Optimal Dispatch of the Source-Grid-Load-Storage under a High Penetration of Photovoltaic Access to the Distribution Network
Abstract
:1. Introduction
2. Multi-Objective Optimal Scheduling Model of Source-Grid-Load-Storage
2.1. Optimization Goal
2.1.1. Fluctuating Tie-Line Power between the Distribution Network and Power Grid
2.1.2. Grid Loss
2.1.3. Node Voltage Deviation
2.2. Constraint Condition
2.2.1. Electric Power Balance Constraint
2.2.2. ES Model
- (1)
- Power constraints of ES equipment:
- (2)
- Capacity constraints of ES:
- (3)
- Charge and discharge balance constraints of ES equipment:
2.2.3. Controllable Load Model
- (1)
- Controllable load power constraints:
- (2)
- Controllable load electricity constraint:
2.2.4. Line Power and Grid State Constraints
2.2.5. PV Inverter Constraints
3. Hierarchical Solution Strategy of the Model
Hierarchical Optimization Framework
4. LW-IMCSDE Algorithm
4.1. Algorithm Initialization
4.2. Lehmer Weighted Correction Strategy
4.3. Multi-Mutation Cooperation Strategy
4.4. Fitness Selection Strategy
5. Example Analysis
5.1. Algorithm Performance Analysis
5.2. Calculation of the Basic Situation
5.3. Simulation Calculation Results
5.3.1. Simulation Calculation of a Typical Day in Summer
5.3.2. Simulation Calculation for a Typical Day in Winter
6. Conclusions
- (1)
- Considering the large-scale grid connection of distributed PV, the fixed grid topology cannot realize the optimal operation of the distribution network. In this paper, the grid structure is optimized by reasonably opening and closing the tie lines, and the distribution of node voltage and grid power flow is improved. The ES charging and discharging power, controllable load power, and PV reactive power are optimized by hierarchical optimization and adjustment of the grid topology, which reduces grid losses and power fluctuations on the pulling lines.
- (2)
- By adjusting the ES charging and discharging power and controllable load power, the fluctuation of tie-line power caused by the high proportion of distributed PV grid connections is reduced, grid loss is reduced, and the economic operation of the distribution network is achieved. The characteristics of the reactive power supply were fully utilized, its reactive output was rationally optimized, the node voltage amplitude was improved, and the voltage quality was enhanced.
- (3)
- The LM-IMCSDE algorithm improves the comprehensive performance of the algorithm based on the DE algorithm with the help of weighting Lehmer averages, improved multivariate collaboration, updated populations, and other strategies, as well as the algorithm test, which shows that the LM-IMCSDE algorithm has features such as faster convergence speed and stronger global search ability.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Zhang, T.; Zhou, X.; Gao, Y.; Zhu, R. Optimal Dispatch of the Source-Grid-Load-Storage under a High Penetration of Photovoltaic Access to the Distribution Network. Processes 2023, 11, 2824. https://doi.org/10.3390/pr11102824
Zhang T, Zhou X, Gao Y, Zhu R. Optimal Dispatch of the Source-Grid-Load-Storage under a High Penetration of Photovoltaic Access to the Distribution Network. Processes. 2023; 11(10):2824. https://doi.org/10.3390/pr11102824
Chicago/Turabian StyleZhang, Tao, Xiaokang Zhou, Yao Gao, and Ruijin Zhu. 2023. "Optimal Dispatch of the Source-Grid-Load-Storage under a High Penetration of Photovoltaic Access to the Distribution Network" Processes 11, no. 10: 2824. https://doi.org/10.3390/pr11102824
APA StyleZhang, T., Zhou, X., Gao, Y., & Zhu, R. (2023). Optimal Dispatch of the Source-Grid-Load-Storage under a High Penetration of Photovoltaic Access to the Distribution Network. Processes, 11(10), 2824. https://doi.org/10.3390/pr11102824