Opportunities and Challenges of the European Green Deal for the Chemical Industry: An Approach Measuring Innovations in Bioeconomy
Abstract
:1. Introduction
2. Materials and Methods
2.1. Framework for the Assessment
2.1.1. Evaluation of Relevant Biomass Resources
System Definition and Identification of System Boundaries
Data Basis
2.1.2. Evaluation of Relevant Biomass Provision and Logistics
System Definition and Identification of System Boundaries
- (i)
- the chemical raw material properties (e.g., chemical composition, content of biogenic material, amount of trace elements, and water content, as well as chemical stability);
- (ii)
- the physical raw material properties (e.g., quantity, density, ash content, particle size);
- (iii)
- other raw material properties (e.g., origin, yield, seasonal availability, availability against competing uses, harvest time, transportation capacity, ease of transport, suitability for storage, storage stability, long term quality, technical suitability) [15].
Data Basis
- Feedstock availability is evenly distributed over a circular feed supply area (e.g., NUTS-3 region);
- The conversion plant is located centrally within the respective region (i.e., to minimize the total direct distance from all of the feed sources to the conversion plant);
- Where multiple conversion plants are located in one catchment area (i.e., feed supply area), the location of each conversion plant will be the centroid of the sector that supplies it with the feedstock;
- The road infrastructure and network is ordinary to allow the use of a single winding factor to assess the actual distance from between feedstock source and conversion plant based on the direct distance between source and conversion plant (e.g., radius).
2.1.3. Evaluation of Relevant Biomass Conversion Routes
System Definition and Identification of System Boundaries
Data Basis
2.2. Assessment Methods
2.2.1. Technical Assessment
Key Performance Indicators
Methods for Forecasting
2.2.2. Economic Assessment
Key Performance Indicators
- Capital-related costs (e.g., technical and structural installation, noise protection, and thermal insulation measures and utility connection costs):
- Demand-related costs (e.g., energy costs, costs for operating materials);
- Operation-related costs (e.g., cleaning, servicing, inspection, maintenance);
- Miscellaneous costs (e.g., planning costs, insurance, taxes, administration costs).
- Summary procedures; i.e., to assess the capital costs of a plant, a correlation between specific plant data (e.g., annual turnover) and the plant capacity is calculated by the use of a turnover ratio. This approach shows inaccuracies of about 50%;
- Factor-based methodologies; i.e., include module concepts and global and differentiated surcharge factors. Based on the technical specification of a plant, modules are aggregated and further assessed by factors to estimate the costs of new facilities. A typical multiplier for a new unit within a refinery to estimate the total installed costs of the plant is the Lang factor, describing a ratio of the total installation costs to the costs of the major technical components in a plant. This approach shows inaccuracies of about 30%. An increase in accuracy can be achieved by differentiating global factors according to the state of aggregation of input materials, intermediate products, and final products;
- Individual equipment assessment; i.e., for an individual assessment of all cost parameters, high costs for engineering services are necessary. This approach shows inaccuracies of about 5%.
Methods for Forecasting
2.2.3. Environmental Assessment
Key Performance Indicators
- Classification. The classification assigns emissions to impact categories according to their potential effects;
- Normalization. The expression of the impact potentials are considered in relation to a reference situation (e.g., person-equivalence, PE). The normalized impact potential, nIP, can be defined as displayed in Equation (27) (normalization reference, NR) [44].
- Valuation. The weights are ranked, grouped, or assigned depending on the different impact potentials (weighted impact potential, wIP, weighting factors, WF) (Equation (28)) [44].
Methods for Forecasting
3. Case Study
3.1. System Definition
- Time horizon. The time horizon is the current status (i.e., 2017), the medium term (i.e., 2030), and the long term (i.e., 2045);
- Location. The application examples focus on the EU-28;
- Lignocellulosic biomass. The only biomass theoretically available as a raw material for the chemical industry is exclusively residual biomass, or biomass cultivated on non-arable or marginal/degraded land. The criterion considered for the selection of the feedstock is the technical potential for different types of lignocellulosic biomass resources in the selected regions: (i) forest residues; (ii) agricultural crop residues; and (iii) energy crops;
- Conversion pathways. The thermo-chemical conversion pathways exemplary evaluated are pyrolysis and gasification;
- Plant capacity. The plant capacity is set to a fixed amount of input biomass to the plant to ensure comparability;
- Plant locations. The countries where the plants are located are in northern Europe, Sweden, in central Europe, Germany, and in southern Europe, Spain.
3.1.1. Determination of Relevant Biomass Resources
3.1.2. Determination of Relevant Biomass Provision and Logistics
3.1.3. Determination of Relevant Biomass Conversion Routes
3.2. Data Basis
3.2.1. Technical Assessment
3.2.2. Economic Assessment
- For the total (installed) equipment costs, no differentiation was considered between the three regions (i.e., Northern Europe, Central Europe and Southern Europe);
- The assessment neither considers any policy factors (e.g., carbon credits, subsidies, mandates, nor tax for the final transportation fuel product);
- The interest rate is set to 4% [62];
- The economic plant lifetime is 20 years according to the technical plant lifetime;
- The biomass input is set to 150,000 tDM/a.
3.2.3. Environmental Assessment
3.3. Results
3.3.1. Technical Assessment
Current Status
- Plant I. Diesel and gasoline are produced via in situ fast pyrolysis and catalytic vapor upgrading and downstream processing including hydro-treating. As a result, the utilization ratio of the process is 51% for the current status. In comparison with the other plant concepts, this concept produces 27% diesel compared to gasoline. The mean energy efficiency is 53% and, thus, it is slightly higher compared to the average energy efficiency of the five plant concepts (50%). Plant I utilizes 0.01 MJ per kg of diesel as well as of natural gas. The electricity credit is around 0.22 MJ/kg.
- Plant II. This plant concept produces via fast pyrolysis and subsequent slurry upgrading, including Fischer–Tropsch (FT) synthesis ~49% diesel compared to gasoline. The calculated utilization ratio of 34% is lower compared to the average value of the plant concepts (47%). The mean fuel efficiency is 38% and, thus, it is slightly lower compared to the average energy efficiency. The electricity credit is the highest of all plant concepts with around 0.67 MJ/kg.
- Plant III. The utilization ratio of the fast pyrolysis and liquid upgrading plant is 52%, as is the mean fuel efficiency. This plant concept produces 56% diesel. The electricity use is ~0.44 MJ/kg, and the natural gas use is the second highest with 2.08 MJ/kg.
- Plant IV. This plant concept of fast pyrolysis and liquid upgrading has the highest energy needs for electricity and natural gas with 1.52 MJ/kg and 3.28 MJ/kg, resectively. The plant produces 46% diesel. Credit can be given for 1.57 MJ/kg of char and 0.75 MJ/kg of steam.
- Plant V. Compared to the fast pyrolysis concepts, the gasification and Fischer–Tropsch (FT) synthesis concept gains yields of 40% utilization ratio and up to 43% mean energy efficiency. This plant concept produces 70% diesel. The electricity credit is 0.60 MJ/kg.
Medium- and Long-Term Perspective
- In plant I, diesel and gasoline are produced via in situ fast pyrolysis and catalytic vapor upgrading and downstream processing including hydro-treating. As a result, the utilization ratio of the process ranges between 55% and 58% for the medium- and long-term.
- Plant II produces via fast pyrolysis and subsequent slurry upgrading, including Fischer–Tropsch (FT) synthesis ~49% diesel compared to gasoline. The utilization ratio, 37% to 39%, is lower compared to the average value of the plant concepts.
- The utilization ratio of plant III of the fast pyrolysis and liquid upgrading plant is between 56% and 59%.
- Plant IV, with fast pyrolysis and liquid upgrading, has a utilization ratio for the medium- and long-term between 58% and 61%.
- Plant V, compared to the fast pyrolysis concepts, the gasification and Fischer–Tropsch synthesis concept has a utilization ratio for medium- and long-term perspectives between 43% and 45%.
3.3.2. Economic Assessment
Current Status
Medium- and Long-Term Perspective
3.3.3. Environmental Assessment
Current Status
Medium- and Long-Term Perspectives
4. Discussion and Conclusions
- Utilization ratio and energy efficiency. Clear differences in the utilization ratio for the plant concepts become obvious. Plant concepts I, III, and IV achieve a utilization ratio of more than 50%, whereas plant concepts II and V have a significantly lower utilization ratio. Similar trends can be observed with regard to mean energy efficiency. Plant concept IV, achieving a significant increase in efficiency due to the co-products, is particularly notable.
- Costs. Four out of five plant concepts, no matter in which location, have a negative net income value, except for Plant IV, resulting in a positive value in northern Europe (344 k€/a) and in southern Europe (884 k€/a). Therefore, according to current data, it can be assumed that no profitable production of intermediate biogenic products for the chemical industry is currently possible. In the medium- and long-term, however, with a strong increase in installed plant capacities, it can be assumed that the production of intermediate biogenic products can definitely make a cost-effective contribution to the chemical industry, assuming there is a strong increase in CO2-taxes and thus a clear price increase for fossil fuel energy.
- Environmental impact. Among other things, plant concepts I and V show lower values than plant concepts III and IV, as the catalysts have a significantly lower replacement rates per year.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Level | Definition | Qualifying Criteria |
---|---|---|
1 | Observation and reporting of fundamental principles | Peer-reviewed publication of research relevant to the proposed concept/application |
2 | Formulation of technology concept and application | Documented description of the application concept addressing feasibility and benefit |
3 | Analytical and experimental critical function and characteristic verification of concept | Documented analytical and experimental results validating predictions of key performance parameters |
4 | Component and breadboard proof in a laboratory environment | Documented test performance demonstrating consensus with analytical predictions; documented definition of relevant environment |
5 | Component and breadboard proof in relevant environment | Documented test performance demonstrating consensus with analytical predictions; documented definition of scaling requirements |
6 | System/sub-system model or prototype demonstration in an operational environment | Documented test performance demonstrating consensus with analytical predictions |
7 | System prototype demonstration in an operational environment | Documented test performance demonstrating consensus with analytical predictions |
8 | Actual system completed and qualified through test and demonstration | Documented test performance verifying analytical predictions |
9 | Actual system proven through successful operations | Documented operational results |
Parameter | Unit | Northern Europe | Central Europe | Southern Europe |
---|---|---|---|---|
Country | Sweden | Germany | Spain | |
Location | Skåne Iän | Mecklenburgische Seenplatte | Ciudad Real | |
NUTS-3-region | SE224 | DE80 J | ES422 | |
NUTS-3 area | km2 | 11,302 | 5468 | 19,813 |
Forestry residues 1 | tn. l.DM/a | 35,071 | 24,881 | 6143 |
Agricultural residues | tn. l.DM/a | 112,177 | 123,105 | 40,914 |
Energy crops | tn. l.DM/a | 193 | 199 | 102,434 |
Sum | tn. l.DM/a | 147,442 | 148,185 | 149,492 |
Parameter | Unit | Northern Europe | Central Europe | Southern Europe |
---|---|---|---|---|
Annual available lignocellulosic biomass | MJ/km2 | 5,109,743 | 4,964,876 | 3,387,719 |
Transportation on unsealed road 1 | km | 27.3 | 28.4 | 39.5 |
Transportation distance on sealed road | km | 4.8 | 5.0 | 7.0 |
Sum | km | 32.2 | 33.4 | 46.5 |
Unit | Plant I | Plant II | Plant III | Plant IV | Plant V | |
---|---|---|---|---|---|---|
Yield of gasoline 1 | L/tDM | 191.6 | 89.6 | 137.0 | 208.1 | 63.0 |
Yield of diesel 2 | L/tDM | 63.5 | 85.1 | 150.1 | 158.2 | 130.7 |
Fuel produced | m3/a | 42,188 | 28,893 | 47,469 | 60,564 | 32,015 |
Diesel percentage | % | 27 | 49 | 56 | 46 | 70 |
Yield of electricity | kWh/tDM | 795.8 | 2424.6 | 0 | 0 | 2148.5 |
Electricity required 3 | kWh/tDM | 0 | 0 | 122.45 | 422.10 | 0 |
Natural gas required | GJ/tDM | 0.01 | 0 | 2.08 | 3.28 | 0.09 |
Yield of co-product 4 | €/tDM | 2.5 | 0 | 0 | 9.6 | 9.4 |
Unit | Plant I | Plant II | Plant III | Plant IV | Plant V | |
---|---|---|---|---|---|---|
Shifts | per day | 3 | 3 | 3 | 3 | 3 |
Production labor | per shift | 11.0 | 10.8 | 15.5 | 13.0 | 14.0 |
Chargehand labor | per shift | 4.1 | 3.8 | 2.1 | 4.0 | 3.1 |
Specialist labor | per shift | 0.5 | 1.8 | 0.5 | 1.0 | 0.5 |
Office staff | per year | 1 | 1 | 1 | 1 | 1 |
Management staff | per year | 1 | 1 | 1 | 1 | 1 |
Plant I | Plant II | Plant III | Plant IV | Plant V | |
---|---|---|---|---|---|
Capital related costs | 0.08 | 0.05–0.15 | |||
Demand related costs | |||||
Feedstock | 0.00 1–0.05 2 | 0.05 | |||
Catalyst | 0.01 | 0.04–0.06 | |||
Energy | 0 | ||||
Operating related costs | |||||
Labor | 0.075 | ||||
Maintenance | 0.05 | 0.1 | |||
Miscellaneous costs | 0.051 |
Unit | Plant I | Plant II | Plant III | Plant IV | Plant V | |
---|---|---|---|---|---|---|
Northern Europe | ||||||
Net sales | k€/a | 18,162 | 84,205 | 22,813 | 30,849 | 12,186 |
Net income | k€/a | −82,086 | −23,901 | −75,061 | 344 | −12,911 |
Central Europe | ||||||
Net sales | k€/a | 14,227 | −913 | 20,888 | 29,642 | 3190 |
Net income | k€/a | −9120 | −30,276 | −8027 | −3706 | −19,026 |
Southern Europe | ||||||
Net sales | k€/a | 17,136 | 3505 | 22,890 | 31,853 | 7426 |
Net income | k€/a | −5761 | −25,448 | −4771 | 884 | −14,574 |
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Thormann, L.; Neuling, U.; Kaltschmitt, M. Opportunities and Challenges of the European Green Deal for the Chemical Industry: An Approach Measuring Innovations in Bioeconomy. Resources 2021, 10, 91. https://doi.org/10.3390/resources10090091
Thormann L, Neuling U, Kaltschmitt M. Opportunities and Challenges of the European Green Deal for the Chemical Industry: An Approach Measuring Innovations in Bioeconomy. Resources. 2021; 10(9):91. https://doi.org/10.3390/resources10090091
Chicago/Turabian StyleThormann, Lisa, Ulf Neuling, and Martin Kaltschmitt. 2021. "Opportunities and Challenges of the European Green Deal for the Chemical Industry: An Approach Measuring Innovations in Bioeconomy" Resources 10, no. 9: 91. https://doi.org/10.3390/resources10090091
APA StyleThormann, L., Neuling, U., & Kaltschmitt, M. (2021). Opportunities and Challenges of the European Green Deal for the Chemical Industry: An Approach Measuring Innovations in Bioeconomy. Resources, 10(9), 91. https://doi.org/10.3390/resources10090091