Optimal Configuration of Wind–Solar–Thermal-Storage Power Energy Based on Dynamic Inertia Weight Chaotic Particle Swarm
Abstract
:1. Introduction
2. Evaluation Indicators for Wind and Solar Power Output Characteristics
- (a)
- Output change rate
- (b)
- Output change magnitude
- (c)
- Average complementarity index
3. Optimization Model for the Configuration of a WSTS Energy Base with a Coordinated Dispatch System
3.1. Structure of the Coordinated Dispatch System for the Power Energy Base
3.2. Mathematical Model of a Joint Dispatch System for a Power Energy Base
3.2.1. Objective Function
- (a)
- Equivalent Annual Revenue
- (b)
- Level of renewable energy consumption,
3.2.2. Constraint Conditions
- (a)
- Constraint on Thermal Power Units
- (b)
- Constraint on Energy Storage device
- (c)
- Constraint on System’s Operating Power
- (d)
- Constraint on System Export Power
3.3. The Solving Process of the Model Based on a DIWCPSO
3.3.1. Dynamic Inertia Weight Chaotic Particle Swarm
- (a)
- Chaotic Initialization
- (b)
- Adjustment of Inertia Weight
3.3.2. Solution Steps
4. Case Study
4.1. A Comparison of the Complementary Characteristics of Wind and Solar Energy Bases
4.2. Validation of the Superiority of the DIWCPSO Algorithm
4.3. A Comparison to Determine Whether to Implement an ESD in the Wind–Solar-Thermal Power Energy Base
4.4. Sensitivity Analysis of ESD Cost
5. Conclusions
- (1)
- Because of the inherent differences in wind and solar resources, wind power and solar power exhibit complementary benefits in terms of temporal and spatial distribution. By calculating the ACI, this study determines the optimal ratio of wind and solar installation, effectively reducing the fluctuation level of their power output.
- (2)
- By incorporating chaotic initialization and linearly decreasing inertial weights into the MOPSO algorithm, the continuity and uniformity of the Pareto frontier are improved, enhancing the algorithm’s optimization capability.
- (3)
- Introducing an ESD into the WST system not only improves the equivalent annual revenue and the integration capacity of new energy but also effectively reduces the fluctuation range of power output in the combined system. This is beneficial for optimizing the utilization of transmission channels and ensuring the stability of power delivery. The optimized annual equivalent revenue increased by 13.04%, and the consumption rate of renewable energy increased by 8.28%. Additionally, the cost of energy storage significantly constrains its application. As the cost of the ESD decreases, the system’s new energy integration capacity and economic benefits will further improve.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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1:1.2 | 0.1986 |
1:1.1 | 0.2391 |
1:1.0 | 0.2515 |
1:0.9 | 0.2751 |
1:0.8 | 0.2896 |
1:0.7 | 0.3047 |
1:0.6 | 0.3202 |
1:0.5 | 0.3459 |
1:0.4 | 0.3184 |
1:0.3 | 0.2868 |
1:0.2 | 0.2208 |
Solution Method | Wind Energy Storage Capacity/GW | Solar Energy Storage Capacity/GW | Outgoing Capacity/GW | CNY |
---|---|---|---|---|
DIWCPSO | 1.6 | 3.2 | 8.0 | 2.08 |
MOPSO | 1.6 | 3.2 | 7.8 | 1.89 |
NSGA-II | 1.6 | 3.2 | 7.7 | 1.83 |
Case | CNY | Energy Consumption Level Rate | CNY | CNY | CNY | Dynamic Recycling Cycle/a |
---|---|---|---|---|---|---|
Case1 | 1.84 | 85.36% | 6.19 | 1.28 | 1.02 | 5.52 |
Case2 | 2.08 | 93.64% | 6.92 | 2.35 | 0.87 | 4.73 |
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Hu, S.; Gao, Y.; Wang, Y.; Yu, Y.; Bi, Y.; Cao, L.; Khan, M.F.; Yang, J. Optimal Configuration of Wind–Solar–Thermal-Storage Power Energy Based on Dynamic Inertia Weight Chaotic Particle Swarm. Energies 2024, 17, 989. https://doi.org/10.3390/en17050989
Hu S, Gao Y, Wang Y, Yu Y, Bi Y, Cao L, Khan MF, Yang J. Optimal Configuration of Wind–Solar–Thermal-Storage Power Energy Based on Dynamic Inertia Weight Chaotic Particle Swarm. Energies. 2024; 17(5):989. https://doi.org/10.3390/en17050989
Chicago/Turabian StyleHu, Sile, Yuan Gao, Yuan Wang, Yuan Yu, Yue Bi, Linfeng Cao, Muhammad Farhan Khan, and Jiaqiang Yang. 2024. "Optimal Configuration of Wind–Solar–Thermal-Storage Power Energy Based on Dynamic Inertia Weight Chaotic Particle Swarm" Energies 17, no. 5: 989. https://doi.org/10.3390/en17050989
APA StyleHu, S., Gao, Y., Wang, Y., Yu, Y., Bi, Y., Cao, L., Khan, M. F., & Yang, J. (2024). Optimal Configuration of Wind–Solar–Thermal-Storage Power Energy Based on Dynamic Inertia Weight Chaotic Particle Swarm. Energies, 17(5), 989. https://doi.org/10.3390/en17050989