Abstract
Biological methanation (biomethanation) of syngas obtained from biomass gasification offers the opportunity to employ a low-pressure, low-temperature process to produce storable bio-derived substitute natural gas (bSNG), although its economic viability is limited by high energy and biomass costs. Research on syngas biomethanation techno-economic performance is limited and novel biomass-to-biomethane process configurations are required in order to assess opportunities for the enhancement of its efficiency and economic feasibility. In this study, we carried out the techno-economic modeling of two processes comprising integrated biomass gasification, electrolysis, and syngas biomethanation with combined heat and power recovery in order to assess and compare their fuel yields, energy efficiency, carbon efficiency, and bSNG minimum selling price (MSP). The first process operates standalone biomethanation (SAB) of syngas and can produce approximately 38,000 Nm3 of bSNG per day, with a total plant efficiency of 50.6%. The second process (integrated biomethane-biomethanol, IBB) exploits the unconverted carbon stream from the biomethanation process to recover energy and synthesize methanol via direct catalytic CO2 hydrogenation. In addition to the same bSNG output, the IBB process can produce 10 t/day of biomethanol, at a 99% purity. The IBB process shows little global energy efficiency gains in comparison with SAB (51.7%) due to the large increase in electrolytic hydrogen demand, but it shows a substantial improvement in biomass-to-fuel carbon efficiency (33 vs. 26%). The SAB and IBB processes generate a bSNG MSP of 2.38 €/Nm3 and 3.68 €/Nm3, respectively. Hydrogenation of unconverted carbon in biomass-to-biomethane processes comes with high additional capital and operating costs due to the large-scale electrolysis plants required. Consequently, in both processes, the market price gap of the bSNG produced is 0.13 €/kWhbSNG (SAB) and 0.25 €/kWhbSNG (IBB) even under the most optimistic cost scenarios considered, and it is primarily influenced by the cost of surplus electricity utilized in electrolysis, while the selling price of biomethanol exerts a very limited influence on process economics. Intensive subsidization would be required in order to sustain the decentralized production of bSNG through both processes. Despite their limited economic competitiveness, both processes have a size comparable with existing renewable gas production plants in terms of bSNG production capacity and the IBB process is of a size adequate for the supply of biomethanol to a decentralized biorenewable supply chain.
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1 Introduction
The implementation of advanced bioeconomies relies on the efficient conversion of renewable carbon stocks into versatile fuels and chemical feedstocks. Biomass gasification has been identified as a promising technology for the thermochemical conversion of renewable biomass into a synthetic gas mixture (syngas) that can serve as a precursor to produce renewable biofuels and biochemicals [1]. Such products are the result of conversion processes operated downstream of biomass gasification and include commodities such as Fischer-Tropsch products, methanol, dimethyl ether, hydrogen, biodiesel, and biomethane in the form of bio-derived substitute natural gas (bSNG) [2]. Syngas upgrading to bSNG via methanation has attracted much attention in recent years [3], partly because of the versatility of methane as a low-emissions energy carrier that makes it a suitable fuel for the transition to a fully renewable energy system [4]. Methanation processes offer the possibility to be integrated in so-called power-to-gas (PtG) systems. In these systems, water electrolysis, powered by surplus renewable electricity, is used to produce hydrogen, which reacts with carbon dioxide to synthesize grid-quality bSNG [5], either via catalytic [6] or via biological conversion processes [7]. PtG processes offer several opportunities for future energy systems, enabling energy storage and grid stabilization while producing renewable methane [8]. Biomass gasification can thus be integrated with methanation and water electrolysis in PtG systems, with the potential to address fuel-type diversification and storage needs. Integrated biomass gasification and catalytic methanation systems have been widely studied from a modeling and system performance point of view [9], while only few studies so far have addressed the performance of integrated biomass gasification-biomethanation systems [10,11,12].
Among the products of syngas conversion, methanol is a fundamental platform chemical for the production of a variety of compounds in the contemporary chemical industry, such as formaldehyde, methyl tert-butyl ether, and acetic acid [13] and the production of bio-derived methanol could play an important role in future biorenewable supply chains. Methanol has also been identified as a promising transition fuel and energy carrier to lead the transportation sector towards complete decarbonization [14]. Therefore, the development of biomass-to-methanol technologies and the techno-economic analysis of related full-scale processes have recently attracted considerable attention [15]. An integrated biomass gasification-methanol synthesis (IBGM) scheme comprises biomass gasification to syngas and the subsequent catalytic synthesis of methanol via CO conversion to CO2 and subsequent hydrogenation (the CAMERE process), or via direct CO2 hydrogenation. Catalytic methanol synthesis from direct CO2 hydrogenation can serve as a carbon utilization process [16, 17] that allows the fixation of CO2 from a variety of sources into a useful product, and it can be integrated into power-to-methanol (PtM) systems, where renewable electricity is exploited to produce electrolytic hydrogen for use in methanol synthesis [18]. When large quantities of renewable hydrogen are available, CO2 hydrogenation to methanol represents an option for the valorization of renewable carbon derived from other processes via carbon utilization, according to the poly-generation needs of future bioeconomies and the biorefinery concept [19]. Moreover, the conversion of CO2 and H2 to methanol through the PtM concept allows overcoming the limitations related to the handling of pure hydrogen, by producing a versatile liquid fuel that is more easily exploitable in the existing distribution infrastructure [20]. Moioli et al. [21] demonstrated that CO2-to-methanol requires an overall lower energy input per unit mass of fuel produced than CO2-to-methane, due to the lower stoichiometric hydrogen requirements of methanol synthesis, and that it delivers a higher energy storage efficiency when normalized for electrolysis efficiencies. For this reason, CO2-to-methanol may represent a better option than CO2-to-methane when small-scale applications are considered, due to the lower investment required by smaller electrolysis sizes.
Biological methanation (biomethanation) of biogas produced through anaerobic digestion has seen successful lab-scale demonstration [22,23,24] and pilot projects [25], and its use in PtG schemes has been investigated taking AD as a standalone carbon source [26] or in parallel to hydrothermal liquefaction (HTL) of digestate [27]. For standalone AD, Vo et al. [26] estimated a biomethane minimum selling price (MSP) of 1.43 €/Nm3, with an electricity cost of 0.1 €/kWh. Kassem et al. [27], instead, estimated a biomethane levelized cost of energy (LCOE) of 10 $/GJ (approx. 0.33 €/Nm3, conversion rate 1 EUR = 1.1 USD), considering an electricity price of 0.05 $/kWh and applying two US carbon pricing mechanisms on the biomethane and the biocrude produced through HTL, namely the Low Carbon Fuel Standard (LCFS) and the Renewable Fuel Standard (RFS). However, none of the two studies evaluated the effect of utilizing the available CO2 for two distinct product streams with the aid of electrolytic hydrogen.
Biomethanation of syngas has also recently been demonstrated an effective syngas-to-methane technology on the lab scale and shows potential for scale-up [28]. In a previous techno-economic assessment on an integrated biomass gasification-electrolysis-biomethanation (IBGEB) process, we identified a bSNG minimum selling price of 2.68 €/Nm3 and we indicated that key optimization opportunities rely on lower-pressure operation and better energy integration within the process [11]. As an important advantage over catalytic methanation, syngas biomethanation offers the possibility of low-pressure [22, 23] or atmospheric-pressure [28] operation, with the potential to generate energy savings. However, such advantage can only be exploited if the upstream process train is run at lower pressure, avoiding high-pressure units in the syngas gas conditioning section. In syngas conditioning, impurities such as H2S and NH3 need to be removed by a combination of water scrubbing and/or catalytic reactions, and the CO2:H2 ratio of the feed gas needs to be lowered to avoid excessive CO2 concentration in the product SNG, or conversely, to limit the additional hydrogen demand from electrolysis. An alternative to the use of high-pressure catalytic units for desulphurization and water-gas shift (WGS) [29, 30] is the simultaneous removal of CO2, H2S and NH3 from syngas by combined water-methanol scrubbing [30] that can be effective at low pressures when the required reduction in concentration is limited.
Yun et al. [31] recently proposed an alternative concept to the conventional gasification-cleaning-methanation train, illustrating the use of biomass pyrolysis followed by low-temperature steam reforming of bio-oil as a promising strategy for the direct production of biomethane with high carbon conversion efficiency. The improvement of carbon efficiency in biomass-to-biomethane systems can also be addressed through the capture and utilization of carbon streams rejected by the process that could be further exploited on site to produce renewable commodities. Michailos et al. [10] have modeled carbon capture and storage (CCS) by amine scrubbing on a gasification-biomethanation process, indicating that the system could capture 1.42 kg CO2 per kg bSNG produced, increasing the bSNG minimum selling price (MSP) by 17% compared to a process without CCS. The authors indicated that the examined biomethanation process would only be profitable (NPV = 0) with a price of 39 ₤/t of CO2 captured and a penalty emission factor on fossil natural gas of 0.2 t CO2/MWh. However, alternative carbon utilization options of the recovered carbon stream were not assessed in the study. Michailos et al. [12] also evaluated an integrated concept for a wastewater treatment plant comprising anaerobic digestion (AD), digestate gasification, and CO2 biomethanation, where AD and PEM electrolysis are the main source of CO2 and H2, respectively. In scenarios in which digestate gasification is used for the co-provision of H2 or a mixture of CO2 and H2 to biomethanation, the estimated MSP were 135 ₤/MWhHHV (approx. 1.65 €/Nm3; 1 GBP = 1.09 EUR) and 164 ₤/MWhHHV (approx. 2 €/Nm3), respectively, with reductions of 32–42% when O2 valorization, renewable energy incentives, and grid balancing fees are included. However, the co-production of more than one fuel type was not considered in any of the layouts studied.
Further work is thus required in order to assess process integration options that can enhance the feasibility of IBGEB processes, increase their carbon efficiency, and allow for poly-generative systems that valorize waste renewable carbon. The techno-economic modeling of low-pressure biomethanation systems integrated with high-value power-to-X and carbon utilization options is required in order to assess the potential of these processes to improve the large-scale feasibility of biomass-to-biomethane systems.
In this study, we implemented a techno-economic process model to assess two alternative options for the valorization of biomass carbon through the production of bSNG, biomethanol, and district heat. In a base case, we investigated the performance of an integrated biomass gasification-electrolysis-biomethanation (IBGEB) system in which low-pressure syngas conditioning is implemented via water-methanol scrubbing. In an alternative case, we assessed the performance of the same IBGEB process where the carbon stream left unconverted by the process is utilized in catalytic methanol synthesis.
The aim of the study was to verify whether carbon utilization for methanol synthesis can improve the techno-economic performance of an IBGEB process and lower the bSNG minimum selling price. In particular, we implemented a steady-state process model in Aspen® Plus, and for each process, we estimated (1) mass balances, (2) energy balances, and (3) biomethane minimum selling price under different economic scenarios.
2 Materials and methods
2.1 Process description
2.1.1 Standalone biomethanation
In standalone biomethanation (SAB), wet wood pellets are dried and converted to syngas in a 32-MWth dual-fluidized bed steam gasification plant, based on the size and configuration of the GoBiGas plant [30] (Fig. 1). Hot syngas is used to generate steam in a counter-current heat exchanger; it crosses a bag filter for the removal of particles and then transfers to the liquid scrubbing section (Fig. 2).
Particle-free syngas (SYNG-4) is cooled to 25 °C and compressed to 5 bar, before entering a water scrubber (W-SCRUB) for the reduction of NH3, H2S, and CO2 concentration. Rich water (SPWATER) is stripped with air for the removal of the absorbed compounds and is partly recycled to the scrubber, where it is mixed with make-up water. Pre-treated syngas (SYNG-6) passes through a condenser and enters a chilled methanol scrubber (MEOHSCR) for further removal of NH3, H2S, and CO2. Rich methanol is depressurized (H2SSTRIP) and regenerated in a distillation column (CO2STRIP). Regenerated methanol (MEOHREG) is recycled to the scrubber inlet and mixed with fresh solvent.
Downstream of the scrubbing section (Fig. 3), treated syngas is warmed to a thermophilic temperature of 60 °C (SYNG-11); it mixes with an additional hydrogen stream and enters a trickle-bed reactor for syngas bioconversion to biomethane. The produced biogas (BIOG-1), a wet mixture of CH4, CO2 and impurities, is dried in a condenser and is then compressed to 10 bar and cooled to 15 °C upstream of a pressure swing adsorption (PSA) unit for biogas purification. Purified bSNG (BIOMTN) is then injected into the gas grid at 70 bar through a multi-stage intercooled compressor (MSCOMP-1). The stoichiometric modulus (SM, Eq. (1)) represents the ratio between H2, CO, and CO2 required to achieve full stoichiometric carbon conversion in a biomethanation system [32].
However, in order to limit the size of the electrolysis plant required, in this study, an alkaline electrolyzer supplies additional hydrogen to satisfy only a H2:CO2 ratio of 4, thus leaving part of syngas carbon unconverted. The oxygen produced by the electrolysis plant is used for in-plant combustion of reject gases (CMBSTR-2, below).
Figure 4 and 5 display a representation of the energy recovery train. The mixture of reject gases (TAILS-0) is combusted at 920 °C and combustion heat is recovered by producing steam (STM-F-2) that transfers heat to the reboiler of the methanol regeneration column (heat stream Q-8, Fig. 2), is used to warm syngas (HX-9, Fig. 3), and finally mixes with other steam lines destined to district heat provision (not displayed). The off-gases from the reject gas combustor (CMBSTR-2) and from the char combustion bed (CMBSTR-1) are cooled to 220 °C while transferring heat to a 50-bar steam line (STM-B-1, Fig. 5), which is subsequently expanded in a series of two turbines, first through a 35-bar pressure decrease, and then to a final pressure of 3 bar. The cooled off-gases at 220 °C (FLUE-6) enter the biomass dryer before being ejected to the atmosphere. Further heat is recovered from the low-temperature steam exiting the turbine cycle (STM-B-6) and transferred first to incoming steam (through HX-3) and secondly to the biomass dryer.
2.1.2 Integrated biomethanol-biomethane
In addition to the gasification, syngas conditioning, and biomethanation sections described above, in the integrated biomethanol-biomethane (IBB) process, the unconverted carbon stream rejected in biogas purification is exploited in catalytic biomethanol synthesis (Fig. 7) on a Cu/ZnO/Al2O3 catalyst [21]. Tail-gases from PSA biogas treatment are combusted (CMBSTR-3) to heat a steam line (STM-I) that supplies heat to the methanol distillation train and is then sent to district heat provision (not displayed). A mix of plant reject gases is combusted in a second combustor (CMBSTR-2) (Fig. 6), to produce another 50-bar steam line (STM-F) for expansion in the turbine cycle. A third steam line is produced by cooling the off-gases from the reject gas combustor and the char combustion bed. The oxidized off-gases from PSA tail gas combustion (CU-1) transfer to the methanol synthesis section and mix with additional hydrogen from the electrolysis plant. The feed mixture is cooled and compressed to the reaction pressure (50 bar) in a multi-stage compressor. The reaction heat generated by CO2 hydrogenation is used to pre-heat STM-I, while further cooling of the reaction products transfers heat to a further steam line (STM-J) for use in the biomethanation section.
The reaction products are cooled to 10 °C and separated in a first flash drum. The liquid phase obtained is cooled and expanded in a second flash drum (10 °C, 1.2 bar). The gas-phase streams (MEOH-G-1, MEOH-G-2) are sent to combustion for energy recovery. Raw methanol (MEOH-4) is purified in a three-step distillation train, with intermediate flash gas separation and condensation units to achieve a > 99% purity in the top product of the third column. The columns reboilers exchange heat with the hot steam line STM-I, while heat is recovered from the largest wastewater stream (MEOH-5).
2.2 Process modeling methods
All physical, chemical, and thermal process modeling was carried out in Aspen® Plus v.10, while the evaluation of economic scenarios for the two processes was carried out in Excel®. The following sections provide details on the modeling methods.
2.2.1 Biomass steam gasification
In the simulation of complex integrated flowsheets, biomass steam gasification has frequently been modeled by separating the pyrolysis-gasification process and the char combustion process. Under this approach, a mass and heat balance is calculated around the pyrolysis-gasification zone, the unconverted char is transferred to the combustion zone, and char combustion heat is set equivalent to the enthalpy requirements of the pyrolysis-gasification process, allowing for a fraction of heat loss [33, 34]. Some authors have simulated the pyrolysis-gasification process (gasification bed) as a single-step gas formation process, either by using experimental data to reconcile a thermodynamic model [35, 36] or by directly implementing empirical correlations [37]. Another approach consists in subdividing the gasification bed into a biomass decomposition step and a gas formation step [10]. The DFB steam gasification process in this study was modeled according to a three-step methodology that simulates biomass decomposition, permanent gas and tar formation and char combustion. A constant biomass composition is adopted according to the experimental data reported by Alamia et al. [34]. Biomass enthalpy is estimated through the HCJ1Boje method and biomass density through the DCOALIGT method [38] that can be applied to non-conventional solid streams in Aspen Plus and RK-Aspen was selected as the thermodynamic property method used in the gasification section [37, 38]. Biomass moisture content is represented as a separate H2O stream in the mixed composition of biomass, to enable vapor-liquid flash calculations (Aspen Flash2) in the drying process. Two RYield units are used in Aspen Plus to first decompose biomass into H2, CO, CO2, CH4, and C (DECOMP), according to its elemental composition, and secondly to yield the gas composition reported for the GoBiGas plant [30] (GASFR). Tar compounds were restricted to four species representing one tar class each (phenol, class 2; toluene, class 3; naphthalene, class 4; coronene, class 5). Their relative concentration and yield was adapted from Zhang and Pang [39]. The concentration of H2S was estimated from the mass yield reported for the GoBiGas plant [34]; NH3 concentration was estimated from N elemental balance assuming 100% conversion to NH3, while the Cl biomass concentration applied (0.006%) was considered sufficiently small to neglect any HCl formation in this study. Char production corresponded to a mass rate of 0.186 kgchar/kgDB [34] and its composition was modeled as pure C (CISOLID class in Aspen Plus). Char produced in the gasification bed is separated from the products of biomass decomposition (DECOMP) with a Sep block and it is fully combusted in air at 850 °C (CMBSTR-1, RGibbs), according to a restricted thermodynamic equilibrium approach in RGibbs, where only CO2, O2, and C were set as possible products.
The model described allowed reaching a deviation of 1% on C atomic balance across the gasifier. Gas moisture content was then estimated by closing the H balance.
In a DFB gasifier, the combustion heat generated in the char bed (CMBSTR-1, Fig. 1) is transferred to the gasification bed through a solid heat transfer medium [40]. Char combustion heat (Q-4) can thus be considered equal to the enthalpy requirements of the gasification bed, while accounting for heat losses (Eq. (2)), according to a DFB concept [34, 35, 37].
In this model, the enthalpy balance around the gasification bed was calculated in Aspen Plus as the algebraic sum (heat stream Q-3) of the enthalpy balances of the biomass decomposition (DECOMP, heat stream Q-1) and permanent gas formation (GASFR, heat stream Q-2) at isothermal conditions (850 °C, 1 atm). Char combustion was also calculated at isothermal conditions (920 °C, 1 atm, heat stream Q-4). The difference between heat streams Q-4 and Q-3 can be assumed to cover heat losses and is not articulated any further in this study. The DFB heat balance could thus be defined as in Eq. (3).
2.2.2 Syngas conditioning and solvents regeneration
At the gasifier outlet, syngas is cooled below 200 °C while bringing gasification steam to a temperature setpoint of 350 ° C in HX-1. Subsequently, a bag filter with a 100% particle removal efficiency is simulated through a simple pressure reduction device (Valve). The water scrubber is simulated as a single-stage adiabatic flash (W-SCRUB, Flash2), while the methanol scrubbing section is modeled through a simplified adaptation of the Rectisol® process for syngas treatment [41]. The scrubbing tower is simulated by an adiabatic absorber (MEOHSCR, RadFrac) with five equilibrium stages and a chilled methanol (− 60 ° C) inflow rate of 2 kg/s (solvent-to-feed rate of approximately 1.25 kgMeOH/kgsyngas). Stripping of rich water takes place in a single-stage adiabatic flash column (W-STRIP, Flash2). Methanol is first depressurized in a single-stage flash drum (H2SSTRIP, Flash2) at near-ambient conditions and it is then regenerated in a 10-stage distillation column (CO2STRIP, RadFrac) without condenser. The regenerated methanol stream leaves the column reboiler as a liquid at boiling point. Methanol cooling is represented through a heater block (− 60 °C) on the incoming lean methanol stream that enters MEOHSCR. Table 1 provides a summary of the specified operating conditions for the vapor-liquid equilibrium units. All separation processes within the syngas conditioning and solvents regeneration section are simulated through vapor-liquid equilibrium (VLE) [42] according to the ELECNRTL model state equation, as recommended for acid gas absorption [43] and as previously used in the simulation of syngas scrubbing [37, 44].
2.2.3 Biomethanation and bSNG grid injection
Biomethanation of syngas takes place in a trickle-bed bioreactor, a reactor configuration that has been demonstrated to achieve high H2 conversion on the lab scale and shows potential for scale-up [28]. The biomethanation process is simulated through a stoichiometric reactor (BIOREACT, RStoich), where syngas is converted to biogas according to Reaction 1 and Reaction 2, at a 95% once-through conversion efficiency on hydrogen and carbon monoxide, respectively, according to the performance of trickle-bed reactors reported by Asimakopoulos et al. [28].
Reaction 1
Reaction 2
Liquid recirculation to the reactor is simulated through a pump, while nutrient provision modeling is not part of this study, although in a typical trickle-bed reactor, the microbial community is fed with a solution containing nitrogen, phosphorus, potassium, other minor nutrients, and pH buffer salts [22, 23, 28, 45, 46].
The biogas mixture at the bioreactor outlet is purified by means of a pressure swing adsorption (PSA) unit, modeled as a simple separator (Sep) operating at 10 bar with specified constant separation efficiencies for the selected compounds reported in Table 2. The pure-stream side recovery rate of all other compounds was assumed to be zero. A pressure reduction valve (Valve) is used to depressurize the wasted stream to atmospheric pressure, according to a typical depressurization-wasting cycle in a PSA system.
Gas compression for grid injection of the purified stream is modeled through an inter-cooled multi-stage compressor (MComp) with three constant 18-bar pressure increase steps and a final 16-bar stage.
2.2.4 Catalytic methanol synthesis and purification
Although the CAMERE process can deliver higher carbon conversion rates [47], in this study, direct CO2 hydrogenation (reaction 3) is selected in order to minimize additional process complexity.
Reaction 3
The efficiency of direct CO2 hydrogenation is limited by low per-pass conversion rates [48]; therefore, configurations with multiple reactors in series (cascade) or intensive recycle loops are required in order to improve the overall carbon conversion rates achieved [21, 49, 50]. Direct CO2 hydrogenation processes have been previously been modeled through kinetic models with multi-step recycle loops [51,52,53]. In this study, a simplified representation of methanol synthesis is obtained as follows. A cascade system with internal recycle is simulated through a single isothermal reactor (MEOHSYN, RStoich, Table 3). A global CO2 conversion rate of 65% is applied to the reactor boundaries, according to the overall CO2 conversion estimated by Moioli et al. [21] for a cascade configuration with optimal energy storage efficiency. Unit processes internal to the cascade configuration and recycle loops are not articulated further in this study. Table 3 provides a summary of the operating specifications applied to the simulation of methanol synthesis. The RK-Soave thermodynamic property method was used to simulate methanol synthesis and purification [51, 53, 54].
Methanol purification is carried out via the three-step distillation process previously described (Fig. 7) and simulated by three RadFrac blocks, with specified top-stage pressures and bottoms-to-feed molar ratios (Table 4). The operating conditions of the intermediate vapor-liquid flash separation and heat exchange equipment are detailed in Table 3.
2.2.5 Alkaline electrolysis
Alkaline electrolysis has recently seen wide application in PtG projects [25] as well as the development of the first 10-MW plant worldwide in Japan [55, 56]. Due to its mature technological development and to its durability and cost-competitiveness [57,58,59], alkaline electrolysis was selected as the power-to-hydrogen technology in this study. A constant efficiency of 4.4 kWh per Nm3 of H2 output [59] was assumed and total hydrogen flow rate was calculated by a calculator block in Aspen Plus to satisfy a stoichiometric flow for Reaction 1 and Reaction 3.
2.2.6 Energy recovery via combined cycle
Combustion of the mixed gases takes place in an isothermal combustor (COMBSTR-2, RStoich) to generate steam as previously described. The first steam turbine decreases the steam pressure by 35 bar while the second turbine has a specified outlet pressure of 3 bar. The resultant low-pressure steam is used to pre-heat water and supply heat to the dryer, by lowering steam enthalpy (heater blocks) by an amount equivalent to the heat duty required in each unit process attached, while avoiding temperature crossovers. Heat transfer between these units is simulated via heater blocks and heat exchangers’ feasibility is not articulated further. The two low-temperature steam lines are finally combined and are available for further low-temperature heat provision in a district heating system. The available heat to be exploited in district heating is estimated by cooling steam to 20 °C in a heater block (HX-DH).
2.2.7 Efficiency indicators
Thermal efficiency considers the fraction of biomass LHV stored as fuel LHV or exportable heat, neglecting the additional work inputs (Eq. (4)).
Plant efficiency (Eq (5)) considers the total LHV stored in fuels and exportable heat in relation to the total energy input into the plant, inclusive of biomass LHV and work.
Additional information on turbomachinery efficiency, heat exchangers, and utilities usage is reported in Supplementary Material.
2.3 Economic assessment
2.3.1 Capital and operating costs
Purchased equipment costs were estimated through a factorial method by using base equipment sizes, base costs, and exponential factors retrieved from the literature (Table 5). The total heat transfer area required by the heat exchangers network in the plant was estimated through a preliminary exchanger sizing automatically estimated by the Aspen Economic Analyzer. All other equipment sizes in Table 5 could be retrieved from the plant mass and energy balance. Indirect capital costs were also estimated through the factors on direct costs indicated by Albrecht et al. [64] (Supplementary Material) and the total capital investment (TCI) was estimated according to Eq. (7).
C, actual cost; C0, base cost; S, actual plant size; S0, base plant size; f, exponential factor.
TCI, total capital investment; FCI, fixed capital investment; WC, working capital; PEC, purchased equipment cost; DC, direct capital cost; IC, indirect capital cost; AE, additional expenses.
Direct operating costs were calculated from the mass and energy balances obtained from the process model applying the cost rates in Table 6, while labor and indirect operating costs were estimated following the factors indicated by Albrecht et al. [64]. In particular, it was assumed that the electrolyzer works constantly at full load and that the plant operator can obtain a long-term contract in the wholesale electricity market for a fixed rate of 35 €/MWh on power-to-gas electricity.
2.3.2 Minimum selling price estimation
The minimum selling price of biomethane is defined as the biomethane price that makes the project net present value (NPV) equal to zero at a given internal rate of return (IRR), according to Eq. (8).
By annualizing the repayment of total capital cost through an annualized capital cost term (ACC) (Eq. (9)) [65], yearly cash flow can be defined as in Eq. (10) and bSNG MSP can be calculated as in Eq. (11), applying the parameters reported in Table 7.
Consequently, the difference between bSNG MSP and a base market price for a common alternative energy commodity, such as natural gas, can be estimated as in Eq. (12). Such price gap corresponds to the cost of achieving grid gas renewability through biomass-to-biomethane technologies.
2.3.3 Sensitivity analysis on major direct OPEX assumptions
It was previously demonstrated that biomass and surplus electricity cost have a strong impact on the MSP of bSNG-produced biomass-to-biomethane processes [10, 11]. Consequently, these OPEX sources, as well as the selling price of biomethanol as a side product in IBB, are expected to show an important impact on bSNG price gap (Eq. (12)). Therefore, the effect of their variation from the base-case values used in the main process simulations needs to be assessed. For these reasons, a two-parameter sensitivity analysis was carried out on bSNG price gap, by assessing the variation of surplus (PtG) electricity cost and biomass cost for the SAB process, and the variation of PtG electricity cost and biomethanol selling price for the IBB process at a base-case biomass cost of 100 €/tdry (Table 8). An average market price of 0.03 €/kWh for grid natural gas was employed in the renewability cost estimation, based on EU28 statistics [70].
3 Results
3.1 Process mass and energy balance
Table 9 and Table 10 report a summary of selected process streams for the SAB and IBB processes, respectively.
As shown in Table 11, the standalone biomethane (SAB) process can produce 37,978 Nm3/day of grid-injected biomethane, with a volumetric yield on biomass of 0.24 Nm3BM/kgDB and a corresponding plant efficiency of 47% on biomass thermal input (Table 12). The SAB process delivers 6.3 MW of district heat available at 100 °C (Fig. 8). In addition to the same biomethane output, the integrated biomethane-biomethanol (IBB) process can produce 10 t/day of biomethanol with a 99% purity at a mass yield of 0.09 kgMEOH/kgDB. As a result of heat integration, the IBB process also delivers 11.9 MW of district heat (Fig. 9).
Table 11 also displays the biomass-to-fuel (B-t-F) and syngas-to-fuel (S-t-F) carbon efficiency of the two alternatives, indicating that IBB brings substantial advantages in terms of carbon efficiency, storing an additional carbon stream equivalent to 7281 t/y of CO2 as pure methanol. Consequently, the global B-t-F efficiency of the IBB process is 27% higher than in SAB, demonstrating that despite the increase in plant size and complexity, bSNG production with carbon utilization could play an important role as a carbon management strategy. Equally, S-t-F efficiency is higher in IBB (42%) than in SAB (33%). The greatest carbon loss in SAB is related to the absence of CO2 utilization and the complete rejection of off gases. The IBB scenario still presents major losses other than flue gases from combustion. These include especially rejected carbon streams in methanol purification, such as wastewater, with an overall methanol recovery of 82% across the distillation train.
The estimated biomethanol yield on CO2 is 0.47 kgMeOH/kgCO2 upstream of distillation and 0.31 kgMeOH/kgCO2 considering pure product output, which is similar to the yield estimated by Crivellari et al. [52] (0.36 kgMeOH/kgCO2) in the thermoeconomic modeling of methanol production from surplus wind energy. The estimated yield, however, is lower than reported in most previous studies on direct CO2 hydrogenation to methanol, probably due to the absence of intensive recycling loops in study, where combustion of unconverted gases is preferred over complex recycling infrastructure. In particular, the estimated yield is 53% lower than estimated by Van-Dal and Bouallou [51] and by Alsayegh [71] (0.67 kgMeOH/kgCO2) for a direct CO2 hydrogenation process through a kinetic model in Aspen Plus. Pérez-Fortes et al. [72] estimated a 0.68 kgMeOH/kgCO2 from an adaptation of the same process, while Anicic et al. [47] estimated a 0.65 kgMeOH/kgCO2 yield for a CO2-to-methanol process modeled with two reactors in series and gas recycle at a constant single-pass conversion efficiency of 21%.
Figure 8 and 9 display a summary of the main energy streams in the two processes, indicating that the plant thermal efficiency in the IBB option is 26% higher than in SAB (82.9 vs. 66.1%) (Table 12). However, the global plant efficiencies are practically similar (50.6% and 51.7%), indicating that the additional energy stream required by intensive hydrogen supply in IBB is stored at a comparable rate with the SAB process, although a larger share of total energy input is recovered as lower-quality district heat in IBB, rather than as storable fuel. Only 24.9% and 5.8% of total energy input is stored as methane and methanol, respectively, in the IBB process. This indicates that the lower hydrogen conversion efficiency in methanol synthesis, compared with methane biosynthesis, limits the overall efficiency of the integrated process from an energy efficiency point of view. However, a sole energetic evaluation of the two systems does not highlight the benefits of producing methanol as a chemical feedstock for local supply chains and a chemical exergy assessment would provide more representative comparisons. The net exportable thermal energy stream generated by both plants is district heat available at 100 °C (6.3 and 11.9 MW for SAB and IBB, respectively). The combined steam cycle also yields 0.98 MW and 1.28 MW of electricity, which serves for parasitic consumption in both scenarios.
The two processes require no direct thermal inputs other than biomass, while electrical consumption is largely dominated by electrolysis in both cases (90% in SAB and 91% in IBB), as a result of the absence of any WGS unit. The resulting specific energy input for bSNG is 7.65 kWh/Nm3bSNG for SAB, compared to 2.3 kWh/Nm3bSNG for an IBGEB process with WGS [11]. This indicates that entirely avoiding catalytic WGS largely increases electrolytic hydrogen demand and consequently the specific energy demand of the renewable biomethane produced. Neglecting electrolysis, however, the specific work input in this study is 0.73 kWh/Nm3bSNG, compared to approximately 2 kWh/Nm3bSNG in our previous study [11] and approximately 1.5 kWh/Nm3bSNG for an integrated gasification-biomethanation process without electrolysis [10]. The specific energy input for the IBB process is 17 kWh/Nm3, although this includes the production of methanol. Gas compression includes bSNG injection into the grid (70 bar) and raising of gas pressure to 50 bar in methanol synthesis (IBB only), but it only accounts for 5.3% of total electrical consumption in SAB and 6% in IBB. Compression energy requirements in the SAB process amount to 0.41 kWh/Nm3bSNG and compare to 0.98 kWh/Nm3bSNG estimated in our previous assessment of a biomass-to-biomethane process including catalytic WGS at 15 bar (a) [11]. Such results suggest that using low-pressure syngas conditioning processes to increase the syngas stoichiometric modulus by extracting CO2 is more beneficial than hydrogen-generating reforming processes run at higher pressures, when considering specific energy consumption before electrolysis, and they deliver a syngas quality compatible with biomethanation [73]. Therefore, low-pressure liquid scrubbing is an energetically favorable alternative to catalytic syngas conditioning in IGBEB processes, when large quantities of surplus renewable electricity are available and surplus high-temperature heat is unavailable.
3.2 Process economics
Table 13 displays a summary of project economic indicators for each process configuration, including purchased equipment cost (PEC), total capital investment (TCI), direct yearly operating cost (D-OPEX), and total yearly operating cost (T-OPEX).
Figure 10 displays the breakdown of purchased equipment costs (PEC) for the two processes, indicating that large-scale electrolysis dominates the investment costs for the IBB process (37%), while it is the second PEC contributor (23%) in SAB, after gasification (39%). The size of the electrolysis plant in the SAB process is 11 MW, which is comparable with the size of the currently largest alkaline electrolysis (AE) plant worldwide [55, 56], suggesting that the operation of a similar system would be possible at the present technological readiness of AE. The electrolysis throughput required in the IBB process, instead, is approximately 24 MW, which would still represent a very large size plant, with limited feasibility. The next most capital-intensive plant section is biomethanation in both processes, while biomethanol synthesis and purification only contribute to 4% of PEC in the IBB process, indicating that the greatest CAPEX barrier of a process with carbon utilization is represented by large-scale electrolysis.
Figure 11 displays the breakdown of direct operating costs for the two processes. Biomass represents the greatest cost share in SAB (58%) and the second largest contributor (36%) in IBB, while PtG electricity is the largest OPEX component in IBB (48%) and the second largest component in SAB (34%). This highlights how the cost of electricity and biomass are the fundamental bottlenecks to the feasibility of IBGEB processes, as we previously demonstrated [11]. The role attributed to electrolysis is in line with various studies that recently identified it as the main CAPEX and OPEX contributor in similar process concepts, comprising CO2-to-methane [74, 75], CO2-to-methanol [76, 77], and CO2-to-DME [78], although the same pattern has also been recognized across all the electrofuels mentioned and for electro-diesel and electro-gasoline [79].
3.3 Minimum selling price variation
As displayed by Table 14, the SAB process can produce biomethane at a MSP of 2.38 €/Nm3, which is 11% lower than we previously estimated for a gasification-electrolysis-biomethanation process with catalytic water-gas shift [11] at an IRR of 7% (10% in this study), and approximately 170% higher than estimated by Michailos et al. [10] for a process without electrolysis. The lower MSP is made possible by a yearly side revenue of 3.9 M€ earned from district heat exports. However, despite having a positive effect on compression energy consumption, as described above, the absence of WGS needs compensation by means of high hydrogen flow rates and has thus a strong impact on MSP.
By selling renewable biomethanol to generate a further side revenue stream, the IBB process can deliver a biomethane MSP of 3.28 €/Nm3, which corresponds to a 38% increase over the standalone process (SAB), indicating that the additional capital and operating costs generated by catalytic methanol synthesis and large-scale (24 MW) electrolysis outweigh the additional revenue earned at the current methanol selling price (275 €/t). It is possible to hypothesize that in future energy markets, a credit will be paid on any marginal renewable carbon that can be converted to fuel and stored in the short term, as is assumed in the two scenarios IBB(CC(25)) and IBB(CC(50)) in Table 14. However, the variation in bSNG selling price is negligible (− 1%) even in the presence of carbon credits on the renewable carbon stored as methanol, paid at a price equivalent to 25 €/tCO2 (IBB(CC25), which is close to the trading average in the European Emission Trading Scheme (ETS) [80]. The linear effect of carbon price on bSNG MSP is very limited (slope, 0.04 c€ ∙ tCO2/Nm3/€), and even at a carbon price of 50 €/tCO2 (IBB(CC50)), the MSP only decreases by approximately 1% (3.26 €/Nm3). In fact, the theoretical carbon credit prices that would generate an MSP equal to the natural gas consumer price in Europe (0.5 €/Nm3, Table 15), or the MSP of bSNG in the SAB process (2.38 €/Nm3), were calculated at extreme rates of 5297 €/tCO2 and 1718 €/tCO2, respectively, under the conditions considered. This demonstrates that, for the process analyzed, carbon utilization requires substantially larger CO2 flows in order to have any meaningful impacts on process economics. As a result of the process economic indicators estimated, the MSP of standalone bSNG (SAB) is still 230% higher than the subsidized price of biomethane from anaerobic digestion of waste in Italy, granted by the application of the EU Renewable Energy Directive (RED 2009/28/EC) (Table 15).
3.4 Price gap of bSGN in biomass-to-biomethane processes
Figure 12 and 13 display the results of a sensitivity analysis on the cost of grid gas renewability by showing the monetary value of the government subsidy that would be required to match the bSNG price gap under parameter variation.
As expected from the breakdown of direct OPEX, the price gap is largely influenced by the variation in surplus energy cost and biomass cost (Fig. 12). The highest Cbiom (200 €/tdry, + 100% on base case) and the highest CPtG (0.11 €/kWh, + 200% on base case) generate a 44% increase in MSP. However, in the case of zero-cost biomass, as in the hypothesis of waste lignocellulosic biomass, and zero-cost surplus energy, under the hypothesis of an energy system with a very high electrification level, the required subsidy would be 0.13 €/kWhbSNG, which is 550% higher than the current market price gap of both biomethane from AD (approximately 0.04 €/kWh). This indicates that subsidizing biomass-to-biomethane plants through the existing decarbonization financial support would be insufficient under any currently plausible techno-economic assumptions. The strategic nature of decentralized bSNG production along with its energy storage role would need to be factored into local energy policies to support biomass-to-biomethane developments through higher fiscal incentives in the future. The price gap achievable through integrated carbon utilization and biomethanol synthesis (IBB, Fig. 13) is higher than in SAB, although it is little influenced by biomethanol selling prices, demonstrating that the feasibility of such integrated biomethane-biomethanol process is ultimately cost-constrained, due to the CAPEX and OPEX intensity of electrolytic hydrogen. In fact, only a 38% increase in bSNG MSP is observed for PbMeOH = 0 (− 100%) when CPtG = 0.11 €/kWh (+ 200%). Consequently, the bSNG price gap under the best-case assumptions for the cost of energy (CPtG = 0 (− 100% on base case)) and for the price of biomethanol (PbMeOH = 500 €/t (+ 100% on base case)) is 0.25 €/kWhbSNG. This indicates that, compared to SAB, carbon utilization for methanol synthesis would require an even larger fiscal support to reach financial competitiveness. Therefore, greater subsidization would be required in an IBB scenario, where a premium price would be needed in order sustain the role of biomethanol in enabling the development of localized biochemical value chains.
3.5 Plant size competitiveness
The supply-side competitiveness of the biorenewable commodities considered (bSNG and bMeOH) is also affected by the production capacities achievable by the two processes in comparison with existing commercial processes in Europe (Table 16). Both processes analyzed can deliver approximately three times the bSNG capacity of a typical anaerobic digestion plant currently in operation or under construction in Europe (500 Nm3/h). The IBB process can deliver additional 11 t bMeOH/day, equivalent to the production capacity of the George Olah pilot plant, which corresponds to approximately 0.2% of the capacity of an average European plant producing methanol from natural gas. With its current output, the George Olah plant is expected to satisfy approximately about 2.5% of the total gasoline market in Iceland [86], indicating that this scale would be appropriate for the supply of renewable methanol as fuel or as chemical feedstock in decentralized supply chains.
4 Conclusions
In this study, we carried out the techno-economic modeling of two processes comprising integrated biomass gasification, electrolysis, and syngas biomethanation (IBGEB) with combined heat and power recovery. The first process operates standalone biomethanation of syngas with the aid of water electrolysis and can produce approximately 38,000 Nm3 of bSNG per day, with a total plant efficiency of 50.6%. The second process (integrated biomethane-biomethanol, IBB) exploits the unconverted carbon stream from the biomethanation process to recover energy and synthesize methanol via direct catalytic CO2 hydrogenation. In addition to the same bSNG output, the IBB process can produce 11 t/day of biomethanol, at a 99% purity. The selection of low-pressure liquid scrubbing processes in syngas conditioning upstream of biomethanation brings energy efficiency benefits compared to a catalytic WGS train, delivering a 64% decrease in specific energy consumption per bSNG unit volume, if electrolysis is neglected. The MSP of bSNG in the SAB process is 2.38 €/Nm3, which is more than three times the magnitude of the subsidized price currently paid to biomethane from anaerobic digestion under the RED in Italy. The integrated production of biomethanol shows little global energy efficiency gains in comparison with SAB (51.7%) due to the large increase in electrolytic hydrogen demand, but it shows a substantial improvement of biomass-to-fuel carbon efficiency (33 vs. 26%). The integration of biomethanol production into the process generates high additional capital and operating costs, mainly due to the large additional electrolysis size required. As a result, the IBB process brings an increase in bSNG MSP of 76%, even with carbon credits on the additional carbon stored as fuel and does not improve bSNG feasibility in the absence of very intensive subsidization. The levels of subsidization required for the two processes exceed 0.13 €/kWhbSNG for SAB and 0.25 €/kWhbSNG for IBB under the most optimistic OPEX assumptions and suggest that government support for the strategic nature of these biorenewable commodities would be needed to complement existing decarbonization financial incentives. Despite its limited economic competitiveness, the IBB process would be competitive with existing renewable gas production plants, in terms of bSNG production capacity and could be adequate in supplying methanol to a decentralized biorenewable supply chain.
Change history
03 February 2021
Funding note should be: Open access funding provided by Libera Università di Bolzano within the CRUI-CARE Agreement (and not Open access funding provided by Libera Università di Bolzano).
Abbreviations
- AD:
-
Anaerobic digestion
- bSNG:
-
Bio-derived substitute natural gas
- bMeOH:
-
Biomethanol
- CHP:
-
Combined heat and power
- C decarb :
-
Cost of grid gas decarbonization (€/kWh)
- daf:
-
Dry and ash free biomass
- IBB:
-
Integrated biomethane-biomethanol
- IBGEB:
-
Integrated biomass gasification-electrolysis-biomethanation
- IBGM:
-
Integrated biomass gasification-methanol synthesis
- LHV prod, i :
-
Lower heating value of product i (MJ/kg)
- LHV biom :
-
Lower heating value of biomass (MJ/kg)
- \( {\dot{m}}_{prod,i} \) :
-
Mass flow rate of product i (kg/s)
- Q i :
-
Heat stream i (MWth)
- W i :
-
Work stream i (MWel)
- \( {\dot{n}}_{CO2,r.g.} \) :
-
Molar flow rate of carbon dioxide in selected reject gases (mol/s)
- \( {\dot{n}}_{CO2, syng} \) :
-
Molar flow rate of carbon dioxide in treated syngas (mol/s)
- \( {\dot{n}}_{H2,r.g.} \) :
-
Molar flow rate of hydrogen in selected reject gases (mol/s)
- \( {\dot{n}}_{H2, elec, MeOH} \) :
-
Molar flow rate of hydrogen produced by the electrolysis unit (mol/s) for methanol synthesis
- \( {\dot{n}}_{H2, elec, BM} \) :
-
Molar flow rate of hydrogen produced by the electrolysis unit (mol/s) for biomethanation
- \( {\dot{v}}_{BM} \) :
-
Normal volume flow rate of biomethane
- P natgas :
-
Average market price of conventional natural gas (€/kWh)
- PtG:
-
Power-to-gas
- PtM:
-
Power-to-methanol
- Q GB :
-
Enthalpy difference in the gasification bed
- Q CB :
-
Enthalpy difference in the char combustion bed
- Q loss :
-
Heat losses to the surroundings
- S-t-F:
-
Syngas-to-fuel
- SAB:
-
Standalone biomethanation
- SM:
-
Stoichiometric modulus
- T DH :
-
District heat stream temperature
- WGS:
-
Water-gas shift
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Menin, L., Benedetti, V., Patuzzi, F. et al. Techno-economic modeling of an integrated biomethane-biomethanol production process via biomass gasification, electrolysis, biomethanation, and catalytic methanol synthesis. Biomass Conv. Bioref. 13, 977–998 (2023). https://doi.org/10.1007/s13399-020-01178-y
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DOI: https://doi.org/10.1007/s13399-020-01178-y