Multi-Type Energy Storage Collaborative Planning in Power System Based on Stochastic Optimization Method
Abstract
:1. Introduction
- A MESS planning framework, including short-term ESS (battery energy storage) and long-term ESS (hydrogen energy storage) is proposed in this paper to address the risk of a mismatch between supply and demand on multiple time scales.
- The proposed planning framework of MESS is modeled as a two-stage stochastic MILP model based on typical scenarios. This allows the MESS planning results to adapt to the uncertainty of RES.
- The progressive hedging (PH) algorithm is used to solve the proposed model. Results demonstrate that the PH algorithm can boost computational efficiency under more scenarios.
2. Multi-Type Energy Storage Collaborative Optimization Planning Framework
3. Collaborative Optimization Planning Model
3.1. ESS Investment and Planning Constraints
3.2. Short-Term ESS Operation Constraints
3.3. Long-Term ESS Operation Constraints
3.4. Generators Operation Constraints
3.5. Power System Operation Constraints
4. Solution Algorithm
Algorithm 1. Progressive Hedging (PH) Algorithm. |
Step 1 Initialization: Step 2 Iteration update: Step 3 Update multiplier and decomposition: Step 4 Termination: Else go to Step 2 and continue |
5. Case Study
5.1. Test System Introduction
5.2. MESS Planning Results
5.3. MESS Operation Strategy Results
5.4. Proposed Model and Algorithm Efficiency
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Node | Power (MW) | Capacity (MWh) |
---|---|---|
15 | 86.03 | 172.06 |
17 | 94.8 | 189.6 |
20 | 13.83 | 27.66 |
32 | 37.87 | 75.74 |
Total | 232.53 | 465.06 |
Node | Power (MW) | Capacity (t H2) |
---|---|---|
30 | 100 | 2400 |
34 | 10.15 | 243.6 |
36 | 167.54 | 4020.96 |
Total | 277.69 | 6664.56 |
Model | Short-Term ESS Planning Result | Long-Term ESS Planning Result | Solving Time |
---|---|---|---|
SO | 232.53 MW/465.06 MWh | 277.69 MW/6664.56 t H2 | 126 s |
RO | 326.59 MW/692.38 MWh | 344.36 MW/8635.19 t H2 | 682 s |
DRO | 248.51 MW/513.09 MWh | 288.96 MW/7069.87 t H2 | 2153 s |
Scenarios Number | PH Algorithm | Directly Solving by Gurobi |
---|---|---|
4 | 126 s | 86 s |
8 | 194 s | 161 s |
16 | 452 s | 450 s |
64 | 1634 s | 2608 s |
128 | 4259 s | N/A |
Scenarios Number | IEEE 39-Bus System | IEEE 300-Bus System |
---|---|---|
4 | 126 s | 232 s |
8 | 194 s | 361 s |
16 | 452 s | 708 s |
64 | 1634 s | 2793 s |
128 | 4259 s | 7693 s |
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Yang, Y.; Lu, Q.; Yu, Z.; Wang, W.; Hu, Q. Multi-Type Energy Storage Collaborative Planning in Power System Based on Stochastic Optimization Method. Processes 2024, 12, 2079. https://doi.org/10.3390/pr12102079
Yang Y, Lu Q, Yu Z, Wang W, Hu Q. Multi-Type Energy Storage Collaborative Planning in Power System Based on Stochastic Optimization Method. Processes. 2024; 12(10):2079. https://doi.org/10.3390/pr12102079
Chicago/Turabian StyleYang, Yinguo, Qiuyu Lu, Zhenfan Yu, Weihua Wang, and Qianwen Hu. 2024. "Multi-Type Energy Storage Collaborative Planning in Power System Based on Stochastic Optimization Method" Processes 12, no. 10: 2079. https://doi.org/10.3390/pr12102079
APA StyleYang, Y., Lu, Q., Yu, Z., Wang, W., & Hu, Q. (2024). Multi-Type Energy Storage Collaborative Planning in Power System Based on Stochastic Optimization Method. Processes, 12(10), 2079. https://doi.org/10.3390/pr12102079