Open Access Article
Cristina
Antonini
a,
Karin
Treyer
b,
Emanuele
Moioli
c,
Christian
Bauer
b,
Tilman J.
Schildhauer
c and
Marco
Mazzotti
*a
aInstitute of Energy and Process Engineering, ETH Zurich, Zurich 8092, Switzerland. E-mail: marco.mazzotti@ipe.mavt.ethz.ch
bLaboratory for Energy and System Analysis, Paul Scherrer Institute, 5232 Villigen PSI, Switzerland
cLaboratory of Catalysis for Bioenergy, Thermo-Chemical Processes Group, Paul Scherrer Institute, 5232 Villigen PSI, Switzerland
First published on 30th March 2021
The use of biomass as a resource for hydrogen production can contribute to the transition towards carbon neutral or carbon negative energy systems. This paper offers a comprehensive investigation of the technical performance and life cycle environmental footprint of three gasification technologies for H2 production, using dry biomass (wood) as input. These are compared with H2 production from reforming of natural gas or biomethane and electrolysis as presented in our previous work. This is followed by an evaluation of the use of H2 as fuel for passenger cars and trucks. The quantity of biomass required for the production of 1 MW H2 is calculated with an integrated process simulation approach on the basis of Aspen Plus simulations and real-plant literature data. We observe that all the technologies analysed provide negative CO2 emissions when coupled with CCS. However, the sorption enhanced reforming and the entrained flow gasifiers are more suited to this scope than the heat pipe reformer, because higher overall CO2 capture rates can be achieved. As CO2 is from biogenic sources, the life cycle carbon footprint of the produced H2 is only slightly positive (without CCS) or negative (with CCS). This negative carbon footprint is not obtained at the cost of important trade-offs with regards to ecosystem quality, human health or resource depletion, with the exception of high forest land use. Fuel cell electric vehicles using hydrogen from biomass (both wood and biomethane) with CCS as fuel turn out to be the most climate friendly among all options, with even possible negative total greenhouse gas emissions. However, limited biomass resources and potential alternative uses need to be considered.
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| Fig. 1 Schematic representation of all hydrogen production pathways modelled and analysed in this work. | ||
The process analysis provides the main indicators required for the integrated techno-environmental modelling framework, which directly connects mass and energy flows from the process simulation with the Life Cycle Inventories (LCI). This integrated approach allows for the quantification of the environmental performance of many different cases based on consistent and physically sound data. The comparative evaluation of hydrogen use in fuel cell electric vehicles (FCEV) and the comparison with other vehicle fuels and drivetrains builds upon recent work of some of the authors, which is particularly valuable for its transparency and completeness.19,20
| Name | Design | Gasification agent | Heating |
|---|---|---|---|
| HPR | Fluidized bed | Steam | Indirect (air) |
| oxySER | Fluidized bed | Steam | Indirect (O2) |
| EF | Entrained flow | Oxygen | Direct |
| CaO + CO2 ⇌ CaCO3 | (1) |
The removal of CO2 shifts the equilibrium of the WGS reaction towards the products, therefore the volumetric content of H2 in the syngas is very high (ca. 70%). The char produced during the gasification process is transported with the bed material from the gasifier to the combustion reactor where it is combusted with oxygen. A CO2-rich stream is collected at the outlet of the combustion reactor and then dehydrated and compressed to be suitable for geological storage. To control the temperature in the combustion chamber, part of the CO2 is recirculated back in the combustor. The O2 needed in the combustion process is produced by an air separation unit (ASU). As for H2 production from a HPR gasifier, the product gas has to be cleaned and desulphurized, where the same cleaning procedure and downstream train as for the HPR production chain are considered. Fig. 3b shows a schematic representation of the hydrogen production chain with the oxySER gasifier; a detailed process scheme is available in the Appendix (see Fig. 13).
The product gas is treated in a gas cleaning section; first, it is cooled down to 873 K before the cyclone, where solids particles are separated from the gas. Then, the gaseous stream is further cooled down at 573 K before entering the candle filter. Because of the elevated temperature reached in the gasifier, the product gas contains neither tar nor methane hence tar catalytic reforming and steam reforming are not required. Therefore, after the candle filter, the gaseous stream is sent to the desulphurization unit. After the cleaning section, the hydrogen yield has to be increased, and because of the large amount of carbon monoxide present in the product gas, a water–gas shift section with two reactors, one at high and one at low temperature, is required. The shifted syngas can be sent to the CO2 capture plant or directly to the purification unit (see the schematic representation of the process in Fig. 3c). A detailed process scheme is available in the Appendix (see Fig. 14).
In all hydrogen production chains, process steam is co-produced by means of heat integration; some of it is used in the process, while the rest is expanded in a turbine section (information on power island are available in the ESI†). The electricity produced is used internally to run the various utilities, and in case of excess it is fed into the grid. Concerning the CO2 capture unit, an amine-based absorption process is considered, where the solvent used is methyl diethanolamine (MDEA). The CO2 capture rate selected is 98%.
![]() | (2) |
![]() | (3) |
| Parameter | Base case | Range of sensitivity |
|---|---|---|
| HPR | ||
| γ W [%] | 33 | ±2 pp |
| η G [%] | 70 | ±4 pp |
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||
| oxySER | ||
| γ C [%] | 63 | ±2 pp |
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||
| EF | ||
| γ dtp [%] | 5 | ±2.5 pp |
| ω dtp [kWel kgdBM−1] | 0.128 | ± 20% |
For the oxySER configurations we performed a sensitivity analysis on the percentage of carbon that is consumed in the combustion chamber (γC), defined as the molar ratio between the moles of carbon in the combustor flue gas ncFGC and those present in the biomass inlet stream (ndBMC):
![]() | (4) |
In the case of the EF gasifier, the section that is not modelled in detail is the biomass pre-treatment (comprising drying, torrefaction and pulverisation). Therefore, we performed a multi-parameter sensitivity analysis on two parameters: on the energy consumption of these processes (ωdtp) and on the amount of biomass lost during the pre-treatment (γdtp). The energy consumption is defined as the kW of electricity needed per kg of dry biomass processed:
![]() | (5) |
42 and 104044
43 compliant, attributional Life Cycle Assessment (LCA) of the production of 1 MJ H2via gasification of woody biomass at a pressure of 200 bar and a purity higher than 99.97% (SMR, HPR and oxySER) or higher than 99.9% (ATR and EF, with argon representing the additional impurity). Calculations are performed with the open-source software Brightway2
44 and the ecoinvent life cycle inventory database v3.6, system model “allocation, cut-off by classification”.45 All Jupyter notebooks and detailed Life Cycle Impact Assessment (LCIA) results are part of the ESI.† The system boundaries and allocation choices are illustrated in Fig. 4, and the geographical scope is Europe. The wood chips used as feedstock for gasification are a product from sustainable softwood and hardwood forestry of various species grown in Germany and Sweden (namely beech, birch, oak, pine and spruce), which represent the European market for wood chips in ecoinvent v3.6. It should be noted that the carbon uptake is assumed to be the same for all these species in ecoinvent. Other variabilities in terms of forestry in other European countries, transport distances, regional market compositions, or wood imports from overseas could not be modelled within the scope of this paper due to lack of information. All carbon content values are calculated on a dry matter basis. Carbon uptake by trees is accounted for with a characterisation factor of −1 for CO2, while release of biogenic CO2 is accounted for using a positive factor of 1 in order to be able to quantify impacts on climate change due to capturing and permanently storing biogenic CO2. Detailed discussion of the carbon balance of the biomethane chain and corresponding modeling choices are part of our previous work.1 Impacts on climate change of greenhouse gases are quantified according to the IPCC 2013 LCIA method with a 100 years Global Warming Potential timeframe2 as implemented in the ecoinvent database. The ILCD 2.0 (2018) LCIA method46 covering environmental impacts such as ecotoxicity, effects on the human health, ozone layer depletion or near-ground photochemical ozone creation, or metal depletion is further used, in addition to the non-renewable cumulative energy demand (CED) as a measure for depletion of fossil, nuclear and non-renewable forest resources. The inventories for the natural gas supply chain as well as all materials, infrastructure, or transports (i.e. the life cycle inventories of the so-called “background processes”) are taken from the ecoinvent database, while the biomethane chain, H2 production plant, and CO2 transport over 200 km per pipeline and storage in a saline aquifer at a depth of 800 m are all based on data from previous analyses of the authors or own project-specific data. Electricity use or electricity fed back to the grid in case of excess electricity is modelled with the European ENTSO-E mix as default option; however, we also perform sensitivity analysis and show the effect of varying the greenhouse gas intensity of electricity on climate change impacts of hydrogen production by extending a figure we already provided earlier;1 we now include wood gasification in addition (see Fig. 15).
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| Fig. 4 System boundaries chosen for the LCA of H2 production from natural gas (NG), biomethane, or wood as feedstock. The chain of the wet waste biomass down to the by-product biogas from treatment of the wet waste biomass in an anaerobic digestion plant is allocated to the food and agriculture sector. Extended from our previous work.1 | ||
Our analysis of the use of hydrogen is limited to its application as vehicle fuel. We build upon previous work performed by some of the authors19,20 and link the hydrogen production pathways modeled within this analysis and our previous work1 to vehicle (LCA) models established by Sacchi et al.19,20 to quantify life-cycle environmental burdens of passenger vehicles and trucks with different hydrogen supply options for FCEV compared to conventional gasoline and diesel vehicles as well as battery electric vehicles (BEV). Such modelling of the end use enables understanding the importance of differences in LCIA scores of the various H2 production pathways from an overall LCA perspective.
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| Fig. 5 Gasifiers product gas molar composition after the gas cleaning section; HPR and oxySER: base case product gas composition. | ||
The net efficiency of the HPR configurations ranges from 58 to 65%, and if a pre-combustion capture plant is added to the chain, the overall CO2 capture rate goes from 0 to ca. 60%. Focusing on the impact of the sensitivity analysis, we can say that the variation of γW affects both the net efficiency and the specific CO2 emissions. Indeed, the less wood goes to the combustor (γW smaller) the less CO2 is emitted per unit of hydrogen produced. This translates into higher efficiency and lower specific carbon emissions. The net efficiency is also affected by the variation of ηG; the more efficient the gasifier, the less wood is required per unit of H2 produced. Finally, the variation in the specific CO2 captured is due to the different product gas compositions tested (LB, BC and UB).
The net efficiency of the oxySER configurations without and with the addition of a CO2 capture plant (oxySER S and oxySER CCS, respectively), ranges from 60 to 82%. Unlike the HPR cases, the range of variability is remarkable and it is due to the uncertainty on both product gas composition and amount of carbon entering the combustor. The variation on the net efficiency from the base case composition to the lower/upper bound cases is around ±7 pp. Additionally, by varying γC by ±2 pp, the net efficiency in all three cases (BC, LB and UB) varies by ±4 pp. Based on these results we can conclude that the performance of the oxySER configurations strongly depends on the operating conditions of the gasifier (i.e. temperature and residence time). As already explained in Section 2.1, because of the oxy-fuel combustion, CO2 can be recovered at the outlet of the combustion reactor without the need of a dedicated capture unit. Therefore, if we dry, compress and store the CO2-rich stream produced by the combustor, we can reach a similar overall capture rate as the configuration with a HPR gasifier with pre-combustion capture (ca. 60%). Whereas by adding a pre-combustion capture plant (oxySER CCS) we can capture also the CO2 present in the syngas, reaching an overall CO2 capture rate of ca. 92%. The remaining CO2 is emitted in the flue gas resulting from the combustion of the PSA tail gas (see Fig. 3b). As shown in Fig. 6b, the variation of γC affects the amount of CO2 captured. However, its effect on the overall CO2 capture rate is larger for the oxySER S than for the oxySER CCS configuration, because while applying a dedicated pre-combustion capture unit the perturbation on γC only affects part of the total CO2 captured.
The highest overall CO2 capture rate is reached by the configuration with an EF gasifier with CCS (ca. 98%); concerning the net efficiency both EF and EF CCS cases perform slightly worse than the other configurations; indeed, they require more wood per unit of hydrogen produced. The net efficiency of the two EF configurations is affected by the sensitivity analysis on γdtp; the less dry mass is lost during the pre-treatment, the more efficient is the overall process. However, as shown by the gray area in Fig. 6a, the variation is limited.
In general, the addition of a CO2 capture plant results in an additional energy demand, proportional to the amount of CO2 captured; both electricity and heat are needed to run the CO2 capture plant and the dehydration and compression section. The oxySER CCS and EF CCS configurations are the most energy demanding. In the case of the oxySER, the variation on the electricity balance shown by the blue shaded area is mainly due to the variation on γC: the less carbon goes to the combustor, the less CO2-rich flue gas is produced and therefore less CO2 is dehydrated and compressed. Consequently, it results in a reduction of the energy demand.
Whereas for the EF and EF CCS, the variation in the net electricity balance is due to the uncertainty on the amount of biomass pre-treated (the bigger the dry mass lost due to pre-treatment, the more biomass has to be pre-treated per unit of hydrogen produced) and on the energy consumption of the different pre-treatment processes (ωdtp).
As shown in Fig. 7b, the electricity required to compress the hydrogen delivered by the PSA unit to 200 bar is more or less equal for all six cases. Focusing on the configuration with a HPR gasifier without CCS, we notice that the electricity balance is driven by the electricity required for syngas compression. If we add CCS, we can capture around 60% with an electricity consumption increase of around 65%. Regarding the oxySER configurations we also have to account for the electricity consumed by the air separation unit. The majority of the carbon (63 mol%) goes to the oxy-combustion chamber, and thus also in the configuration without CCS (oxySER S), the electricity required for CO2 compression is significant. By adding CCS we can increase the capture rate from 63 to 92% of the overall direct CO2 emissions, which corresponds to an increase on electricity consumption of about 20%.
The configurations with an EF gasifier instead require considerably less electricity to run the hydrogen production plant; indeed, the system is operated under pressure and no compression of the syngas before the purification section is needed. However, they require extra electricity for biomass pre-treatment, O2 compression and biomass feed pressurization. While adding CCS, because of the single-reactor configuration, an overall CO2 capture rate of about 98% can be obtained; nevertheless, the electricity consumption increases (it corresponds to ca. 153% of the case without CCS).
:
1.5 vs. 1
:
4). Excluding the oxySER upper bound cases, gas/biomethane production chains are performing better in terms of net efficiency and overall electricity balance; in fact, the amount of energy input to the production chain (both feedstock and external electricity from the grid) is considerably higher for the wood cases. However, in order to draw some final conclusions we have to look at the whole life cycle analysis of the different chains.
Fig. 9 shows the contribution of different life cycle phases to the overall impact on climate change per MJ of H2 produced. Further, it shows the overall CO2 capture rate at the hydrogen production plant. The feedstock supply of wood gasification processes, i.e. forestry and wood chipping, comes with net negative emissions from biogenic carbon uptake by trees even when GHG emissions from forestry, transportation, energy use for the chipping, etc. are considered. Due to the low H/C ratio of wood, a rather large amount of wood chips is required as feedstock to produce 1 MJ H2, which leads to both a rather high amount of CO2 removed from the atmosphere through the fuel supply, but also to high direct biogenic CO2 emissions in cases without CCS. The HPR and the EF process chains without a pre-combustion CO2 capture unit exhibit slightly positive impacts on climate change (16 g and 14 g CO2-eq per MJ hydrogen, respectively). This is due to the electricity required, assumed to be provided by the European grid, which is associated with life cycle GHG emissions of about 400 g CO2-eq per kWh. OxySER S exhibits negative emissions (ca. −70 g CO2-eq per MJ) even without a pre-combustion carbon capture unit, thanks to the oxy-combustion process and the possibility to permanently store CO2 even without a dedicated carbon capture unit. Even though the oxySER S configuration requires comparatively high amounts of electricity, the CO2 emissions related to the use of electricity are more than compensated by the CO2 captured from the combustion unit, when subsequent CO2 transport and storage is assumed (see Section 2.1 for the technology description).
When one considers the same H2 production chains with pre-combustion carbon capture, the overall GHG emissions become negative in all the cases (between −70 g CO2-eq per MJ for HPR CCS and −143 g CO2-eq per MJ for EF CCS). The impacts of the carbon capture, transport and storage processes on the results are negligible, so that the fuel supply chain, CO2 capture rate and power balance at the plant are decisive. Therefore, the addition of CCS leads to a substantially improved performance of all the process chains analysed with respect to overall greenhouse gas emissions.
Compared to other hydrogen production pathways, wood gasification performs well in terms of impacts on climate change. As Fig. 15 shows, electrolysis operated with renewable electricity generates hydrogen with life-cycle GHG emissions in the order of almost zero (with hydropower) to about 50 g CO2-eq per MJ (with electricity from photovoltaic arrays). Natural gas reforming causes impacts on climate change in a range from about 90 g CO2-eq per MJ in the case of ATR and SMR w/o CCS down to 20 g CO2-eq per MJ for ATR with CCS. Using biomethane as input to the same reforming processes decreases the life-cycle GHG emissions to 10 g CO2-eq per MJ (assuming low carbon uptake into biomass and digestate incineration) without CCS, going negative with CCS to −120 g CO2-eq per MJ in the best case. For a detailed discussion of hydrogen from natural gas and biomethane reforming, we refer to our previous analysis.1 However, the generally observed trend that wood gasification with CCS generates more negative emissions than biomethane reforming with CCS can be attributed to to the lower H/C ratio of wood compared to methane and to the lower process efficiency, which lead to higher removal of CO2 per unit of hydrogen for wood-based hydrogen. Paradoxically, lower efficiency of the process compared to reforming pays off in terms of carbon removal from the atmosphere. However, the limited availability of wood chips from sustainable forestry needs to be kept in mind. Fig. 15 also reveals that while the electrolysis process shows high sensitivity to the GHG intensity of the electricity used, climate change impacts of both the reforming as well as the gasification are not driven by the GHG intensity of electricity. Therefore, modelling the electricity input with low-carbon electricity as opposed to our default assumption using the European (ENTSO-E) mix would not change findings on climate change impacts of H2 from reforming or gasification. However, many other environmental impact categories are influenced by the use of the ENTSO-E mix (see complete set of LCIA results in the ESI†) for all technologies with an increased electricity use (e.g. HPR, reforming combined with CCS).
Fig. 10 provides LCA results for H2 production with all woody biomass gasification configurations for a number of selected, representative impact categories (the complete set of results is part of the LCA section in the ESI†). We compare the dry biomass gasification process chains to steam methane reforming and electrolysis with hydro or wind power in each impact category. Each impact category is normalized for the absolute maximum value. This representation allows showing the performance of technologies for a set of chosen environmental impacts in comparison. Hence, it is possible to identify technologies which might potentially perform well in most impact categories, or recognise trade-offs when a technology comes with large improvements in one impact category compared to less effective technologies, but might trigger high environmental impacts in another category. For instance, an important question in the context of CCS is, if the reduction of climate change impacts comes at substantial increases regarding impacts in other areas of environmental concern.
Neither the use of wood nor addition of CCS result in large additional burdens regarding non-renewable cumulative energy demand, ecosystem quality and human health impacts compared to hydrogen from natural gas and biomethane. The only exception is land use: forestry for wood chips production is associated with forest land use and this dominates the results in the land use category, even if this is simply land used for sustainable forestry. The land use of extensive forestry does not imply any important change in how land is used, as it would be the case if an extensive forest were turned e.g. into an industrial area. The high land occupation value does therefore not indicate a situation, which is environmentally problematic, but simply shows in this case that the use of wood chips as feedstock occupies more square meters of land than other feedstock options for hydrogen production. In comparison, all other hydrogen production technologies do apparently cause substantially less land use. The non-renewable cumulative energy demand is highest for the use of natural gas. In freshwater ecotoxicity, the comparatively high impact of H2 from wind-based electrolysis is driven by the use of stainless steel for the wind turbines. Sources for emissions to air responsible for photochemical ozone formation are diverse and therefore the burdens in this impact category are driven by the use of natural gas, the wood chips supply chain, use of electricity, or material use (wind electrolysis). In general, results for hydrogen from electrolysis in non-climate change impact categories depend mostly on the source of electricity, even within the portfolio of renewables with e.g. considerable differences between hydropower and photovoltaic power. Therefore, general conclusions for these impact categories comparing hydrogen from electrolysis with biomass-based hydrogen (with and w/o CCS) cannot be drawn.
In order to evaluate the environmental performance of hydrogen from different production pathways from an overall life-cycle perspective, we include the end use. We select the mobility sector and quantify environmental life-cycle burdens of passenger cars and freight transport vehicles in the next section.
For passenger vehicles, only using H2 from wood EF with CCS results in negative life-cycle GHG emissions, while in case of trucks, life-cycle GHG emissions are negative when H2 from wood HPR and EF with CCS is used. This difference between passenger vehicles and trucks is due to the fact that fuel supply related contributions to life-cycle impacts on climate change of trucks are larger, since the “vehicle utilization” is higher for trucks than for passenger cars. This means that trucks exhibit a larger number of lifetime-kilometers, which leads to lower contributions from vehicle manufacturing and maintenance (corresponding to glider, powertrain, maintenance, energy storage, end-of-life), since the associated emissions are “amortized” over a larger number of kilometers. In general, the use of biomass as feedstock for fuel supply seems to yield substantially reduced climate change impacts compared to fossil fuel ICEV. Using woody biomass results in the highest carbon removal per km driven due to the different H/C ratios of wood and biomethane and to the corresponding process efficiencies. FCEV fuelled with almost all of the analyzed hydrogen production pathways as well as BEV using low-carbon electricity perform (much) better in terms of climate change than current conventional vehicles (ICEV diesel, natural gas or gasoline). An analysis of all other environmental impact categories (see ESI† for the complete set of results) shows that this often does not result in significant negative environmental effects in other impact categories. Wood-based hydrogen supply causes high impacts in the land-use category for FCEV operated with such hydrogen. In addition, battery production for BEV can cause substantial burdens in some impact categories. The use of a carbon intensive electricity mix for charging a BEV or producing H2via electrolysis should be avoided due to even higher environmental impacts compared to conventional fuels. Such electricity supply results in high impacts on climate change and in other environmental impact categories, while the use of hydropower is most beneficial in all impact categories. This latter seems to be a sustainable choice when aiming at decarbonization, together with FCEVs driven by H2 from biomass, be it with or even without CCS. In contrast, the use of conventional fossil-based H2 from reforming processes without CCS will be harmful for the climate. Adding CCS with a high capture rate (i.e. specific pre-combustion capture unit CO2 recovery of 98%) is better suited for decarbonization, and the use of biomethane improves the climate performance even further, thus outperforming the direct use of biomethane in a gas vehicle. The use of wood chips exhibits one strong effect compared to other fuels, which is extensive forest land use. The good environmental performance of using wood or wet waste biomass feedstock for hydrogen supply for FCEV raises questions on the availability of these resources, and trade-offs between the necessity to fulfill a service demand (km driven) and minimising climate change impacts. With a given amount of wood feedstock, a larger distance can be driven in passenger cars than in trucks due to lower fuel demand of passenger cars. This effect increases with increasing size of trucks. However, as seen above, the carbon removal from the atmosphere is higher when using the H2 in a truck than in a passenger car from a life-cycle perspective. In any case, biomass resource availability is limited, and it needs to be carefully evaluated to which use it should be allocated in terms of social, economic, technological and environmental performance.
Comparability of our LCA results with other studies is limited, since our present analysis together with our previous publication1 represents the first comprehensive LCA of biomass based hydrogen production with CCS and use of this hydrogen as vehicle fuel in the academic literature. Two recent reports from JRC47 and the European Commission48 do include some of the hydrogen production pathways we analyzed. However, the JRC report47 only includes hydrogen from biomethane reforming and their LCA approach for dealing with potentially avoided burdens differs from ours and therefore, comparing LCA results is not meaningful. The report from the European Commission48 only includes hydrogen production from natural gas via SMR with CCS and their LCA results for impacts on climate change per unit of hydrogen produced as similar to ours. Truck sizes in their analysis differ from ours – thus, we have to refrain from comparing LCA results on the level of vehicles.
• Wood gasification is a complex process and the process efficiency strongly depends on the type of feedstock used and on the operating conditions (e.g., residence time, temperature, wood water and impurities content). In this analysis we consider a standard wood composition which is in agreement with the ecoinvent report on wood energy.35 However, a different feedstock composition might lead to different results (both in terms of process efficiency and type of pre-treatment required), and the wood quality is region specific. Concerning the operating conditions, it is hard to define standard operating conditions because those technologies are at an early stage of development and employment; nevertheless, in a real application the operating conditions of the gasification technologies should be optimized for the specific feedstock composition.
• Product gas cleaning is a key aspect while dealing with biomass gasification, and in a real application it might represent a substantial challenge; the cleaning strategy suggested in the framework of this contribution might not be enough to completely eliminate contaminants as tars. Therefore, additional cleaning step might be required, leading to an increase is pressure drop, process complexity and indirectly also to an increase in costs.
• EF gasifier: given the absence of the steam reformer, instead of removing H2S from the product gas before the WGS section, the high temperature shift could be replaced by a sour WGS reactor.49 However, unlike coal gasification (where the sulphur content in the product gas is in the order of thousands ppm), the sulphur content here is from one to two orders of magnitude lower.21,23,50 Thus, because of the low H2S content, a sour WGS might not work (i.e. to active the catalyst, an H2S content in the order of thousands ppm is needed51). An other consideration we would like to make concerns the type of CO2 capture considered for the EF CCS chain; other separation technologies than amine-based absorption could be used instead, as for example physical scrubbing. However, the comparison of different types of CO2 capture technologies goes beyond the scope of this work, thus we decided to use the same capture technology for all production pathways, in order to be able to perform a fair comparison.
• Cooling and heating large amounts of product gas might be challenging in a real application; therefore, the suggested cooling/heating strategy presented in this contribution might have to be changed, affecting not only the heat integration efficiency but also the overall electricity balance of the production chain.
• The sorption enhanced reforming gasifier is the least mature technology among the three. Ideally, to avoid the need of cooling under water condensation temperature before gas cleaning, the gasification should occur at higher pressure (e.g. 5 bar). Since steam is needed in both SMR and WGS reactors, the intermediate condensation of water would cause an efficiency drop, thus it is not convenient to follow a downstream design as the one of the GoBiGas plant.52 Nevertheless, the goal of this contribution is to verify the potential of different pathways and the characteristics of the product gas generated by this type of gasifier are promising, despite the low stage of technical development.
• Other gasification technologies exist and may be used (in combination with a proper downstream train) to produce hydrogen (e.g. oxygen blown fluidized bed and dual fluidized bed gasifier). However, we have decided to select the three above because they allow to compare different features and specifications, crucial to understand which combination could be the most suitable for hydrogen production.
• The LCA proposed here considers woody biomass feedstock for H2 production from forestry in Germany and Sweden, as considered to be representative for the European wood chips market in the ecoinvent database.45 However, forestry-related environmental burdens depend on regional boundary conditions and wood markets may differ from region to region. Such differences should be addressed.
• The wood supply chain considered in this analysis represents “sustainable forestry”, i.e. the use of trees extracted from existing forests in a quantity at or below the natural growth rate. Since the potential of such resources is limited, using wood from dedicated plantations should be analyzed, appropriately reflecting site-specific boundary conditions.
• The quantification of selected environmental burdens in addition to impacts on climate change accounts for the amounts of emitted pollutants, but not for actual damages to human health and ecosystems. Quantifying these impacts would require regionalized or even location-specific impact assessment based upon specific dose-response functions – an issue which would be especially important in the context of mobility, but the LCA community is struggling with.
While acknowledging the limitations above, we are still confident that our analysis provides reliable and useful outcomes, which can be summarized as follows. Regarding hydrogen production, considering both process efficiency and overall environmental performance, the oxySER configurations with CCS exhibits better technical and environmental performances than the other configurations. However, the oxySER process represents the most immature technology among the three configurations analyzed. All three wood-based hydrogen production configurations with CCS result in negative life-cycle GHG emissions, i.e. a “net-removal” of CO2 from the atmosphere due to the permanent storage of CO2 absorbed by trees; these results are similar to those of biowaste-based biomethane reforming with CCS. The negative GHG emissions of wood-based hydrogen production with CCS do not come with substantial burden-shifting, i.e. the production processes are not associated with high environmental burdens in other impact categories. Land use from forestry is substantial, but this is land occupied by forests used for wood supply chains from sustainable forestry where wood consumption does not exceed natural growth rates. In general, hydrogen from biogenic feedstock used in fuel cell vehicles represents an environmentally sound fuel–powertrain combination, not only in comparison with conventional diesel, petrol and natural gas vehicles, but also in comparison with battery electric vehicles (BEV). Regarding impacts on climate change, FCEV with hydrogen from biomass without CCS exhibit similar or slightly better (depending on the vehicle type) performance as BEV charged with low-carbon electricity. Adding CCS to biomass-based hydrogen production results in substantially lower impacts on climate change of FCEV compared to BEV, and in certain cases even to negative life-cycle GHG emissions per kilometer driven. However, these results require a careful interpretation. First, biomass resources to be used for hydrogen production are limited and can only provide fuel for a minor fraction of current vehicle fleets. And second, negative life-cycle GHG emissions for vehicles on a “per km” basis partially result from inefficient fuel use: if the fuel supply chain exhibits negative GHG emissions, the more fuel a vehicle consumes, the more CO2 it removes from the atmosphere. More efficient fuel use would increase life-cycle GHG emissions per kilometer, but from a vehicle fleet perspective it would allow for travelling more km with the same amount of fuel and CO2 removal from the atmosphere. Therefore, increasing the “negativity” of life-cycle GHG emissions of vehicles per km driven by increasing consumption of fuel associated with negative GHG emissions must not be the goal. The results of our analysis clearly demonstrate that biomass-based hydrogen – with and without CCS – must be considered as an environmentally sound transport fuel and that FCEV fuelled with such hydrogen represent an option to substantially reduce road-transport related impacts on climate change without major adverse environmental side-effects, if biomass is either sourced from waste streams or from sustainable forestry. Resource limitations need to be kept in mind though, and therefore, transition to a low-carbon transport system will require further fuel and vehicle options, e.g., low-carbon electricity used for hydrogen production via electrolysis, hydrogen from natural gas reforming with CCS, and direct electrification using BEV.
| Production chain | Biomass input [MW]/H2 produced [MW] | η net | El. balance [kWel MW H2−1] | ψ CO2 |
|---|---|---|---|---|
| HPR | 1.62 [1.53–1.72] | 0.62 ± 0.04 | −93 ± −2.6 | 0 |
| HPR CCS | 1.62 [1.53–1.72] | 0.62 ± 0.04 | −153 ± −1.5 | 0.574 ± 0.033 |
| oxySER S | 1.43 [1.22–1.66] | 0.70 ± 0.11 | −139 ± −11.2 | 0.630 ± 0.02 |
| oxySER CCS | 1.43 [1.22–1.66] | 0.70 ± 0.11 | −167 ± −14.2 | 0.927 ± 0.006 |
| EF | 1.84 [1.79–1.89] | 0.54 ± 0.013 | −73 ± −8.6 | 0 |
| EF CCS | 1.84 [1.79–1.89] | 0.54 ± 0.013 | −184 ± −8.6 | 0.976 |
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| Fig. 12 Detailed scheme of the hydrogen production plant with an HPR gasifier modelled in Aspen Plus. | ||
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| Fig. 13 Detailed scheme of the hydrogen production plant with an oxySER gasifier modelled in Aspen Plus. | ||
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| Fig. 14 Detailed scheme of the hydrogen production plant with an EF gasifier modelled in Aspen Plus. | ||
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| Fig. 15 Life cycle climate change impacts for H2 production via water electrolysis, reforming of natural gas (NG) or biomethane (BM), and gasification of wood. A similar figure has already been published in ref. 1 and has now been extended to include the wood gasification configurations. Results are shown in relation to the greenhouse gas intensity of the input electricity to the processes electrolysis, reforming, or gasification, respectively. | ||
Footnote |
| † Electronic supplementary information (ESI) available: Inventories and LCIA results of LCA, including corresponding Jupyter Notebooks (“Antonini, Treyer et al. H2 from wood gasification ESI LCA.xlsx”, “1 LCI Import.ipynb”, “2 H2 from wood gasification”, “3 contribution analysis wood gasification.ipynb”); “ESI-Technical.pdf”. See DOI: 10.1039/d0se01637c |
| This journal is © The Royal Society of Chemistry 2021 |