entire module is not analysed. The failure rate was one LVPS per month in 2011 and 0.5 LVPS per month in 2012. The faulty LVPS sources were replaced with spares during the maintenance campaigns in the ATLAS cavern at the end of each year.
In addition to overall failures, sometimes there are problems with the low voltage supplied to the HVopto card, which means the PMT HV can be neither controlled nor measured. In this case the applied HV is set to the minimum value, putting the module in an emergency state. The calibration and noise constants for all channels within a module in emergency mode are updated to reflect this non-nominal state.
Finally, the LVPS suffered from frequent trips correlated with the luminosity at a rate of 0.6 trips per 1 pb\(^{-1}\). Automatic recovery of these modules was implemented, to recover the lost drawer. During the maintenance period between 2011 and 2012, 40 new LVPS sources (version 7.5) with improved design [42] were installed on the detector. In 2012 there were a total of about 14,000 LVPS trips from all modules, only one of which came from the new LVPS version. After the LHC Run 1, all LVPS sources were replaced with version 7.5.
Figure 21 shows the percentage of the TileCal cells masked in the reconstruction as a function of time. These cells are located in all areas of the detector, with no one area suffering from a large number of failures. The main reasons for masking a cell are failures of LVPS sources, evident by the steep steps in the figure. Other reasons are severe data corruption problems or very large noise. The periods of maintenance, when faulty hardware components are repaired or replaced (when possible), are visible by the reduction of the number of faulty cells to near zero. For situations when cell energy reconstruction is not possible the energy is interpolated from neighbouring cells. The interpolation is linear in energy density (energy per cell volume) and is done independently in each layer, using all possible neighbours of the cell (i.e. up to a maximum of eight). In cases where only one of two channels defining a cell is masked the energy is taken to be twice that of the functioning channel.
6 Performance studies
The response of each calorimeter channel is calibrated to the EM scale using Eq. (2). The sum of the two channel responses associated with the given read-out cell forms the cell energy, which represents a basic unit in the physics object reconstruction procedures. Cells are combined into clusters with the topological clustering algorithm [28] based on the significance of the absolute value of the reconstructed cell energy relative to the noise, \(S = |E|/\sigma \). The noise \(\sigma \) combines the electronic (see Sect. 3.2) and pile-up contributions (Sect. 3.3) in quadrature. Clusters are then used as inputs to jet reconstruction algorithms.
The ATLAS jet performance [43, 44] and measurement of the missing transverse momentum [45] are documented in detail in other papers. The performance studies reported here focus on validating the reconstruction and calibration methods, described in previous sections, using the isolated muons, hadrons and jets entering the Tile Calorimeter.
6.1 Energy response to single isolated muons
Muon energy loss in matter is a well-understood process [46], and can be used to probe the response of the Tile Calorimeter. For high-energy muons, up to muon energies of a few hundred GeV, the dominant energy loss process is ionisation. Under these conditions the muon energy loss per unit distance is approximately constant. This subsection studies the response to isolated muons from cosmic-ray sources and to \(W\rightarrow \mu \nu \) events from pp collisions.
Candidate muons are selected using the muon RPC and TGC triggering subsystems of the Muon Spectrometer. A muon track measured by the Pixel and SCT detectors is extrapolated through the calorimeter volume, taking into account the detector material and magnetic field [47]. A linear interpolation is performed to determine the exact entry and exit points of the muon in every crossed cell to compute the distance traversed by the muon in a given TileCal cell. The distance (\(\Delta x\)) together with the energy deposited in the cell (\(\Delta E\)) are used to compute the muon energy loss per unit distance, \(\Delta E/\Delta x\).
The measured \(\Delta E/\Delta x\) distribution for a cell can be described by a Landau function convolved with a Gaussian distribution, where the Landau part describes the actual energy loss and the Gaussian part accounts for resolution effects. However, the fitted curves show a poor \(\chi ^2\) fit to the data, due to high tails from rare energy loss mechanisms, such as bremsstrahlung or energetic gamma rays. For this reason a truncated mean \(\langle \Delta E/\Delta x \rangle _{\mathrm {t}}\) is used to define the average muon response. For each cell the truncated mean is computed by removing a small fraction (1%) of entries with the highest \(\Delta E/\Delta x\) values. The truncated mean exhibits a slight non-linear scaling with the path length \(\Delta x\). This non-linearity and other residual non-uniformities, such as the differences in momentum and incident angle spectra, are to a large extent reproduced by the MC simulation. To compensate for these effects, a double ratio formed by the ratio of the experimental and simulated truncated means is defined for each calorimeter cell as:
The double ratio R is used to estimate the calorimeter response as a function of various detector geometrical quantities (layer, \(\phi \), \(\eta \), etc). Deviations of the double ratio from unity may indicate poor EM energy scale calibration in the experimental data.
6.1.1 Cosmic-ray muon data
Muons from cosmic-ray showers, called cosmic muons, are used as a cross-check of energy reconstruction and calibration complementary to the collision data. At sea level, cosmic muons can have energies up to a TeV or more, but most of the muons are at lower energies, with the mean energy being approximately 4 GeV [46].
Candidate cosmic muons are triggered during empty bunch crossings in physics runs in a dedicated data stream allocated for muon candidates identified by the muon spectrometer trigger system if at least one track is matched to the inner detector tracking system. In total there are approximately one million such events triggered in each year studied (2008, 2009, 2010).
The energy in TileCal channels is reconstructed using the iterative OF method (see Sect. 3). The muon tracks, reconstructed using Pixel and SCT detectors with a dedicated algorithm, are extrapolated through the volume of the calorimeter in both upward and downward directions. This allows to study the response of the TileCal modules in top and bottom parts of the detector.
The event selection criteria used to select events for the cosmic muons analysis are summarised in Table 3. A candidate cosmic-muon event is required to have exactly one track associated with a reconstructed muon (Cut 1), with at least eight hits in the Pixel plus SCT detectors (Cut 2). A cut on the maximum distance of the reconstructed track from the origin of the coordinate system in both the transverse (\(d_0\)) and longitudinal (\(z_0\)) components (Cut 3) is used to select well-reconstructed tracks that follow the projective geometry of the calorimeter. Muons with a trajectory close to the vertical direction are poorly measured in the TileCal due to the vertical orientation of the scintillating tiles, hence Cut 4 is used to remove the very central cells located within the vertical coverage of the inner detector. The last two requirements (Cut 3 and Cut 4) effectively remove muons at very low pseudorapidities. The muon is required to have momentum in the range 10–30 GeV to minimise the effects of multiple scattering at low momentum, and to reduce radiative energy losses at higher momentum, which could produce large fluctuations in the results. The muon path length through a cell must be larger than 200 mm. An energy of at least 60 MeVFootnote 14 has to be released in that cell to remove contributions from noise. Cut 8 is used to reduce contributions from multiple scattering, such that the track’s azimuthal impact point at the inner (outer) radial point of the cell, \(\phi _{\mathrm {inner}} (\phi _{\mathrm {outer}})\) is within 0.04 radians of the cell centre \(\phi _{\mathrm {c}}\) coordinate (with a cell width of \(\Delta \phi = 0.1\)).
The response to cosmic muons in the calorimeter is also studied using MC simulated data. The cosmic-muon energy and flux spectra as measured at sea-level [48] are used as input into the simulation. The material between the surface and the ATLAS cavern is simulated, including the cavern volumes and detector access shafts. Air showers are not simulated but have negligible impact due to the selection requirements for single-track events. The \(\Delta E/\Delta x\) distributions for the 2008 cosmic-muon data and MC simulation are shown in Fig. 22 for cells A3 (left) and D2 (right) in the long barrel. The A3 (D2) cell covers the region \(0.2< |\eta | < 0.3\) (\(0.3< |\eta | < 0.5\)) and is located in the innermost (outermost) calorimeter layer. Differences between the experimental and simulated data are discussed in the following paragraphs.
Verification of the radial layer intercalibration
The calibration between cells within the same layer is investigated using the double ratio formed by the ratio of the experimental and simulated truncated means, as shown in Eq. (4). The typical non-uniformity of all cells in a given layer is found to be approximately 2% for all layers every year. This can be explained by the variations in the optical and electrical components of the calorimeter.
Several sources of systematic uncertainty, summarised in Table 4, are considered in the studies of cosmic muons. The systematic variations 1–5 are related to the selection criteria. The results are assumed to be stable for different values used in the selection criteria. This assumption is checked by varying the values in the specified range and repeating the analysis for every variation, both for data and MC simulations. The resulting differences contribute to the total systematic uncertainty. Differences in the response along the muon path through the detector and due to signal evaluation method should be well described by MC. Two systematic variations, applied both to data and MC, are introduced to verify this assumption. Variation 6 compares the response in the upper part of the detector (\(\phi _{\mathrm {c}} > 0\)), where these muons enter the detector, and in the lower part (\(\phi _{\mathrm {c}} < 0\)), after the muons pass through a large fraction of the detector. The uncertainty of the method used to evaluate the detector’s response to cosmic muons is considered as source 7. Source 8 reflects the different spread of the experimental and simulated \(\Delta E/ \Delta x\) distributions. The effect on the determination of the truncated mean is estimated to be 0.3% using a toy MC simulation. The final classes of uncertainties, 9 and 10, concern the signal calibration procedures performed in the test beam and in situ in ATLAS (already discussed in Sect. 4). The corresponding variations are only applied to the MC. The parameters of each source of systematic uncertainty are considered as random variables and their values are selected according to the distributions reported in Table 4. In the case of sources 3, 8 and 9 the errors are treated as uncorrelated and a different value is considered for each layer. To evaluate the total systematic uncertainty, 2500 working points are generated in the parameter phase-space and for each of them the analysis is performed and the double ratio calculated. A Gaussian distribution is observed for each layer and the standard deviation, \(\sigma \), is taken as the associated systematic uncertainty. The contribution of statistical errors is negligible.
Table 5 shows the double ratio and its total uncertainty per layer for all three years under study. These results can be used to validate the calibration procedure including all corrections as mentioned in Sect. 4. A method based on Bayes’ theorem is used to establish the uniformity of the layer response in each year [49]. The probability function that the six measured double ratios \(\vec {R}=(R_{\mathrm {LB-A}},\ldots ,R_{\mathrm {EB-D}})\) correspond to layer responses \(\vec {\mu } = (\mu _{\mathrm {LB-A}},\ldots ,\mu _{\mathrm {EB-D}})\) is proportional to the likelihood \(\mathcal {L}(\vec {\mu }|\vec {R})\), as uniform prior probabilities are assumed. Since the distribution of the double ratio is found to be Gaussian in each layer, the likelihood is constructed as six-dimensional Gaussian function
where V is the error matrix obtained from the analyses over 2500 working points described above. For each pair of layers \(l, l^\prime \), the posterior probability \(f(\mu _l,\mu _{l^\prime }|\vec {R})\) is evaluated by integrating Eq. (5) over the remaining layers. It is found that the response of layer D in the long barrel differs from that of layers A and BC by \(4\sigma \) and \(3\sigma \), respectively, for all years (see Sect. 6.4 for more details). The response for all other layer pairs is found to be consistent. The total error in the EM energy scale for all cells in a fixed layer is found to be approximately 2%, including uncertainties of the cosmic muons analysis, uncertainties in the determination of the EM scale at test beams and subsequent application in ATLAS, and the uncertainty in the simulation of the TileCal response to muons.
A maximum-likelihood fit is used to estimate the mean calorimeter response (\(\hat{\mu }_y\)) over all layers for a given year (y), taking into account the uncertainties and correlations. The ratios \(\hat{\mu }_y/\hat{\mu }_{y'}\) for \(y \ne y'\) and \( y, y' \in \{2008, 2009, 2010\}\) are then computed, and are found to be consistent with unity. Within uncertainties the response of the calorimeter layers to cosmic-muon data is found to be stable, confirming the calibration systems are able to follow the variations of the PMT gains and to compensate for the drift of response per year to better than 1% in the long barrel and better than 3% in the extended barrel.
The double ratios listed in Table 5 are approximately 0.97, except for the LB-D layer, with a quoted uncertainty of the order of 1.5%. Nevertheless, the differences from unity are well within the TileCal EM scale uncertainty of 4% measured in studies of isolated particles and in the beam tests [6]. Detailed discussion and the comparison with the results of the isolated collision muons’ analysis (next section) are presented in Sect. 6.4.
6.1.2 Isolated collision muons
The calorimeter performance is also assessed with isolated muons from \(W\rightarrow \mu \nu \) processes originating in proton–proton collisions, complementary to the cosmic-muon studies presented in previous subsection. Data from proton–proton collisions in 2010–2012 are analysed. Events were collected using a L1 muon trigger which accepts events with sizeable muon \(p_{\mathrm {T}}\) originating from the interaction point. A total of approximately one billion events are selected for these three years. The event selection is further refined using the criteria listed in Table 6. Cuts 1–3 are used to select \(W\rightarrow \mu \nu \) events and to suppress background from multi-jet processes. The transverse mass (\(m_{\mathrm {T}}\)), Cut 2, is defined as follows:
where \(\mathbf p _{\mathrm {T}}^\mu \) is the vector of the muon’s transverse momentum and \(\mathbf p _{\mathrm {T}}^{\mathrm {miss}}\) stands for the vector of the missing transverse momentum. The scalar variables denote the corresponding vector magnitude, \(p_{\mathrm {T}}^\mu \equiv |\mathbf p _{\mathrm {T}}^\mu |\) and \(E_{\mathrm {T}}^{\mathrm {miss}} \equiv |\mathbf p _{\mathrm {T}}^{\mathrm {miss}}|\).
An explicit cut on missing transverse momentum is made (Cut 3) by requiring \(E_{\mathrm {T}}^{\mathrm {miss}} > 25\) GeV in order to further reduce background from jet production. Similar to the cosmic muons analysis, a cut on the polar angle relative to the vertical axis is applied (Cut 4) and only muons in a low momentum range [20 GeV, 80 GeV] are selected (Cut 5). The contribution from nearby particles is suppressed by requiring the selected tracks to be well isolated within a cone of size \(\Delta R = \sqrt{(\Delta \phi )^2 + (\Delta \eta )^2} = 0.4\) in the tracking detector (Cut 6) and the response in the upstream liquid argon (LAr) calorimeter must be compatible with a minimum-ionising particle (Cut 7). The muon path length through a cell is required to be larger than 100 mm (Cut 8), and the cell energy has to be greater than 60 MeV to remove residual noise contributions (Cut 9).
The same selection criteria are applied to MC simulated data. The \(W\rightarrow \mu \nu \) events were generated using the leading-order generators Pythia 6 [23] in 2010, and Sherpa [50] in 2011 and 2012. The full ATLAS digitisation and reconstruction is performed on the simulated MC data. Unfortunately, data and MC events in 2010 were processed with different reconstruction algorithmsFootnote 15 that in the end biases the data/MC ratio. Therefore, only the results from 2011 and 2012 are reported here.
Cell response uniformity
The double ratios given in Eq. (4) by ratios of the truncated means of the data and MC \(\Delta E/\Delta x\) distributions are used to quantify the cell response uniformity in \(\phi \). The systematic uncertainty associated with the non-uniformity in the response for cells of the same type in the considered \(\phi \) slice is quantified using a maximum-likelihood method. The likelihood function with mean response \(\mu \) and non-uniformity s is defined as follows:
where the product runs over 64 modules in \(\phi \) for each cell c of the same type. Here \(R_c\) is the double ratio from Eq. (4) and \(\sigma _c\) the statistical uncertainty for the cell under consideration. The maximum is effectively found by minimising the unbinned log-likelihood \(-2 \log {\mathcal {L}}\), varying the non-uniformity s.
The results of the fits are shown in Fig. 23 for the mean response \(\hat{\mu }\) (top) and non-uniformity in the azimuthal angle \(\hat{s}\) (bottom) in 2012. Cut 4 in Table 6 reduces the number of muons crossing the most central calorimeter cells, and there are too few detected muons to include the cells with \(|\eta | < 0.1\) in the analysis. A similar study is done also for 2011 data. The mean double ratio across all cells is consistent with unity. Moreover, the double ratio is found to be constant across \(\eta \) in each layer. Upper limits on the average non-uniformity in \(\phi \), quantified by the spread in response amongst calorimeter cells of a given cell type, is found to be about 5% in both 2011 and 2012 data.
The amount of energy deposited in a cell depends on the geometrical properties, such as the amount of upstream dead material and cell-specific calibration constants. In general there exists a symmetry between \(\eta > 0\) and \(\eta < 0\). As one goes to increasing radius (layers A\(\rightarrow \)BC\(\rightarrow \)D), the values of the truncated means remain approximately the same. A similar trend is observed for the 2011 data.
Verification of the radial layer intercalibration
The double ratio of the observed and simulated response is calculated for each radial calorimeter layer for each data-taking year considered in the analysis. The systematic uncertainties associated with the event selection and the response evaluation are listed in Table 7. These variations are considered as random variables and their values selected according to uniform probability distributions. In total, 1000 combinations in the parameter phase-space are generated by varying each of the applied cuts. The analysis is repeated for each combination, similarly to the cosmic muons analysis (Sect. 6.1.1). The same method exploiting a six-dimensional Gaussian function is used and the mean response per layer is determined by maximum-likelihood fit for each data-taking year (2011, 2012), taking into account the correlations of the systematic uncertainties between the layers.
The double ratios together with the total uncertainties are reported in Table 8. The results indicate that the radial layers LB-A, LB-BC, EB-A, EB-B and EB-D were well intercalibrated in 2011 and 2012. It was found that the layer LB-D had higher response than the layers LB-A and LB-BC; the difference of \(+3\%\) is further discussed in Sect. 6.4.
Time stability
The double ratio defined in Eq. (4) as the ratio of the responses in experimental and simulated data, averaged over all calorimeter cells of the same type, is calculated for all cell types for each year (2011, 2012). The selection criteria associated with the systematic uncertainties reported in Table 7 are varied and used to generate 1000 working points. For each such point, the analysis is repeated. Similarly to the radial layer intercalibration studies, a model with a two-dimensional (2011, 2012) Gaussian function is applied. The log-likelihood is minimised to fit the mean double ratio response for each year taking into account the correlations between the years, also obtained from the varied analyses. The relative difference of the fitted responses between two years is computed as
for each cell of a given type, to quantify the response change. The average difference across all cells is found to be \(\langle \Delta _{2011\rightarrow 2012} \rangle = (0.6 \pm 0.1) \%\), indicating good stability of the response.Footnote 16 The distribution of \(\Delta _{2011\rightarrow 2012}\) over cell types shows an RMS spread of \(0.96\%\).
6.2 Energy response with hadrons
The calorimeter response can be also tested using single hadrons and jets. Compared to muons, these objects deposit more energy in the hadronic calorimeter and therefore the response to higher energies can be probed. In addition, the MC simulations of objects interacting hadronically are compared with experimental data.
6.2.1 Single hadrons
The energy response of the TileCal is probed in situ by studying the ratio of a charged hadron’s energy (E), as measured by the TileCal, to that of the hadron’s momentum (p), as measured by the ATLAS inner detector system [1]. The energies of hadrons in data and MC events are calibrated to the electromagnetic energy scale. The data-to-MC double ratio given by \(\langle E/p \rangle _{\mathrm {data}}/\langle E/p \rangle _{\mathrm {MC}}\) should be approximately one, with deviations from unity possibly due to poor EM scale calibration in the data or differences in the MC description of the more complex hadron shower development (relative to the muon studies).
The datasets used in this analysis are based on the collision data taken at the LHC during 2010–2012. In 2010, 92 nb\(^{-1}\) of data were collected using the Minimum Bias Trigger Scintillators (MBTS). In 2011 and 2012 the data were triggered using fixed-rate random triggers, corresponding to effective integrated luminosities of 15.5 nb\(^{-1}\) and 129 nb\(^{-1}\), respectively. The MC datasets were generated using Pythia 6 [23] (2010, 2011) and Pythia 8 [24] (2012) to simulate minimum-bias non-diffractive events. The MC events are weighted to reproduce the average number of interactions per bunch crossing, \(\langle \mu \rangle \), as seen in data. The MC events are also reweighted such that the spectra of the number of tracks match that of the data for 8 bins in \(\eta \) and 16 bins in p.
The data and MC events are required to meet the selection criteria listed in Table 9. First, a candidate track is required to have transverse momentum greater than 2 GeV in order to reach the TileCal (Cut 1). The extrapolated tracks must have an absolute pseudorapidity less than 1.7 to be within the TileCal geometrical acceptance (Cut 2). Only tracks matched to non-problematic cells in the TileCal and with a maximum energy deposit not in the gap or crack scintillators are considered (Cut 3). In addition, the track is required to meet isolation criteria, such that the total transverse momentum of all other tracks in a cone of \(\Delta R = 0.4\) in the \(\eta \)–\(\phi \) plane around the particle direction is required to be less than 15% of the candidate track’s transverse momentum (Cut 4). The track must have at least a minimum number of hits in the three inner detector systems (Cut 5), and is required to have an impact point close to the primary vertex (Cut 6). Only one track per event is considered. Next, the energy associated with a track is defined as the sum of the energy deposited in calorimeter cells (LAr, TileCal, or LAr + TileCal) calibrated to the EM scale belonging to topological clusters with a barycentre within a cone of size \(\Delta R = 0.2\) around the projected track direction. The sum of energy deposited in the upstream electromagnetic calorimeter is required to be compatible with that of a minimum-ionising particle, \(E_{\mathrm {LAr}}<1\) GeV (Cut 7).Footnote 17 Finally, the amount of energy deposited in the TileCal must be at least 75% of the total energy of associated calorimeter cells to reject muons (Cut 8). Only events with \(\langle \mu \rangle \) between 3 and 25 are accepted in 2012 analysis to have a reasonable sample size in both data and MC simulation at the low and high edges of the \(\mu \) distribution (Cut 9). Approximately 2.5% of events survive these selections.
Distributions of \(\langle E/p \rangle \)Footnote 18 as a function of \(\eta \), \(\phi \), p and \(\langle \mu \rangle \) are studied in all three years. The results with statistical uncertainties as measured in 2012 are shown in Fig. 24. The agreement between data and MC simulation is overall good in all cases. The value of \(\langle E/p \rangle \) is approximately 0.5, reflecting the non-compensating response of the calorimeter, and very stable as a function of the azimuthal angle \(\phi \). The dependence on the pseudorapidity is well reproduced in simulated data and the maximum disagreement is in the region \(\eta \approx \pm 1\) (crack region) in all three years. The distribution of material in the crack region is not known precisely and therefore it cannot be described accurately in the Monte Carlo simulations. The difference between the data and the MC simulation is reduced, even in this less well-described region, once the jets are calibrated to the jet energy scale using in situ techniques. The ratio \(\langle E/p \rangle \) measured in pp collision data increases from 0.5 to 0.6 for track momenta of about 10 GeV. This rise is not reproduced very well in the MC simulation, the largest difference between data and simulation (16%) is observed at \(p\approx 9\) GeV. The ratio \(\langle E/p \rangle \) is found to be stable versus pile-up.
The systematic uncertainties associated with the event selection procedure, the energy scale in the TileCal, and the MC simulation are considered. The event selection systematic uncertainties are evaluated using variations in the cuts applied in the analysis. The cuts on the number of hits in inner detector (Cut 5), the energy deposition in the LAr calorimeter (Cut 7) and fraction of energy in the TileCal (Cut 8) in Table 9 are changed up/down by an amount corresponding \(1 \sigma \) of the relevant distribution. The variation of the distance of the track from the primary vertex (Cut 6) within \(1 \sigma \) was found to be negligible. No additional systematic uncertainty is assigned to the changing pile-up conditions since no dependence on \(\langle \mu \rangle \) is observed. Other cuts are used to ensure that the hadron reaches the TileCal and therefore are not varied. The mean value is recalculated for all considered variations. The deviations from the nominal value are summed in quadrature for lower and upper limits due to each source of systematic uncertainty. The uncertainty of the EM energy scale (4%) is fully correlated across the momentum, pseudorapidity, azimuth and \(\langle \mu \rangle \), so the data/MC differences observed in a few momentum bins cannot be explained. Other possible sources of systematic uncertainties are associated with the MC simulation, namely with the neutral particle production and modelling of the particle’s passage through matter. The neutral particles (neutrons, \(K^{0}_{\mathrm {L}}\)), if produced close to the measured charged hadron, alter the calorimeter signal. While this effect plays some role in electromagnetic calorimeters, it is found to be negligible in the hadronic calorimeters [51]. Two hadronic interaction models implemented in the Geant4 toolkit were compared, the difference in simulated \(\langle E/p\rangle \) in the hadronic calorimeter was found to be well below 5% [51]. To conclude, the total systematic uncertainties associated with individual points in the \(\langle E/p\rangle \) plots shown in Fig. 24 are highly correlated and are estimated to be of the order of 6 %. They do not cover some of the data/MC discrepancies, which leaves open the possibility of further simulation development.
Double ratios \(\langle E/p \rangle _{\mathrm {data}}/\langle E/p \rangle _{\mathrm {MC}}\) are used to validate the agreement between data and MC simulation. The results for all three years are listed in Table 10. An overall double ratio, averaged over all three years, \(0.986 \pm 0.003 \, \mathrm {(stat)} ^{+0.059} _{-0.018} \, \mathrm {(sys)}\) is measured. The double ratio in 2011, which shows the largest deviation from unity, agrees with this result within \(1.5\sigma \) assuming an uncorrelated systematic uncertainty across different years. The results from 2010–2012 shows the cell energy is well calibrated to the EM scale and also good agreement between experimental data and MC predictions for the single hadrons.
6.2.2 High transverse momentum jets
The performance of ATLAS jet reconstruction is strongly influenced by the quality of energy reconstruction in the TileCal, as this calorimeter reconstructs about 30% of the total jet energy (for jets with energies above 140 GeV at the electromagnetic scale). It is important that MC simulation correctly describe the complicated structure of jets as they propagate through the detector to the TileCal, since MC simulation are often used to optimise reconstruction algorithms and compute initial calibrations. The MC simulation are also heavily used by searches for new physics to quantify the statistical (dis)agreement of predictions with the observed data. This subsection studies how well the longitudinal shower profile of high-\(p_{\text {T}} \) jets is described in the MC simulation by looking at the fraction of energy deposited in each TileCal layer. The analysis uses jets that are clustered using the anti-\(k_{t}\) clustering algorithm with a radius parameter of 0.4 [52]. The inputs of the jet algorithm are the topological clusters. All jets considered here are calibrated to the EM energy scale.
The results are based on the full dataset from pp collisions in 2012. Candidate events are selected such that they contain one isolated high-\(p_{\text {T}} \) photon (\(p_{\text {T}} > 100\) GeV) and one jet (\(p_{\text {T}} > 140\) GeV). Photons are required to meet the tightest ATLAS definition based on shower shape quantities [53]. Jets are selected after passing standard procedures to remove sources of mismeasured jets such as beam backgrounds and detector read-out problems [43]. Jet candidates are removed if they geometrically overlap with a photon within a cone of \(\Delta R = 0.4\) centred around the jet candidate. In addition, jets are removed if they are reconstructed adjacent to masked cells which have energies interpolated from working neighbouring cells. Finally, jets and photons are required to be separated by an azimuthal angle larger than 2 radians to suppress events with additional jets from radiated quarks and gluons.
The experimental data are compared with MC simulation in which a prompt photon is produced in association with a jet at parton level. These events are generated using Pythia 8 with the CTEQ6L1 PDF set with the ATLAS AU2 set of tuned parameters of Pythia 8 [24], a leading-order matrix-element MC generator.
Figure 25 shows the fraction of jet energy in each TileCal layer relative to the total energy reconstructed by the Tile and LAr calorimeters at the EM scale for both the experimental and simulated data. The energy fractions are shown in the different TileCal layers in the long barrel (\(|\eta _{\mathrm {jet}}| < 0.8\)). Similarly, Fig. 26 shows the TileCal energy fractions in the extended barrel region (\(1.0< |\eta _{\mathrm {jet}}| < 1.5\)). Each layer has a different thickness as mentioned in Sect. 1.
Generally the MC simulation describes the shape representing the fraction of energy deposited in each layer as function of jet energy. Good agreement is found in layer A in the long barrel and also in layer BC in the extended barrel. However, some discrepancies are observed in BC layer in the long barrel, where the MC simulation underestimates the amount of energy deposited by approximately 10% uniformly at the EM scale. The opposite feature is observed in layer D, where the MC simulation overestimates the amount of energy deposited in this layer by 20%. The last layer only measures approximately 1% of the total jet energy, thus having a small impact on the total energy. Overall, better agreement is observed in the extended barrel. The energy fraction in the extended barrel is underestimated by the MC simulation in layer A. The opposite is observed in layer D.
In order to study the jet energy measured in the TileCal for large jet \(p_{\text {T}} \) with a larger sample, the photon-plus-jet sample is combined with a sample of fully inclusive high-\(p_{\text {T}} \) jets without the photon requirement. The latter sample is selected using an unprescaled trigger requiring a single jet with \(p_{\text {T}} \) above 350 GeV. Figure 27 shows the jet energy fraction measured by the TileCal for jets at the electromagnetic scale in the range \(p_{\text {T}} = 140\) GeV to 2000 GeV. It can be seen that the energy fraction increases from 30% at \(p_{\text {T}} \) = 140 GeV to 35% at \(p_{\text {T}} \) = 1800 GeV in the barrel, and from 25% to 30% in the extended barrel. The MC simulation describes this trend well. Compared with the MC simulation, the data show a larger fraction of the total jet energy in the barrel region. A drop in the energy fraction for jets with \(p_{\text {T}} \) > 1800 GeV in the barrel indicates leakage of the energy behind the TileCal volume.
The total difference between the data and MC simulation is within the expected uncertainty of 4%, already mentioned in Sect. 6.2.1.
6.3 Timing performance with collision data
As already mentioned in Sect. 3.1, the time calibration is crucial for the signal reconstruction and the ATLAS L1 and HLT trigger decisions. Accurate time measurements of energy depositions in the TileCal are used to distinguish non-collision background sources from hard interactions as well as in searches for long-lived particles.
The performance of the TileCal timing is studied using jets and muons from 2011 pp collision data. The data used in both analyses represent about 2.5% of the full 2011 integrated luminosity, taken with 50 ns bunch crossing spacing.
In both analyses, the E-cells and MBTS cells are also used. Cells with known problems related to issues such as miscalibrations or hardware failures, or known to exhibit timing jumps (Sect. 3.1) are not considered. In total, approximately 2.5% of all cells are removed.
The time resolution of the detector is parametrised as function of the cell energy E according to:
where \(p_0\) reflects the constant term accounting for miscalibrations and detector imperfections, and \(p_1\) and \(p_2\) represent the statistical and noise terms, respectively.
6.3.1 Jet analysis
Jets are built with the topological clustering and anti-\(k_{t}\) algorithms (with radius parameter \(R = 0.4\)). Only jets with \(p_{\text {T}} > 20\) GeV found to originate from the hard collision’s primary vertex, and satisfying basic jet cleaning criteria, are selected. One component of the recommended cleaning criteria is to include only jets with a reconstructed timeFootnote 19 \(|t_{\mathrm {jet}}| <10\) ns, but to avoid any biases this cleaning cut is calculated using only non-TileCal cells associated with the corresponding jet.
Cells selected by the topological clustering algorithm and with energies above 500 MeV are used in the analysis. The cell times are separated into several cell energy bins of approximately 2 GeV wide. Each distribution is fit with a Gaussian function and its width (\(\sigma \)) is considered as the time resolution (see also Sect. 3.1 and Fig. 5, right). The resulting distribution of cell \(\sigma \) versus energy is fit according to Eq. (7), the results of which are discussed in Sect. 6.3.3.
6.3.2 Muon analysis
Muons are reconstructed using an algorithm that performs a global re-fitting of the muon track using the hits from both the inner detector and the muon spectrometer [55]. Selected muons are required to fulfil the kinematic and detector criteria shown in Table 11. As all isolated muons originating from collision events are considered in this analysis, the selection criteria differ slightly from those presented in Sect. 6.1.2 where muons from W boson decays were selected.
Muon tracks are extrapolated in \(\eta \) and \(\phi \) through each calorimeter layer. Muon tracks that crossed just the cell edge are removed by requiring their path length \(\Delta x\) to be at least 30% of the corresponding cell radial size \(r_{\mathrm {cell}}\). Tracks with a time differing from the corresponding mean cell timeFootnote 20 \(\langle t_{\mathrm {cell}}\rangle \) by more than 15 ns are also removed. These cuts appear to be sufficient to remove muons from non-collision origins, including cosmic muons. Moreover, only cells with energy \(\Delta E\) larger than 540 MeV are considered in order to remove contributions from noise.Footnote 21 The two channels contributing to the cell reconstruction are required to have balanced energy deposits, to ensure the time which is computed from the average of the two channels is not biased by one purely noisy channel. The energy balance between the two channels is defined as:
where \(E_1, E_2\) are the energies from each channel reading the same cell. A cut is imposed to keep cells for which \(\alpha < 0.7\).
It was discovered that cells further away from the interaction point exhibit lower values of their mean cell time. This is traced to the residual cell time corrections which are performed using jets from collision data, as hadronic shower development is slower than passing muons. Therefore, tuning of cell times using jet data introduces a small bias towards lower cell times for more distant cells traversed by muons. To remove this bias from the analysis the timing of each cell is corrected by its mean time, resulting in a perfectly timed detector.
The measured time also depends on the muon track position in the cell. In large cells, muons passing near the edge of the cell can have up to \(\pm 1.5\) ns difference relative to those passing through the cell centre. The radial track impact point in the cell also plays a role, as the light signal from muons impacting the upper half of the cell has shorter WLS fibre length to travel to the PMT.
Once the corrections for the mean cell times and the muon track geometry (the track position and radial impact point in the cell) are applied, the cell times are binned as function of energy. A Gaussian distribution is fit to the cell times. The standard deviation of the Gaussian distribution is taken as the time resolution for that energy bin. The time resolution as a function of cell energy is fit to Eq. (7); these results are discussed in the next subsection.
6.3.3 Combined results
The cell time resolutions as a function of cell energy associated with jets and muons are shown in Fig. 28 along with the fit to Eq. (7). The time resolutions are similar, being slightly better for muons at lower energies, because of the slow hadronic component of low-energy jets. The fit for muons suffers from the small sample size at higher energies since the typical muon response per cell is of the order of 1 GeV, depending on the cell size. The time resolution at energies above \(\sim 10\) GeV is thus determined from jets and it approaches the constant term value of 0.4 ns. Similar time resolution was obtained with single high-energy pions in beam tests [27].
Figure 28 shows only cases when the cell is read out in the high–high gain mode. Using jets with cells read-out in the low–low gain, the fit result shows a similar value of the constant term \(p_0\).
6.4 Summary of performance studies
Muons from cosmic-ray data (2008–2010) and \(W\rightarrow \mu \nu \) collision events (2011–2012), single hadrons (2010–2012) and jets (2012) were used to study the performance of the TileCal. The uniformity and time stability of the response, the level of agreement between MC simulation and experimental data, and the timing of the detector were investigated.
The cosmic muons analysis shows that the average non-uniformity of the response in each layer is approximately 2%. The collision muon results exhibit the relative difference \(\langle \Delta _{2011\rightarrow 2012} \rangle = (0.6\,\pm \,0.1)\%\) between the two years, indicating a good time stability of the response. The cosmic-muon results are also stable across the three years. Furthermore, from 2008–2010 the double ratio given in Eq. (4) for the response to cosmic muons was about 0.97, indicating a systematic decrease of the EM energy scale in data by about 3%, except for the LB-D layer. Using the muons from collision events in 2011 and 2012, this ratio was closer to 1.0 for all layers, indicating a small systematic difference between the collision and cosmic-muon results or between the two periods. Nevertheless, this difference is well within the EM scale uncertainty. Both analyses confirmed that all radial layers, except LB-D, are well intercalibrated. The response of the LB-D layer is higher by \(+\,4\%\) (cosmic muons) and \(+\,3\%\) (collision muons), consistent between the two periods. Since the difference is within the expected EM scale uncertainty [6], no correction is applied. Nevertheless, several checks were performed to identify the origin of the difference. The response to cosmic muons was checked separately in the top and bottom parts of the calorimeter (see Sect. 6.1.1) and was found to be well described by MC simulation. The MC geometry and material distribution were also checked, but the detailed simulation of the optical part was not implemented. The optical non-uniformity of tiles is thus accounted for by applying additional layer-dependent weights derived in beam tests with muons passing through the calorimeter parallel to the z-axis [6, 27]. These weights are used within Cs calibration constants (see Sect. 4.1).
The analysis of the E / p of single hadrons shows good uniformity of the response across the azimuthal angle \(\phi \), very good time stability, and robustness against pile-up. Good agreement between experimental data and MC simulation is observed. Good calibration of the cell energy to the EM scale is confirmed in this analysis. The longitudinal shower profiles are studied using high-\(p_{\text {T}} \) jets. Compared with the MC predictions, a larger fraction of the total jet energy is deposited in the second radial layer in the barrel region. However, the total difference is within the TileCal’s expected EM scale uncertainty of 4% as determined from studies of isolated particles and in test beams.
The time resolution of the TileCal is better than 1 ns for energy deposits larger than a few GeV in a single cell.
7 Conclusion
This paper presents a description of the ATLAS Tile Calorimeter signal reconstruction, calibration and monitoring systems, data-quality, and performance during LHC Run 1.
The individual calorimeter calibration systems demonstrated their precision to be better than 1%. The combined calibration guarantees good stability of the calorimeter response in time.
Robust signal reconstruction methods were developed, providing the ability to cope with varying conditions during Run 1, especially the increase in pile-up with time. The energy spectra for minimum-bias events with pile-up conditions in Run 1 shows good agreement between data and MC simulation for cell energies larger than a few hundreds of MeV, which is the region important for physics.
The TileCal also contributed to high-quality ATLAS data-taking with an efficiency higher than 99% during all three years of Run 1. Only 3% of all cells were non-operational at the end of data-taking.
The Tile Calorimeter performance was assessed with isolated muons and hadrons as well as with jets. Cosmic-ray muons data and proton–proton collisions at the LHC at centre-of-mass energies of 7 and 8 TeV with a total integrated luminosity of nearly 30 fb\(^{-1}\) were used in the analyses. The TileCal response was stable and uniform across the layers. The energy scale uncertainty, which was successfully extrapolated from the beam tests to ATLAS, is conservatively considered to be 4%. The MC modelling of the response to single hadrons and jets was checked and found to be within the uncertainty. The TileCal also demonstrated very good time resolution, below 1 ns for cell energy deposits above a few GeV.
Overall, the TileCal performed in accord with expectations during LHC Run 1. Together with other ATLAS subdetectors it contributed to the excellent measurement of jets, \(\tau \)-leptons and missing transverse momentum, which are essential for many physics analyses including the Higgs boson discovery and various searches for new physics phenomena. After the successful completion of Run 1, extensive detector maintenance was performed and several improvements were introduced in order to assure TileCal’s readiness for challenges imposed by Run 2 at the LHC.
Notes
ATLAS uses a right-handed coordinate system with its origin at the nominal interaction point (IP) in the centre of the detector and the z-axis along the beam pipe. The x-axis points from the IP to the centre of the LHC ring, and the y-axis points upward. Cylindrical coordinates \((r,\phi )\) are used in the transverse plane, \(\phi \) being the azimuth angle around the z-axis. The pseudorapidity is defined in terms of the polar angle \(\theta \) as \(\eta =-\ln \tan (\theta /2)\).
Nuclear interaction length is defined as the mean path length to reduce the flux of relativistic primary hadrons to a fraction 1/e.
The \(\sigma _{\mathrm {eq}}(E)\) defines the region where the significance for the double Gaussian \(f_{\mathrm {pdf}}\) is the same as in the \(1\sigma \) region of a standard Gaussian distribution function, i.e. \(1\sigma _{\mathrm {eq}}(E)\) is defined as \(\int _{-\sigma _{\mathrm {eq}}} ^{\sigma _{\mathrm {eq}}} f_{\mathrm {pdf}}\mathrm {d}x = 0.68\), \(2\sigma _{\mathrm {eq}}(E)\) as \(\int _{-2\sigma _{\mathrm {eq}}} ^{2\sigma _{\mathrm {eq}}} f_{\mathrm {pdf}}\mathrm {d}x = 0.954\), etc.
Each motherboard accommodates 12 consecutive channels in a super-drawer. One of its roles is to distribute the low voltages to the electronic components of individual channels [7].
The first method estimated the coherent component of the noise as an average over all channels in the same motherboard with signals less than \(3\times \) the electronic noise variation; this average value was then used to correct the individual channel energies provided at least 60% of channels contributed to the calculation. The second method [29] is based on the \(\chi ^2\) minimisation.
The corresponding calibration constant converts the calorimeter signals, measured as electric charge in pC, to energy deposited by electrons that would produce these signals.
The E3 and E4 cells are not part of this Cs mechanical system, and therefore are not calibrated using the Cs source.
Although the Cs signal can be measured from each single tile [5], the total Cs signal averaged over all tiles associated to the given cell is considered for the Cs constant evaluation.
The usage of the integrators allows for a high rate of minimum-bias events, much higher than could be achieved with the fast read-out.
The decrease in the gain depends on several factors, including temperature, intensity and duration of the light exposure, and previous history of the PMT.
An example is the correction of time constants due to timing jumps discovered only from fully reconstructed physics data, see Sect. 3.1.
Laser events are recorded in parallel with physics data in empty bunch crossings.
The value corresponds approximately to \(3\sigma \) of the typical cell noise distribution.
Data in 2010 were reconstructed with iterative OF method, while in MC simulation the non-iterative approach was applied.
This analysis uses a lower upper bound than in Sect. 6.1.2 in order to suppress early showering particles.
Here E corresponds only to the sum of energy deposited in the TileCal cells calibrated to the EM scale and belonging to topological clusters with a barycentre within a cone of 0.2 around the projected track direction.
The jet time \(|t_{\mathrm {jet}}| \) is calculated as an \(E_{\mathrm {cell}}^2\)-weighted average of cell times, running over all cells associated to the given jet. The cell time is measured with respect to the expected arrival time of particles coming from the interaction point.
The non-zero average cell time is used since the analysis was performed on data prior to the final time calibration. Also, the reconstructed time in muon-induced signals slightly differs from that of hadrons, where it also depends on longitudinal shower development.
This value is slightly higher than in the jet analysis, as the runs selected for the muon analysis had higher pile-up noise.
References
ATLAS Collaboration, The ATLAS Experiment at the CERN Large Hadron Collider. JINST 3, S08003 (2008). https://doi.org/10.1088/1748-0221/3/08/S08003
L. Evans, P. Bryant, LHC Machine, JINST 3, S08001 (2008). https://doi.org/10.1088/1748-0221/3/08/S08001 (ed. by L. Evans)
ATLAS Collaboration, ATLAS tile calorimeter: Technical Design Report (1996). http://cds.cern.ch/record/331062. Accessed 15 Dec1996
Abdallah, J.: Mechanical construction and installation of the ATLAS tile calorimeter. JINST 8, T11001 (2013). https://doi.org/10.1088/1748-0221/8/11/T11001
Abdallah, J.: The optical instrumentation of the ATLAS Tile Calorimeter. JINST 8, P01005 (2013). https://doi.org/10.1088/1748-0221/8/01/P01005
ATLAS Collaboration, Readiness of the ATLAS Tile Calorimeter for LHC collisions, Eur. Phys. J. C 70, 1193 (2010). https://doi.org/10.1140/epjc/s10052-010-1508-y. arXiv:1007.5423 [physics.ins-det]
Anderson, K.: Design of the front-end analog electronics for the ATLAS tile calorimeter. Nucl. Instrum. Methods A 551, 469 (2005). https://doi.org/10.1016/j.nima.2005.06.048
Adragna, P.: A PMT-Block test bench. Nucl. Instrum. Methods A 564, 597 (2006). https://doi.org/10.1016/j.nima.2006.03.045
S. Berglund et al., The ATLAS Tile Calorimeter digitizer. JINST 3 P01004 (2008). http://stacks.iop.org/1748-0221/3/i=01/a=P01004
ATLAS Collaboration, Luminosity determination in pp collisions at \(\sqrt{s} = 8 \text{TeV}\) using the ATLAS detector at the LHC. Eur. Phys. J. C 76, 653 (2016). https://doi.org/10.1140/epjc/s10052-016-4466-1. arXiv: 1608.03953 [hep-ex]
Parra, G.G.: Integrator Based Readout in Tile Calorimeter of the ATLAS Experiment. Phys. Procedia 37, 266 (2012). https://doi.org/10.1016/j.phpro.2012.02.374
Valero, A.: ATLAS TileCal Read Out Driver production. JINST 2, P05003 (2007). https://doi.org/10.1088/1748-0221/2/05/P05003
Aubert, B.: Construction, assembly and tests of the ATLAS electromagnetic barrel calorimeter. Nucl. Instrum. Methods A 558, 388 (2006). https://doi.org/10.1016/j.nima.2005.11.212
Aleksa, M.: Construction, assembly and tests of the ATLAS electromagnetic end-cap calorimeter. JINST 3, P06002 (2008). https://doi.org/10.1088/1748-0221/3/06/P06002
Gingrich, D.M.: Construction, assembly and testing of the ATLAS hadronic end-cap calorimeter. JINST 2, P05005 (2007). https://doi.org/10.1088/1748-0221/2/05/P05005
Artamonov, A.: The ATLAS Forward Calorimeter. JINST 3, P02010 (2008). https://doi.org/10.1088/1748-0221/3/02/P02010
ATLAS Collaboration, Performance of the ATLAS Trigger System in 2010. Eur. Phys. J. C72, 1849 (2012). https://doi.org/10.1140/epjc/s10052-011-1849-1. arXiv:1110.1530 [hep-ex]
ATLAS Collaboration, Studies of the performance of the ATLAS detector using cosmic-ray muons. Eur. Phys. J. C71, 1593 (2011). https://doi.org/10.1140/epjc/s10052-011-1593-6. arXiv:1011.6665 [physics.ins-det]
ATLAS Collaboration, The ATLAS Simulation Infrastructure. Eur. Phys. J. C 70, 823 (2010). https://doi.org/10.1140/epjc/s10052-010-1429-9. arXiv:1005.4568 [physics.ins-det]
Agostinelli, S.: GEANT4–a simulation toolkit. Nucl. Instrum. Methods A 506, 250 (2003). https://doi.org/10.1016/S0168-9002(03)01368-8
A. Ribon et al., Status of Geant4 hadronic physics for the simulation of LHC experiments at the start of the LHC physics program (2010). http://lcgapp.cern.ch/project/docs/noteStatusHadronic2010.pdf. Accessed 20 July 2010
J. Budagov et al., Study of TileCal Sampling Fraction for Improvement of Monte-Carlo Data Reconstruction. TILECAL-PUB-2006-006 (2006). http://cds.cern.ch/record/962065/. Accessed 13 June 2006
T. Sjostrand, S. Mrenna, P. Skands, PYTHIA 6.4 physics and manual. JHEP 05, 026 (2006). https://doi.org/10.1088/1126-6708/2006/05/026. arXiv:hep-ph/0603175
T. Sjostrand, S. Mrenna, P. Skands, A brief introduction to PYTHIA 8.1. Comput. Phys. Commun. 178, 852 (2008). https://doi.org/10.1016/j.cpc.2008.01.036. arXiv:0710.3820 [hep-ph]
Cleland, W., Stern, E.: Signal processing considerations for liquid ionization calorimeters in a high rate environment. Nucl. Instrum. Methods A 338, 467 (1994). https://doi.org/10.1016/0168-9002(94)91332-3
R. Wigmans, Calorimetry: Energy Measurement in Particle Physics. International series of Monographs on Physics (Clarendon Press, Oxford, 2000). ISBN: 9780198502968.
Adragna, P.: Testbeam studies of production modules of the ATLAS Tile Calorimeter. Nucl. Instrum. Methods A 606, 362 (2009). https://doi.org/10.1016/j.nima.2009.04.009
ATLAS Collaboration, Topological cell clustering in the ATLAS calorimeters and its performance in LHC Run 1. Eur. Phys. J. C77, 490 (2017). https://doi.org/10.1140/epjc/s10052-017-5004-5. arXiv:1603.02934 [hep-ex]
M.C.N. Fiolhais, Correlated noise unfolding on a Hadronic Calorimeter (2011). http://cdsweb.cern.ch/record/1331174/. Accessed 22 Feb 2011
Starchenko, E.: Cesium monitoring system for ATLAS Tile Hadron Calorimeter. Nucl. Instrum. Methods A 494, 381 (2002). https://doi.org/10.1016/S0168-9002(02)01507-3
Viret, S.: LASER monitoring system for the ATLAS Tile Calorimeter. Nucl. Instrum. Methods A 617, 120 (2010). https://doi.org/10.1016/j.nima.2009.09.133
J. Abdallah et al., The Laser calibration of the ATLAS Tile Calorimeter during the LHC run 1. JINST 11, T10005 (2016). https://doi.org/10.1088/1748-0221/11/10/T10005. arXiv:1608.02791 [physics.ins-det]
Gupta, A., Nath, N.: Gain stability in high-current photomultipliers at high variable counting rates. Nucl. Instrum. Methods 53, 352 (1967). https://doi.org/10.1016/0029-554X(67)91383-3
Hillert, M.: The time dependence of the sensitivity of photomultiplier tubes. Br. J. Appl. Phys. 2, 164 (1951). https://doi.org/10.1088/0508-3443/2/6/305
Weitkamp, C., Slaughter, G., Michaelis, W., Schmidt, H.: Count-rate dependence of the gain of RCA 7046 photomultipliers for fixed dynode potentials. Nucl. Instrum. Methods 61, 122 (1968). https://doi.org/10.1016/0029-554X(68)90464-3
Zorn, C.: A pedestrian's guide to radiation damage in plastic scintillators. Rad. Phys. Chem. 41, 37 (1993). https://doi.org/10.1016/0920-5632(93)90049-C
ATLAS Collaboration, ATLAS high-level trigger, data-acquisition and controls: Technical Design Report (2003). https://cds.cern.ch/record/616089. Accessed 3 July 2003
A. Barriuso Poy, The detector control system of the ATLAS experiment. JINST 3, P05006 (2008). https://doi.org/10.1088/1748-0221/3/05/P05006
Ilchenko, Y.: Data Quality Monitoring Display for ATLAS experiment at the LHC. J. Phys. Conf. Ser. 219, 022035 (2010). https://doi.org/10.1088/1742-6596/219/2/022035
ATLAS Collaboration, ATLAS Computing: Technical Design Report (2005). https://cdsweb.cern.ch/record/837738. Accessed 20 June 2005
Golling, T., Hayward, H.S., Onyisi, P.U.E., Stelzer, H.J., Waller, P.: The ATLAS data quality defect database system. Eur. Phys. J. C 72, 1960 (2012). https://doi.org/10.1140/epjc/s10052-012-1960-y
Drake, G.: Design of a new switching power supply for the ATLAS TileCAL front-end electronics. JINST 8, C02032 (2013). https://doi.org/10.1088/1748-0221/8/02/C02032
ATLAS Collaboration, Jet energy measurement and its systematic uncertainty in proton–proton collisions at \(\sqrt{s} = 7\,\text{TeV}\) with the ATLAS detector. Eur. Phys. J. C 75, 17 (2015). https://doi.org/10.1140/epjc/s10052-014-3190-y. arXiv:1406.0076 [hep-ex]
ATLAS Collaboration, Data-driven determination of the energy scale and resolution of jets reconstructed in the ATLAS calorimeters using dijet and multijet events at \(\sqrt{s}=8\)TeV. ATLAS-CONF-2015-017 (2015). http://cds.cern.ch/record/2008678. Accessed 13 Apr 2015
ATLAS Collaboration, Performance of algorithms that reconstruct missing transverse momentum in \(\sqrt{s} =8\) TeV proton-proton collisions in the ATLAS detector. Eur. Phys. J. C77, 241 (2017). https://doi.org/10.1140/epjc/s10052-017-4780-2. arXiv:1609.09324 [hep-ex]
C. Patrignani et al., Review of Particle Physics. Chin. Phys. C40, 100001 (2016). https://doi.org/10.1088/1674-1137/40/10/100001. http://pdg.lbl.gov
Lund, E., Bugge, L., Gavrilenko, I., Strandlie, A.: Track parameter propagation through the application of a new adaptive Runge-Kutta-Nystrom method in the ATLAS experiment. JINST 4, P04001 (2009). https://doi.org/10.1088/1748-0221/4/04/P04001
Dar, A.: Atmospheric neutrinos, astrophysical neutrons, and proton-decay experiments. Phys. Rev. Lett. 51, 227 (1983). https://doi.org/10.1103/PhysRevLett.51.227
ATLAS Collaboration, Calibration of the ATLAS hadronic barrel calorimeter TileCal using 2008, 2009 and 2010 cosmic rays data. ATL-TILECAL-PUB-2011-001 (2011). http://cds.cern.ch/record/1385902/. Accessed 28 Sept 2011
T. Gleisberg, SHERPA 1.\(\alpha \), a proof-of-concept version. JHEP 02, 056 (2004). https://doi.org/10.1088/1126-6708/2004/02/056
ATLAS Collaboration, A measurement of the calorimeter response to single hadrons and determination of the jet energy scale uncertainty using LHC Run-1 pp-collision data with the ATLAS detector. Eur. Phys. J. C 77, 26 (2017). https://doi.org/10.1140/epjc/s10052-016-4580-0. arXiv:1607.08842 [hep-ex]
Cacciari, M., Salam, G.P., Soyez, G.: The anti-\(k_t\) jet clustering algorithm. JHEP 04, 063 (2008). https://doi.org/10.1088/1126-6708/2008/04/063. arXiv:0802.1189 [hep-ph]
ATLAS Collaboration, Measurement of the photon identification efficiencies with the ATLAS detector using LHC Run-1 data. Eur. Phys. J. C 76, 666 (2016). https://doi.org/10.1140/epjc/s10052-016-4507-9. arXiv:1606.01813 [hep-ex]
Bahr, M.: Herwig++ physics and manual. Eur. Phys. J. C 58, 639 (2008). https://doi.org/10.1140/epjc/s10052-008-0798-9. arXiv:0803.0883 [hep-ph]
ATLAS Collaboration, Measurement of the muon reconstruction performance of the ATLAS detector using 2011 and 2012 LHC proton-proton collision data. Eur. Phys. J. C 74, 3130 (2014). https://doi.org/10.1140/epjc/s10052-014-3130-x. arXiv:1407.3935 [hep-ex]
ATLAS Collaboration, ATLAS Computing Acknowledgements 2016-2017. ATL-GEN-PUB-2016-002. https://cds.cern.ch/record/2202407. Accessed 28 July 2016
Acknowledgements
We thank CERN for the very successful operation of the LHC, as well as the support staff from our institutions without whom ATLAS could not be operated efficiently. We acknowledge the support of ANPCyT, Argentina; YerPhI, Armenia; ARC, Australia; BMWFW and FWF, Austria; ANAS, Azerbaijan; SSTC, Belarus; CNPq and FAPESP, Brazil; NSERC, NRC and CFI, Canada; CERN; CONICYT, Chile; CAS, MOST and NSFC, China; COLCIENCIAS, Colombia; MSMT CR, MPO CR and VSC CR, Czech Republic; DNRF and DNSRC, Denmark; IN2P3-CNRS, CEA-DRF/IRFU, France; SRNSFG, Georgia; BMBF, HGF, and MPG, Germany; GSRT, Greece; RGC, Hong Kong SAR, China; ISF, I-CORE and Benoziyo Center, Israel; INFN, Italy; MEXT and JSPS, Japan; CNRST, Morocco; NWO, Netherlands; RCN, Norway; MNiSW and NCN, Poland; FCT, Portugal; MNE/IFA, Romania; MES of Russia and NRC KI, Russian Federation; JINR; MESTD, Serbia; MSSR, Slovakia; ARRS and MIZŠ, Slovenia; DST/NRF, South Africa; MINECO, Spain; SRC and Wallenberg Foundation, Sweden; SERI, SNSF and Cantons of Bern and Geneva, Switzerland; MOST, Taiwan; TAEK, Turkey; STFC, United Kingdom; DOE and NSF, United States of America. In addition, individual groups and members have received support from BCKDF, the Canada Council, CANARIE, CRC, Compute Canada, FQRNT, and the Ontario Innovation Trust, Canada; EPLANET, ERC, ERDF, FP7, Horizon 2020 and Marie Skłodowska-Curie Actions, European Union; Investissements d’Avenir Labex and Idex, ANR, Région Auvergne and Fondation Partager le Savoir, France; DFG and AvH Foundation, Germany; Herakleitos, Thales and Aristeia programmes co-financed by EU-ESF and the Greek NSRF; BSF, GIF and Minerva, Israel; BRF, Norway; CERCA Programme Generalitat de Catalunya, Generalitat Valenciana, Spain; the Royal Society and Leverhulme Trust, United Kingdom. The crucial computing support from all WLCG partners is acknowledged gratefully, in particular from CERN, the ATLAS Tier-1 facilities at TRIUMF (Canada), NDGF (Denmark, Norway, Sweden), CC-IN2P3 (France), KIT/GridKA (Germany), INFN-CNAF (Italy), NL-T1 (Netherlands), PIC (Spain), ASGC (Taiwan), RAL (UK) and BNL (USA), the Tier-2 facilities worldwide and large non-WLCG resource providers. Major contributors of computing resources are listed in Ref. [56].
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Aaboud, M., Aad, G., Abbott, B. et al. Operation and performance of the ATLAS Tile Calorimeter in Run 1. Eur. Phys. J. C 78, 987 (2018). https://doi.org/10.1140/epjc/s10052-018-6374-z
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DOI: https://doi.org/10.1140/epjc/s10052-018-6374-z