The Intelligent Sizing Method for Renewable Energy Integrated Distribution Networks
Abstract
:1. Introduction
2. Overall Program Design
3. Investment Costs and Reliability Benefits of Network Structures
3.1. Investment Impact Factors
- (1)
- Equipment level categories: type of conductor, type of switch or circuit breaker, etc.;
- (2)
- Network structure category: power supply radius, number of sections, number of contacts, etc.;
- (3)
- Unit cost category: substation construction cost, cost per unit length of the line, cost per unit capacity, etc.;
- (4)
- Operation and maintenance category: line loss rate, operation and maintenance costs, etc.;
- (5)
- Investment category: examples are return on investment, payback period, etc.
3.2. Annualized Investment Cost
3.3. Reliability Benefit Translation
4. Multi-Objective Planning of Network Structure Based on DE Algorithm
4.1. Establishment of Multi-Objective Functions
4.2. Basic Principles of the DE Algorithm
- (1)
- Initialization of Population: Establish an initial population of size , iterating for G − 1 times. The individual in the G-th generation is represented as , and the population is . The initial population is generated randomly and can be represented as
- (2)
- Mutation Operation: Perform mutation by randomly selecting three different target individuals.
- (3)
- Crossover Operation: A trial vector is generated through crossover. To ensure the evolution of , at least one element of the individual target contributes to through random selection, while the other elements undergo crossover according to Equation (9).
- (4)
- Selection Operation
4.3. Individual Fitness Function
4.4. Methodology Section
5. Example Calculation
5.1. Case 1
5.2. Case 2
5.3. Existing Grid Structure Planning Methods
5.4. DE Algorithm Solution
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Basic Parameters of the Power Grid | Values |
---|---|
Fault rate of 35 kV overhead lines/cable lines (times/100 km·year) | 7.31/0.151 |
Fault rate of 35 kV circuit breakers/switches (times/unit·year) | 0.05/2.03 |
Fault rate of busbars (times/unit·year) | 0.012 |
Recovery time for 35 kV line/switch faults (h) | 5.61/2.98 |
Investment return rate/period (%) | 12/18 |
Grid loss rate (%) | 6.7 |
Annual maintenance cost proportion (%) | 12% |
Unit price of 35 kV circuit breaker/integrated automation switchgear (CNY 10,000) | 10/240 |
Basic Parameters of the Power Grid | Values |
---|---|
Fault rate of 35 kV overhead lines/cable lines (times/100 km·year) | 7.85/0.128 |
Fault rate of 35 kV circuit breakers/switches (times/unit·year) | 0.1/2.24 |
Fault rate of busbars (times/unit·year) | 0.02 |
Recovery time for 35 kV line/switch faults (h) | 6.35/3.02 |
Investment return rate/period (%) | 12/19 |
Grid loss rate (%) | 6.1 |
Annual maintenance cost proportion (%) | 11% |
Unit price of 35 kV circuit breaker/integrated automation switchgear (CNY 10,000) | 6/260 |
Load Density /(MW/km2) | ≤2.3 | 2.3~7 | 7~26 | 26~30 |
---|---|---|---|---|
Optimal network structure | overhead single radial | overhead three-section with two ties | cable single ring network | cable dual ring network |
Supply radius/km | 10 | 5 | 4 | 3 |
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Yang, Z.; Yang, F.; Liu, Y.; Min, H.; Zhou, Z.; Zhou, B.; Lei, Y.; Hu, W. The Intelligent Sizing Method for Renewable Energy Integrated Distribution Networks. Energies 2024, 17, 5763. https://doi.org/10.3390/en17225763
Yang Z, Yang F, Liu Y, Min H, Zhou Z, Zhou B, Lei Y, Hu W. The Intelligent Sizing Method for Renewable Energy Integrated Distribution Networks. Energies. 2024; 17(22):5763. https://doi.org/10.3390/en17225763
Chicago/Turabian StyleYang, Zhichun, Fan Yang, Yu Liu, Huaidong Min, Zhiqiang Zhou, Bin Zhou, Yang Lei, and Wei Hu. 2024. "The Intelligent Sizing Method for Renewable Energy Integrated Distribution Networks" Energies 17, no. 22: 5763. https://doi.org/10.3390/en17225763
APA StyleYang, Z., Yang, F., Liu, Y., Min, H., Zhou, Z., Zhou, B., Lei, Y., & Hu, W. (2024). The Intelligent Sizing Method for Renewable Energy Integrated Distribution Networks. Energies, 17(22), 5763. https://doi.org/10.3390/en17225763