Techno-Economic Analysis of Hydrogen as a Storage Solution in an Integrated Energy System for an Industrial Area in China
Abstract
:1. Introduction
1.1. Research Background
1.2. Literature Review
2. Methods
2.1. Mathematical Model of the Energy System
2.1.1. Solar PV Power Output
2.1.2. Wind Power Output
2.1.3. Hydrogen and Battery Storage
2.2. Source–Grid–Load–Storage System Designs
2.3. Evaluation Indicators of the Source–Grid–Load–Storage System
2.3.1. Economic Evaluation Indicators
2.3.2. Energy Storage Performance Indicators
2.3.3. Environmental Assessment Indicators
3. Case Study
3.1. Electric Load and Price
3.2. Resource Data
4. Results and Discussion
4.1. Technical Analysis
4.2. Battery Performance Analysis
4.3. Environmental Analysis with Different Energy Storage Technologies
4.4. Sensitivity Analysis and Discussion
4.5. Discussion
5. Conclusions and Suggestions
5.1. Conclusions
- The PV/WT/grid/Li-ion combination provided the lowest COE and NPC among the studied source–grid–load–storage systems. The COEs for the PV/WT/VNM, Li-ion, NAS, and hydrogen storage hybrid options were 0.196 CNY/kWh, 0.201 CNY/kWh, 0.206 CNY/kWh, and 0.359 CNY/kWh, respectively, and the NPCs were 6.32 B, 4.30 B, 6.96 B, and 8.90 B, respectively. The hydrogen storage hybrid solution will only become cost-competitive against vanadium and Li-ion storage solutions when the capital costs on both the storage and source sides are reduced by around 70%. However, with environmental costs such as the increased carbon tax set to be introduced by China in its journey to carbon neutrality, the economic benefits of hydrogen as a storage solution might be improved, since it affords the most reductions in all three types of greenhouse gases compared to other storage solutions.
- Our techno-economic analysis has shown that, currently, the best storage solution for Sanjiao town is the lithium-ion battery-based source–grid–load–storage system, due to its lower costs. However, since hydrogen-based energy storage systems have between 25% and 30% less carbon emissions than battery storage, hydrogen storage can also be considered for achieving carbon neutrality in Sanjiao town.
- All the forms of storage considered would yield around 89–90% of the renewable energy share in the energy system for the industry-based Sanjiao town, which is significantly higher than the typical local grid target of around 44% [40]. This shows the important role of energy storage in ensuring a reliable energy supply system with a high share of renewable energy.
- Compared to electrolytic hydrogen water and other forms of equipment, the reduction in the equipment costs on the power generation side contributed more to the reduction in hydrogen storage’s NPC and LCOE. Hydrogen storage also suffers from a lower system energy conversion rate compared to other forms of storage, due to energy loss in water electrolysis, hydrogen storage, and the use of fuel cells. However, with research and innovation, the overall system energy conversion rate for hydrogen storage has great potential for improvement.
- A town-level source–grid–load–storage system could be the ideal industry–town-level energy solution, satisfying both energy demands and decarbonization needs. This is especially important for heavily industrialized developing countries in the Global South that are, at the same time, facing the pressure of decarbonization.
- In the economic analysis, this study did not consider the standby and capacity costs required for the microgrid system to connect to the power grid. This could be researched and manually added into the HOMER software in future works.
- This study did not consider the effects of environmental costs on the economic indicators in the five cases. These costs include carbon taxes, subsidies for renewable energy and storage, and government plans for mandatory storage to be coupled with renewable capacity expansions for some provinces. In the future, these factors could be studied to analyze their impact on the different types of solutions, with or without energy storage, and, hence, form policy suggestions for the government when designing decarbonization road maps for industry clusters and towns.
- The sensitivity analysis on price reduction predictions could be explored in more detail. The next steps of this study could use Wright’s law or Moore’s law to build cost reduction models for renewable energy and storage technologies, using historic data as input. With a more systematic approach to cost predictions, we would be able to perform a more detailed sensitivity analysis on when hydrogen as a storage option will become economically competitive for industrial clusters, compared to other forms of storage.
5.2. Policy Suggestions
- Efficiency Improvements: Research and development focused on increasing a system’s energy conversion rate can significantly reduce losses during water electrolysis and fuel cell usage. Advances in materials science regarding electrodes and membranes might lead to more efficient electrolyzers and fuel cells.
- Cost Reduction in Key Components: Investing in manufacturing scale-up and process optimization for components such as electrolyzers and fuel cells can lower their capital and replacement costs. Policies that incentivize mass production and adoption might bring economies of scale into effect.
- Storage Techniques’ Innovation: Developing improved storage methods for hydrogen that minimize energy loss and extend storage equipment lifespan could contribute to reducing the overall O&M costs and enhancing system longevity.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Components | Capital Cost (CNY/kW) | Replacement Cost (CNY/kW) | O&M Cost (CNY/kW-yr) | Lifespan (Years) |
---|---|---|---|---|
PV System | 4200 | 3000 | 100 | 25 |
Wind System | 2812 | 1250 | 12.5 | 25 |
Converter | 300 | 300 | 15 | 25 |
Storage (Li ion) | 1658 | 1000 | 5 | 15 |
Storage (VNM) | 3200 | 1919 | 8 | 40 |
Storage (NAS) | 2150 | 1379 | 40 | 10 |
Hydrogen tank | 1000 CNY/kg | 800 CNY/kg | 10 CNY/kg | 25 |
Electrolyzer | 1700 | 900 | 15 | 15 |
Fuel Cell | 2000 | 1000 | 0.01 CNY/operational hour | 20,000 h |
Time | 10:00~12:00, 14:00~19:00 | 00:00~8:00 | 8:00~10:00, 12:00~14:00, 19:00~00:00 |
Price/CNY | 1.0377 | 0.232 | 0.6104 |
Month | Solar Radiation (kWh/m2/day) | Clarity Index | Temperature (°C) |
---|---|---|---|
1 | 3.020 | 0.426 | 14.270 |
2 | 2.780 | 0.341 | 16.680 |
3 | 3.030 | 0.321 | 19.940 |
4 | 3.630 | 0.347 | 23.630 |
5 | 4.240 | 0.386 | 26.100 |
6 | 4.530 | 0.407 | 27.520 |
7 | 4.960 | 0.450 | 28.060 |
8 | 4.630 | 0.436 | 28.090 |
9 | 4.350 | 0.446 | 26.670 |
10 | 4.220 | 0.497 | 23.800 |
11 | 3.790 | 0.519 | 19.770 |
12 | 3 250 | 0.483 | 15.370 |
Case | PV | WT | Storage | Energy Produced (kWh/yr) | Unmet Load (kWh/yr) | Renewable Fraction (%) |
---|---|---|---|---|---|---|
Case 1 | 300 M | 960 M | 176 MWh | 2,692,383,488 | 0 | 89.6 |
Case 2 | 300 M | 960 M | 173 MWh | 2,681,103,616 | 0 | 90.1 |
Case 3 | 300 M | 960 M | 136 MWh | 2,686,462,208 | 0 | 90.8 |
Case 4 | 300 M | 960 M | 300 T | 2,701,563,904 | 0 | 89.4 |
Case 5 | 300 M | 96 0M | 300 T | 2,699,556,096 | 0 | 89.5 |
Case | NPC (CNY) | COE (CNY/kWh) | Annual Cost | Capital Cost | O&M Cost | ROI | IRR | Payback |
---|---|---|---|---|---|---|---|---|
Case 1 | 6.63 B | 0.201 | 172 M | 4.41 B | 161 M | 8.8 | 12.1 | 7.64 |
Case 2 | 6.25 B | 0.197 | 189 M | 4.30 B | 170 M | 9.2 | 12.6 | 7.35 |
Case 3 | 6.95 B | 0.206 | 207 M | 4.28 B | 185 M | 8.2 | 11.5 | 7.85 |
Case 4 | 7.31 B | 0.277 | 182 M | 4.96 B | 202 M | 6.5 | 9.4 | 8.96 |
Case | Energy In (kWh/yr) | Energy Out (kWh/yr) | Storage Depletion (kWh/yr) | Losses (kWh/yr) | Annual Throughput (kWh/yr) | Storage Wear Cost (CNY/kWh) |
---|---|---|---|---|---|---|
Case 1 | 69,947,996 | 48,963,597 | 0 | 20,984,399 | 58,522,693 | 0 |
Case 2 | 68,356,157 | 61,520,541 | 0 | 6,835,616 | 64,848,344 | 0.15 |
Case 3 | 42,283,709 | 35,941,153 | 0 | 6,342,556 | 38,983,654 | 0.205 |
Case 4 | 510,669,684 | 72,703,688 | NA | 437,965,996 | 72,703,688 | NA |
Case | CO2 (kg/yr) | SO2 (kg/yr) | NOX (kg/yr) |
---|---|---|---|
Case 1 | 146,309,905 | 370,182 | 402,919 |
Case 2 | 150,598,048 | 381,031 | 414,728 |
Case 3 | 140,722,659 | 356,045 | 387,532 |
Case 4 | 121,086,993 | 306,377 | 333,777 |
Case 5 | 134,398,754 | 408,850 | 445,007 |
Base Case | 644,485,870 | 1,630,627 | 1,774,832 |
Parameter | Value | Investigated Effect |
---|---|---|
PV cost ratio | 0.25–1 | NPC and LCOE |
WT cost ratio | 0.25–1 | NPC and LCOE |
Hydrogen tank cost ratio | 0.25–1 | NPC and LCOE |
Electrolyzer cost ratio | 0.25–1 | NPC and LCOE |
Fuel cell | 0.25–1 | NPC and LCOE |
Parameter | Value | Investigated effect |
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Zeng, J.; Liu, X.; Liu, M.; Liu, X.; Huang, G.; Yao, S.; He, G.; Shang, N.; Guo, F.; Wang, P. Techno-Economic Analysis of Hydrogen as a Storage Solution in an Integrated Energy System for an Industrial Area in China. Energies 2024, 17, 3074. https://doi.org/10.3390/en17133074
Zeng J, Liu X, Liu M, Liu X, Huang G, Yao S, He G, Shang N, Guo F, Wang P. Techno-Economic Analysis of Hydrogen as a Storage Solution in an Integrated Energy System for an Industrial Area in China. Energies. 2024; 17(13):3074. https://doi.org/10.3390/en17133074
Chicago/Turabian StyleZeng, Jincan, Xiaoyu Liu, Minwei Liu, Xi Liu, Guori Huang, Shangheng Yao, Gengsheng He, Nan Shang, Fuqiang Guo, and Peng Wang. 2024. "Techno-Economic Analysis of Hydrogen as a Storage Solution in an Integrated Energy System for an Industrial Area in China" Energies 17, no. 13: 3074. https://doi.org/10.3390/en17133074
APA StyleZeng, J., Liu, X., Liu, M., Liu, X., Huang, G., Yao, S., He, G., Shang, N., Guo, F., & Wang, P. (2024). Techno-Economic Analysis of Hydrogen as a Storage Solution in an Integrated Energy System for an Industrial Area in China. Energies, 17(13), 3074. https://doi.org/10.3390/en17133074