Optimization of Provincial Power Source Structure Planning in Northwestern China Based on Time-Series Production Simulation
Abstract
:1. Introduction
2. Methods
2.1. Prediction of the Scale of Renewable Energy
2.2. Basic Model of the Time-Series Production Simulation System
2.2.1. Hydropower
2.2.2. Thermal Power
2.2.3. Renewable Energy
2.2.4. Energy Storage Systems
2.2.5. Load
2.3. System Optimization Objective
2.4. The Optimal Power Source Structure Model
- (1)
- Determine the scale of renewable energy for the studied year based on load and electricity levels, as well as the integration indicators for renewable energy sources.
- (2)
- Engage in annual 8760 h production simulation to identify maximum annual power deficit based on electricity demand, renewable energy scale, and the current installed capacity of traditional power sources and ESS. In this step, thermal power and energy storage system remain as the unknown variables.
- (3)
- Calculate the optimal scale for thermal power and ESS using the bivariate iterative method. The variables are continuously updated until predefined convergence criteria have been achieved. As shown in Figure 1, the outlined steps encapsulate a comprehensive strategy for achieving research objectives.
3. Case Analysis
3.1. Boundary Conditions
3.2. Optimization of Provincial Power Source
3.3. Evaluation and Discussion About the Optimization Results
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Power Source Type | Installed Capacity |
---|---|
Thermal power | 47.71 (variable, initial value) |
Hydropower | 3.60 |
Wind power | 20.20 |
Photovoltaic | 81.15 |
ESS | 2.79 (variable, initial value) |
Total | 155.45 |
Item | Value (“+”as Surplus, “−” as Deficit) |
---|---|
Load | 66.61 |
Transmission channel (export as −, import as +) | −0.59 |
Power output | 50.02 |
Thermal power | 47.71 |
Hydropower | 0.88 |
Wind power | 0.75 |
Photovoltaic | 0.00 |
ESS | 0.68 |
Power surplus/deficit (surplus as +) | −17.18 |
Power Source Type | Installed Capacity |
---|---|
Thermal power | 53.71 (variable, optimized) |
Hydropower | 3.60 |
Wind power | 20.20 |
Photovoltaic | 81.15 |
ESS | 16.79 (variable, optimized) |
Total | 175.45 |
Power Source Type | Electricity Generation | |
---|---|---|
Initial | Optimized | |
Thermal power | 262,061 | 249,751 |
Hydropower | 8902 | 9723 |
Wind power | 38,311 | 39,233 |
Photovoltaic | 87,058 | 106,187 |
ESS | −1071 | −7881 |
Total | 395,262 | 397,013 |
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Su, Z.; Yang, G.; Yao, L.; Zhou, Q.; Zhang, Y. Optimization of Provincial Power Source Structure Planning in Northwestern China Based on Time-Series Production Simulation. Energies 2024, 17, 4766. https://doi.org/10.3390/en17194766
Su Z, Yang G, Yao L, Zhou Q, Zhang Y. Optimization of Provincial Power Source Structure Planning in Northwestern China Based on Time-Series Production Simulation. Energies. 2024; 17(19):4766. https://doi.org/10.3390/en17194766
Chicago/Turabian StyleSu, Zhou, Guoqing Yang, Lixiao Yao, Qingqing Zhou, and Yuhan Zhang. 2024. "Optimization of Provincial Power Source Structure Planning in Northwestern China Based on Time-Series Production Simulation" Energies 17, no. 19: 4766. https://doi.org/10.3390/en17194766
APA StyleSu, Z., Yang, G., Yao, L., Zhou, Q., & Zhang, Y. (2024). Optimization of Provincial Power Source Structure Planning in Northwestern China Based on Time-Series Production Simulation. Energies, 17(19), 4766. https://doi.org/10.3390/en17194766