Abstract
Laser powder-bed fusion (LPBF) is one of the mainstream additive manufacturing (AM) processes, which has dominated the metal AM manufacturing market. LPBF has the capability to manufacture complex parts, which pose a manufacturing challenge by conventional methods. In this paper, an efficient numerical-experimental approach has been introduced to calibrate the parameters of a proposed three-dimensional (3D) conical Gaussian moving laser heat source model. For this purpose, several Hastelloy X single tracks are printed with various process parameters. The melt pool depth and width were measured experimentally, and results were used to calibrate and validate the heat source model. An empirical relationship between heat source parameters and laser energy density was also proposed. In addition, temperature gradients and cooling rates around the melt pool were extracted from the numerical model to be used towards microstructure prediction. Estimated microstructure cell spacing, calculated based on predicted cooling rate during solidification, was in good agreement with experimental measurements, indicating the validity of the heat source model.
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1 Introduction
Additive manufacturing (AM) is an emerging technology that is becoming more common in different industries such as aerospace and automotive. This process has gained the advantage of producing complex shapes by importing digital drawing data to the machine [1]. The selective laser melting process, which is named as laser powder-bed fusion (LPBF) by the ASTM standard, produces parts in a layer upon layer fashion. After spreading metal powder on the build plate, a laser heat source selectively melts powder particles and the solidified track forms the shape of desired contours. A new layer of powder is then added to the previous layer and this process is repeated until the final part is fabricated [2].
In order to mitigate costs and turnaround time for identifying optimum process parameters and predict the temperature distribution and gradient for further microstructure analysis of printed parts, several numerical analysis methods have been implemented by many researchers [3,4,5]. Kundakc et al. [6] developed a finite element (FE) model, considering a three-dimensional (3D) heat source to predict melt pool geometries and temperature distribution during LPBF. They carried out some experimental tests on Inconel 625 and titanium material for validating their model. Their model was able to predict melt pool shapes within the error range of 11–18%. Liu et al. [7] investigated the LPBF of AlSi10Mg using the FE method for predicting microstructure within the solidified melt pool. They extracted temperature gradient, solidification rate, and cooling rate in order to predict the microstructure behavior of the melt pool. Antony et al. [8] investigated single track formation in LPBF of SS 316 powder on the AISI 316L substrate. They developed an FE model for predicting the temperature distribution in one layer deposited powder. Moreover, the influence of process parameters on melt pool characteristics was studied. Ali et al. [9] proposed a numerical model considering a volumetric heat source model for taking into account heat transfer penetration within the material. They were able to predict the cooling rate, temperature gradient, and residual stress evolution. Their model was validated based on melt pool dimensions extracted experimentally. Du et al. [10] implemented a 3D Gaussian heat source in their model for predicting temperature field within LPBF. In addition, the variation of laser absorptivity with temperature was considered. Zhidong et al. [11] carried out a comprehensive study of different volumetric heat source models. They proposed a new model including anisotropically thermal conductivity with a variable laser absorption coefficient. Their predicted results were very close to experimental measurements of melt pool dimensions and surface morphologies of tracks.
Many studies on the LPBF modeling have been conducted. However, the literature lacks detailed procedures on calibrating the heat source models in order to develop a relationship between heat source parameters and melt pool geometries. The authors have previously published a work, in which variable thermal conductivity and absorption factors have been incorporated into the exponentially decaying heat source [11]. In this paper, a conical Gaussian heat source model [12, 13] with a varying depth of penetration along with a variable absorption factor has been implemented for modeling the melt pool depth and width of single tracks of Hastelloy X during LPBF. Numerical results showed excellent agreement with experimental melt pool geometries based on the varying laser power and scanning speed. In addition, temperature gradients and cooling rates due to their critical role in microstructure analysis such as predicting cell size are also extracted from the numerical results.
2 Experimental approach
In this study, a commercially gas-atomized Hastelloy X powder (Table 1), provided from EOS GmbH was utilized with a D10, D50, and D90 of 15.5 μm, 29.3 μm, and 46.4 μm, respectively. Hastelloy X (nickel-based superalloy) has several applications in manufacturing gas turbine combustion systems due to its good creep resistance, tensile strength, and ductility at high temperatures [13]. A Zeiss ULTRA plus Scanning Electron Microscopy (SEM) (Carl Zeiss Microscopy GmbH, Jena, Germany) was used to capture the powder distribution (Fig. 1).
Single tracks of Hastelloy X were produced using an EOS M290 (EOS GmbH, Krailling, Germany) machine with a laser spot size of 100 μm. The laser of this system is a Ytterbium fiber laser with a wavelength of 1060 nm. Initially, substrates with dimensions of 25 × 18.5 × 5 mm were printed from the same material (Hastelloy X) by using the default EOS process parameters (laser power 195 W, scanning speed 1150 mm/s with hatch distance of 90 μm). Then, an additional layer thickness of powder was spread on top of the printed substrate to manufacture the single tracks with specified process parameters. For this study, various process parameters such as laser power and laser scanning speed were considered. The range of laser power and scanning speed are listed in (Table 2) which are used for validation of the numerical model. Figure 2 shows the produced single tracks at different process parameters. The distance between every single track was 2.5 mm. Then, the printed specimens were removed from the build plate and cut perpendicular to single tracks using a Buehler ISOMET 1000 (Buehler, IL, USA) precision cutter with 5 mm distance from the side of samples. Afterward, the specimens were mounted and polished before etching with a Glyceregia solution [15]. Finally, in order to measure the single tracks melt pool geometries, a Keyence VK-X250 confocal laser microscope (Keyence Corporation, Osaka, Japan) was used. In addition, a TESCAN VEGA 3 SEM (TESCAN, Brno, Czech Republic) was used for validating the cooling rate extracted from the numerical results based on cell spacing.
3 Finite element modeling
3.1 Model geometry and material properties
The commercial software COMSOL Multiphysics® was utilized to predict the melt pool dimensions, cooling rate, and temperature gradient during LPBF of Hastelloy X samples. In order to capture melt pool geometries in the microscale model, a substrate domain of 1 × 1 × 0.5 mm was modeled. A powder layer of a thickness of 0.02 mm was also applied on top of the substrate (Fig. 3). Finer tetrahedral mesh size (20 μm) was implemented in regions close to the laser-material interaction zone for reducing computational cost as shown in Fig. 3.
The properties of Hastelloy X material (Fig. 4) for bulk and powder were assigned to the respective domains. The thermal conductivity of powder material is derived using Eq. (1) [6]:
where ke is the effective thermal conductivity of powder bed, kg is the thermal conductivity of the gas, ks is the thermal conductivity of solid, φ is the experimentally measured porosity of the powder bed (52%) [16], kR is the thermal conductivity of the powder bed due to radiation, ∅ is the flattened surface fraction between particles, B is the deformation parameter of the particle, and kcontact can be derived from Eq. (2) [17]:
As shown in Fig. 4 (a), the plot depicts that there is a huge difference between the thermal conductivity of powder and bulk material and the thermal conductivity of the powder is approximately 1% of bulk material.
In addition, Fig. 4 (b) demonstrates the difference between the density of bulk and powder material which can be calculated based on the porosity of powder bed using (Eq. (3)).
In order to consider phase change from solid to liquid, apparent heat capacity method [18] is implemented (Eq. (4)):
where Tm is the melting temperature which is considered as the center point between solidus and liquidus temperature. ∆Tm is the temperature difference between liquidus and solidus temperature and L is the latent heat of fusion. As shown in Fig. 4 (c), in this method, the latent heat of fusion is compensated with increasing the specific heat between solidus and liquidus such that the extra heat absorbed by the material in this interval is equal to the latent heat of fusion. Therefore, within those ranges of temperatures, the specific heat will be increasing dramatically.
It needs to be mentioned that for simplicity and acceleration of computation, it is assumed that the absorption coefficient is not affected by phase change.
3.2 Governing equation and boundary conditions
Governing equation of heat transfer can be described as [11]:
where ρ, Cp, kx, ky, kz, T, and Q are the density of the material (kg/m3), specific heat (J/kgK), thermal conductivity (W/mK) of x, y, and z directions, temperature (K) and internal heat generation (W/m3), respectively.
In terms of boundary conditions, the convective heat transfer with the ambient environment based on Newton’s law was considered on all open surfaces (Eq. (6)).
Above, qc is the heat dissipation, hc is the heat transfer coefficient (W/m2K), Text is the geometry temperature, and T is the ambient temperature (293 K).
In addition, the radiative heat transfer from the top surface of the geometry domain was applied (Eq. (7)). The bottom surface of the geometry domain was set as the ambient temperature (293 K).
Above, σsb is the Stefan-Boltzmann coefficient (W/m2K4) and ε is the emissivity coefficient.
3.3 Heat source model calibration
3.3.1 Heat source model
A moving heat source with a conical Gaussian shape was applied for predicting the melt pool dimensions and temperature distributions (Fig. 5). The conical Gaussian heat source is described as [11]:
where I(x, y, z), q0, re, and ri are the heat intensity distribution, the maximum value of heat intensity, and radius on top and bottom of the heat source profile, respectively.
Based on the thermal energy conservation (Eq. (10)):
where 훼 and P are the laser beam absorptivity and laser power respectively.
q0 is derived from Eq. (10) and can be calculated Eq. (11):
where H is the height of the conical Gaussian heat source.
By substituting q0 in Eq. (8) by Eq. (11), the final equation of the intensity distribution can be derived as follows (Eq. (12)):
where H is the height of the conical Gaussian heat source.
The internal heat generated as a result of the heat input and losses is plugged into Eq. 5.
3.3.2 Calibration procedure
In order to calibrate the numerical model, the heat source parameters such as height (H) and absorption coefficient (α) are altered to minimize the error between the experimental and simulated melt pool dimensions. Since the upper radius of the conical Gaussian heat source (re) is the radius of laser spot size (50 μm), the bottom radius of the heat source has a limited range to be varied. In addition, based on Eq. (11) and the calibration iteration, it is found that a lower radius of heat source ri does not have a significant influence on the melt pool depth where it has a slight effect on melt pool width, so it has been fixed in the chosen value (30 μm). It is also noted that the height of the conical Gaussian heat source (H) is the most important parameter and numerical results show that as the height of the heat source is increased, the width of the melt pool decreases. In order to compensate for the reduction in melt pool width, the absorption coefficient has been modified for acquiring more accurate melt pool shapes. It is realized that the absorption coefficient has a significant effect on the melt pool width and depth at the same time.
Figure 6 demonstrates a flow chart of the procedure implemented for calibrating heat source model, where Wex, Wsim, Dex, and Dsim are the experimental melt pool width, predicted melt pool width, experimental melt pool depth, and predicted melt pool depth, respectively. The maximum acceptable deviation of model predictions for the melt pool width and height is identified as ε1 and ε2 respectively. As the flow chart shows, in the first step, the initial values of the height of the heat source and absorption coefficient are selected and based on those values numerical simulation was carried out. Due to the complexity of the laser powder-bed fusion process, researchers use a lot of underlying assumptions to capture the model accurately [19, 20]. As a result, numerical results have some deviations from experimental and the current studies show a ± 30% as a fair and acceptable range [21, 22]. By comparing the experimental and numerical results of melt pool depth and width, the values of the absorption coefficient and height of heat source are modified such that the difference between the numerical with experimental ones is within an acceptable range.
4 Results and discussion
4.1 Experimental measurements of the melt pool, calibration, and validation results
Based on Section 3.3, the heat source model was calibrated using the power and scanning speed values listed in Table 2.
Validation of the melt pool dimensions with experimental measurements is done in such a way that melt pool depth and width below the powder layer are compared with experimental results [6, 11]. Evaporation and shrinkage of the powder layer are ignored due to modeling complexities.
Figure 7 illustrates that the experimentally measured melt pool geometries are in good agreement with the numerical results. The average percentage differences between the simulation results and experimental ones for the melt pool depth and width are 13% and 6%, respectively.
The melt pool dimensions can be represented as a function of deposited energy density for various process parameters based on the findings in [23]. It has been reported that the absorbed energy density has a relationship with the ratio of the laser power to the root square of scanning speed (\( \frac{P}{\sqrt{V}}\Big) \), where P is the laser power and V is the scanning speed [11].
It is realized that the absorption coefficient and height of conical Gaussian heat source has a linear relationship with the \( \frac{P}{\sqrt{V}} \). The physical reason behind this is due to the fact that as the energy density increases, melt pool depth becomes larger due to higher heat penetration to the powder-bed. On the other hand, by increasing the energy density, the material tends to absorb more energy [24]. Therefore, the absorption coefficient and the height of conical Gaussian heat source should be adapted based on the \( \frac{P}{\sqrt{V}} \). As a result, a higher \( \frac{P}{\sqrt{V}} \) will cause a higher absorption coefficient and a larger height of the conical Gaussian heat source.
Empirical equations (Eqs. (13) and (14)) show the relationship between the \( \frac{P}{\sqrt{V}} \), height of conical Gaussian heat source and absorption coefficient which were derived based on the calibration of the heat source with experimental results. It should be mentioned that this empirical equation would be valid for the energy density within the range of 4.74 to 7.90 (\( W/\sqrt{mm/s} \)) which falls within the conduction mode of the melt pool and ensures near full dense parts.
where \( P\ \left[W\right],V\left[\frac{mm}{s}\right],H\left[\mu m\right] \)and 훼 are the laser power, scanning speed, the height of the conical Gaussian heat source and the absorption coefficient, respectively. In addition, a1, a2, b1, and b2 are parameters which will be established by experimental results (Table 3).
The porosity of the powder and the convection heat transfer of the melt pool have a significant increase in heat penetration to the powder bed. By doing the calibration procedure the height of the conical Gaussian heat source have been found to be in the range of 50 to 100 μm for the energy density range of 4.74 to 7.90 (\( W/\sqrt{mm/s} \)).
4.2 Effect of process parameters on melt pool dimensions
Experimental single tracks with the various range of laser scanning speeds and power were printed, cross-sectioned and polished to measure the melt pool depth and width.
The results show that by increasing the laser power from 150 W to 250 W while keeping other process parameters constant, the depth and width of the melt pool will also elevate, whereas increasing the scanning speed from 800 to 1300 mm/s will cause a decrease in the melt pool dimensions. Figure 8 (a) shows that with the increasing laser power from 150 W to 250 W, the depth and width of the melt pool will increase from 26 to 82 μm and 88 to 129 μm, respectively. Figure 8 (b) demonstrates the effect of scanning speed on melt pool dimensions. With increasing scanning speed from 800 to 1300 mm/s, the melt pool depth and width will decrease from 72 to 34 μm and 127 to 90 μm, respectively. This phenomenon happens due to a changing energy density, which is fluxing into the material. Therefore, as mentioned previously, higher laser power and a lower scanning speed will result in a higher energy density, which is absorbed by the material; consequently, the melt pool geometries including the melt pool depth and width will be increasing. The same scenario will also happen when a lower energy density is given to the material. Therefore, a lower \( \frac{P}{\sqrt{V}} \) will cause smaller melt pool dimensions. Figure 9 shows the effect of \( \frac{P}{\sqrt{V}} \) on the melt pool dimensions. It is found that increasing the \( \frac{P}{\sqrt{V}} \) from 4.74 to 7.9 (\( W/\sqrt{mm/s} \)), the melt pool depth and width will increase from 26 to 82 μm and 88 to 129 μm, respectively.
Experimental results demonstrate that increasing scanning speed from 800 to 1300 mm/s will lead to a reduction in the melt pool depth by 52%. On the other hand, decreasing the laser power from 250 [W] to 150 [W] causes a reduction in the melt pool depth up to 68%. Therefore, it can be concluded that the laser power has a stronger influence on the melt pool dimensions compared to the laser scanning speed [25].
4.3 Temperature distribution
In order to derive temperature distribution along the X- and Y-axis of the melt pool, two paths have been identified on the top of the powder surface where the laser heat source is applied (Fig. 10). Figure 11 demonstrates the effect of different scanning speed on the temperature distribution. By increasing the scanning speed from 1000 to 1600 mm/s, the laser energy input to the material will be decreased, which results in decreasing the peak temperatures. On the other hand, the temperature distribution in the X direction illustrates that the maximum temperature occurs in the melt pool front. In addition, the temperature distribution along Y-axis clearly shows the Gaussian distribution of laser heat source.
4.4 Temperature gradient
Due to the fast solidification within LPBF [26], the temperature gradient and cooling rates play a crucial role in predicting the microstructure, grain orientation, and growth within the melt pool. In order to extract temperature history from the numerical results, several points were set in the z-axis from the top of the powder layer towards the bulk material at 5 μm intervals as shown in Fig. 12.
For obtaining temperature gradient within the melt pool at the specific time from 20 μm under the surface of powder (Z = 20 μm) to 150 μm below the surface, the temperature distributions along the Z direction for different scanning speeds are extracted. Figure 13 (a) shows that the temperature will drop from the powder to the bulk material due to the higher thermal conductivity of the bulk region compared to the powder material. Moreover, the heat source is decaying linearly along the Z direction. The results show that a higher scanning speed leads to a reduction in the temperature gradient within the melt pool. This could be due to providing less energy density input to the material so that the peak transient temperature will decrease. As a result, the temperature difference from the top to the bottom surface will be decreasing which means that by increasing the scanning speed, the temperature gradient will be reduced. In addition, it has been found that the maximum temperature gradient for different scanning speeds, 1000 mm/s, 1200 mm/s, 1600 mm/s is 69 K/μm, 63 K/μm, and 52 K/μm, respectively, which has occurred at 52 μm below the powder surface, close to the interface of solid and liquid phase within the melt pool (Fig. 13 (b)).
4.5 Cooling rate
Figure 14 shows the effect of laser scanning speed on the transient temperature corresponding to different points within the melt pool. Increasing the scanning speed leads to the less amount of energy density that fluxes to the material. Therefore, peak temperatures will be decreasing by increasing the scanning speed. On the other hand, by moving down from the powder to the bulk material along the Z direction, the temperature peak will be reduced. This is happening firstly because the conical Gaussian heat source is decaying linearly along the Z direction. Secondly, moving from the powder to the bulk material, the heat conductivity will increase drastically such that heat will dissipate more in the bulk regions, which causes the cooling rate to increase. Figure 14 depicts slope changing when the temperature is below the melting point due to the phase change. In addition, the cooling rate has been derived from different points, which are located within the melt pool and the effect of laser power on the cooling rate is investigated (Fig. 15). It has been found that by increasing the laser power, the cooling rate will be increased. It is attributed to the fact that as the laser power is increased, a higher energy density is given to the material so that the peak transient temperature will be increasing. Therefore, the maximum cooling rate will be increased due to drastically decreasing temperatures. The results illustrate that the maximum cooling rate for a different range of laser power, 150 W, 200 W, and 250 W is 1.7 × 107 K/s, 2.5 × 107 K/s, and 3.1 × 107 K/s which occurs at the top surface of melt pool (Z = 20 μm).
4.6 Experimental validation of cooling rate and predicting primary dendrite spacing
Figure 16 (a) displays the simulated melt pool temperature distribution of a produced single track using the laser power of 200 W, the scan speed of 1000 mm/s, and the layer thickness of 20 μm with four points located in the middle of the melt pool with different depths from the surface of the substrate. Figure 16 (b, c) shows low and high magnification SEM images from a cross-sectioned single track. The cellular structure of the solidified material is also shown in Fig. 16 (c) where primary cell spacing was measured to be around 320 nm. These fine features in the microstructure are a result of the rapid solidification of molten metal during LPBF [27,28,29]. It is well known that higher cooling rates significantly reduce the feature size of the solidified microstructure. Here in the LPBF, both the high-temperature gradient and solidification rate result in outstandingly high cooling rates [27, 30]. Primary spacing (λ1) of either cells or dendrites in the microstructure of Ni-base superalloys is directly related to the cooling rate with an empirical Eq. (15) reported by [30]:
where \( \dot{T} \) is the cooling rate of the interface of solid/liquid during solidification. Considering the average λ1 to be around 0.32 μm (Fig. 16 (c)), the cooling rate can be calculated (~7.82 × 106 K/s). On the other hand, a maximum value for the cooling rate related to the probe in the same location of the melt pool has been calculated to be around ~8.82 × 106 K/s which is very close to the calculated cooling rate with an estimated dendrite spacing of 0.32 μm. A detailed effect of energy density on primary dendrite spacing is demonstrated in Fig. 17. It is found that simulation results are very close to experimental ones for different process parameters and predict dendrite spacing accurately. Increasing the energy density leads to higher cooling rates which cause smaller primary dendrite spacing. Since the SEM images extracted from each grain may be observed from the projection of the image derived from different cutting planes, there were some variations of primary dendrite spacing for each specimen. However, the simulation results were within the range of experimental results.
Sensitivity analysis on heat source parameter and absorption coefficient is done for confirming the fact that selecting the most optimum parameters for the Conical Gaussian heat source and absorption coefficient results in a more accurate prediction of cooling rate and cell space. These results confirm the strength and accuracy of the model.
The sensitivity plot for various heat source parameters on the cooling rate with a fixed process parameter of laser power of 150 W and scanning speed of 1000 mm/s at the interface of solidus and liquidus (Z = 40 μm) is shown in Fig. 18. It clearly shows that with implementing a height of 50 μm and the absorption coefficient of 0.3, the cooling rate is 8.7 × 106 K/s which is comparable to the experimental results derived from Eq. (15). On the other hand, changing the height or the absorption coefficient results in larger errors. Therefore, it can be concluded that by implementing the calibrated heat source model, the numerical results will predict the microstructure within the melt pool more precisely.
5 Conclusions
In this work, experimental and numerical investigations of single tracks of Hastelloy X made by LPBF were carried out and the melt pool dimensional features were measured experimentally. The main conclusions can be summarized as follows:
- 1.
Based on the experimental results, the heat source model was calibrated and the proposal empirical equations show the relationship between the energy density (\( \alpha ={a}_1\frac{P}{\sqrt{V}}+{b}_1,H={a}_2\frac{P}{\sqrt{V}}+{b}_2 \)), the height of the heat source and the absorption coefficient. However, these empirical equations are only valid for the specific range of energy density which provides conduction mode of the melt pool.
- 2.
The simulated results for the melt pool dimensions show a good agreement with the experimental data. The percentage difference between the simulated and experimental melt pool depth and width results is around 13% and 6%, respectively.
- 3.
The influence of laser power and scanning speed on the melt pool depth and width was investigated. By decreasing the laser power from 250 W to 150 W in fixed scanning speed (1000 mm/s), the melt pool depth and width decrease 68% (82 to 26 μm) and 32% (129 to 88 μm), respectively. On the other hand, by increasing the laser scanning speed from 800 to 1300 mm/s in fixed laser power (200 W), the melt pool depth and width reduce 53% (72 to 34 μm) and 29% (127 to 90 μm), respectively. It is concluded that the effect of laser power on the melt pool geometry is more dominant than the scanning speed.
- 4.
It is found that the cooling rate increases with increasing laser power. The results illustrate that the maximum cooling rate is 3.1 × 107 K/s corresponding to a laser power of 250 W which occurs at the top surface of the melt pool.
- 5.
On the other hand, with increasing the scanning speed, the temperature gradient decreases significantly. Moreover, the maximum temperature gradient 69 K/μm is achieved by implementing the scanning speed of 1000 mm/s which occurs at 52 μm below the powder surface, close to the interface of solid and liquid phase within the melt pool.
- 6.
The effect of energy density on the primary cell spacing is also studied and numerical results of cooling rates validated with experimental results. The results show that dendrite cell spacing decreased from 0.365 to 0.330 μm by increasing energy density from 4.74 to 7.22 \( \left(W/\sqrt{mm/s}\right) \).
- 7.
The sensitivity analysis is also carried out which indicates that by implementing the calibrated heat source model, the cooling rate and estimated primary dendrite spacing are predicted more precisely.
Abbreviations
- k e :
-
Effective thermal conductivity of powder
- k g :
-
Thermal conductivity of the continuous gas phase
- k s :
-
Thermal conductivity of skeletal solid
- φ :
-
The porosity of powder bed
- k R :
-
Thermal conductivity part of the powder bed owing to radiation
- ∅:
-
The flattened surface fraction of particle in contact with another particle
- B :
-
Deformation parameter of the particle
- k contact :
-
Contact conductivity between two particles according to the value of ∅
- C p :
-
Specific heat
- L :
-
Latent heat
- ρ :
-
Density
- k :
-
Thermal conductivity
- Q :
-
Internal heat generation
- h c :
-
Heat transfer coefficient
- ε :
-
Emissivity coefficient
- σ sb :
-
Stefan-Boltzmann coefficient
- q c :
-
Convective heat dissipation
- q r :
-
Radiative heat dissipation
- I :
-
Heat intensity distribution
- q 0 :
-
The maximum value of heat intensity
- r 0 :
-
The top radius of heat source
- r d :
-
The bottom radius of heat source
- z e :
-
Z coordinates of the top surface of heat source
- z i :
-
Z coordinates of the bottom surface of heat source
- H :
-
Height of heat source
- α :
-
Absorption coefficient
- P :
-
Laser power
- V :
-
Scanning speed
- \( \dot{T} \) :
-
Cooling rate
- λ 1 :
-
Primary spacing
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Acknowledgments
The authors would like to appreciate the Federal Economic Development Agency for Southern Ontario (FedDev Ontario), Natural Sciences and Engineering Research Council of Canada (NSERC), and Siemens Canada Limited, for supporting financially. In addition, special thanks to Jerry Ratthapakdee and Karl Rautenberg for assisting in preparing the LPBF setup and printing the samples, National Research Council Canada (NRC) and Adhitan Rani Kasinathan for their contributions to the LPBF modeling.
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Shahabad, S.I., Zhang, Z., Keshavarzkermani, A. et al. Heat source model calibration for thermal analysis of laser powder-bed fusion. Int J Adv Manuf Technol 106, 3367–3379 (2020). https://doi.org/10.1007/s00170-019-04908-3
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DOI: https://doi.org/10.1007/s00170-019-04908-3