Robust Optimal Scheduling of Integrated Energy Systems Considering the Uncertainty of Power Supply and Load in the Power Market
Abstract
:1. Introduction
- The electric–gas coupling model of the integrated energy system is established, and the uncertainty model of the supply side and load side of the system is further established based on this model.
- An optimal scheduling model based on robust chance constraints to maximize system profits in the electricity market is presented. The model is solved by converting chance constraints into deterministic constraints.
- The effectiveness of the proposed method is verified by simulations. The proposed method not only guarantees the robustness of the system but also improves the economy of the system. It provides ideas for exploring the survival and development mechanism and strategy of integrated energy systems in the electricity market environment.
2. Modeling of the Integrated Energy System
2.1. Power Output Equipment
2.1.1. P2G Model
2.1.2. Wind Power Model
2.2. Supply and Demand Uncertainty Analysis of the System
2.2.1. Uncertainty Model of Wind Power Output
2.2.2. Load Uncertainty Model
3. Optimization Scheduling Based on Robust Chance Constraints in Electricity Market
3.1. Objective Function
3.1.1. Operation Cost of Generator Set
3.1.2. Gas Storage Cost of Gas Storage Tank in Natural Gas System
3.1.3. Operation Cost of P2G Conversion Device
3.1.4. Penalty Cost of Wind Abandonment
3.2. Constraints
3.2.1. System Output Constraint
3.2.2. Power and Energy Constraints
3.2.3. Power Balance Constraints of the Power System
3.2.4. Constraints of Gas Storage Tank
3.2.5. Constraints on Node Traffic Balance
3.2.6. Chance Constraints
3.3. Solution Algorithm
4. Example Analysis
4.1. Simulation Parameters
4.2. Analysis of Model Optimization
4.3. Impact of Robust Chance Constraints
4.4. Comparative Analysis of Different Schemes
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Parameter | Value (kW) |
---|---|
Power of CHP | 200 |
Power of GB | 300 |
Power of P2G | 400 |
Output of thermal power unit | 3000 |
Wind farm output | 1000 |
Wind Speed (m/s) | Error (%) | Standard Deviation | Wind Speed (m/s) | Error (%) | Standard Deviation |
---|---|---|---|---|---|
3–4 | 1.98 | 3.96 | 7–8 | 0.02 | 15.82 |
4–5 | 2.01 | 6.27 | 8–9 | −0.71 | 14.25 |
5–6 | 1.45 | 15.83 | 10–11 | −0.42 | 12.68 |
6–7 | 1.12 | 16.62 | 11–12 | −3.2 | 10.23 |
E | F (CNY) | ||
---|---|---|---|
0.1 | 43,829 | 19,872 | 198,723 |
0.15 | 47,813 | 16,782 | 176,281 |
0.2 | 38,921 | 11,982 | 167,268 |
0.25 | 32,869 | 8729 | 142,784 |
Optimization Method | ε | Profit (CNY) |
---|---|---|
Optimization of deterministic | 0 | 158,247 |
Optimization of stochastic | 0 | 167,813 |
Optimization of robust | 0 | 177,823 |
Chance constraints of robust optimization | 0.1 | 197,362 |
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Zhao, L.; Zeng, Y.; Wang, Z.; Li, Y.; Peng, D.; Wang, Y.; Wang, X. Robust Optimal Scheduling of Integrated Energy Systems Considering the Uncertainty of Power Supply and Load in the Power Market. Energies 2023, 16, 5292. https://doi.org/10.3390/en16145292
Zhao L, Zeng Y, Wang Z, Li Y, Peng D, Wang Y, Wang X. Robust Optimal Scheduling of Integrated Energy Systems Considering the Uncertainty of Power Supply and Load in the Power Market. Energies. 2023; 16(14):5292. https://doi.org/10.3390/en16145292
Chicago/Turabian StyleZhao, Lang, Yuan Zeng, Zhidong Wang, Yizheng Li, Dong Peng, Yao Wang, and Xueying Wang. 2023. "Robust Optimal Scheduling of Integrated Energy Systems Considering the Uncertainty of Power Supply and Load in the Power Market" Energies 16, no. 14: 5292. https://doi.org/10.3390/en16145292
APA StyleZhao, L., Zeng, Y., Wang, Z., Li, Y., Peng, D., Wang, Y., & Wang, X. (2023). Robust Optimal Scheduling of Integrated Energy Systems Considering the Uncertainty of Power Supply and Load in the Power Market. Energies, 16(14), 5292. https://doi.org/10.3390/en16145292