Optimization Strategy for an Outage Sequence in Medium- and Low-Voltage Distribution Networks Considering the Importance of Users
Abstract
:1. Introduction
1.1. Research Motivation
1.2. Research Literature Review
1.3. Contributions
2. Multi-Dimensional User Importance Indicator System and Ranking Model
2.1. Brief Introduction to the Proposed User Importance Indicators
2.1.1. Direct Economic Loss of Users CY1
2.1.2. Indirect Economic Loss Based on Industrial Relevance CY2
2.1.3. Economic Loss of Power Supply Companies CG1
2.1.4. User Demand Response Rate ΔL
2.1.5. Daily Load Factor λ
2.2. User Importance Ranking Based on the Improved AHP-EW Method
2.2.1. User Importance Ranking Based on the AHP Algorithm
2.2.2. User Importance Ranking Based on the EW Method
2.2.3. Determination of Composite Weights
3. Identification Model of the User–Transformer Relation in LVDNs
4. Outage Optimization Strategy Considering the Importance of Users
5. Flowchart of Proposed Model
- (1)
- Initialize and set T = 1.
- (2)
- Calculate the user importance.
- (3)
- Identify the relationship between user and transformer and detect the line status.
- (4)
- Determine whether a fault has occurred in the MVDN; if so, proceed to the next step; otherwise, go to step 8.
- (5)
- Calculate the PV and WT output power.
- (6)
- Use the outage optimization strategy to calculate the location of outage users and the power of the outage.
- (7)
- Determine whether the fault has been repaired; if it has been repaired, proceed to the next step; otherwise, T = T + 1, and go to step 6.
- (8)
- Determine whether T is greater than the simulation time; if it is greater, proceed to the next step; otherwise T = T + 1, go to step 4
- (9)
- Output.
6. Case Study
6.1. Simulation Parameters
6.2. Results of the User Importance Ranking
6.3. Comparison Results of Different Outage Strategies
6.4. Validation on a Large-Scale Case
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Indices | Case | t = 1 h | t = 2 h | t = 3 h |
---|---|---|---|---|
Comprehensive user importance loss S | Case 1 | 22.5548 | 18.9558 | 9.6284 |
Case 2 | 25.1269 | 21.3674 | 14.2865 | |
Case 3 | 25.1906 | 21.8401 | 14.3821 | |
Number of load-shedding users N | Case 1 | 102 | 88 | 61 |
Case 2 | 95 | 83 | 52 | |
Case 3 | 105 | 91 | 65 |
Indices | Case | t = 1 h | t = 2 h | t = 3 h |
---|---|---|---|---|
Comprehensive user importance loss S | Case 4 | 23.5406 | 23.4241 | 22.4956 |
Case 5 | 27.3829 | 26.2601 | 24.2788 | |
Case 6 | 26.0638 | 27.1433 | 23.6563 | |
Number of load-shedding users N | Case 4 | 110 | 105 | 98 |
Case 5 | 105 | 102 | 95 | |
Case 6 | 111 | 110 | 101 |
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Li, W.; Wang, J.; Bai, H.; Yan, Y.; Xu, M.; Liu, Y.; Wang, H.; Huang, W.; Li, C. Optimization Strategy for an Outage Sequence in Medium- and Low-Voltage Distribution Networks Considering the Importance of Users. Appl. Sci. 2024, 14, 8386. https://doi.org/10.3390/app14188386
Li W, Wang J, Bai H, Yan Y, Xu M, Liu Y, Wang H, Huang W, Li C. Optimization Strategy for an Outage Sequence in Medium- and Low-Voltage Distribution Networks Considering the Importance of Users. Applied Sciences. 2024; 14(18):8386. https://doi.org/10.3390/app14188386
Chicago/Turabian StyleLi, Wei, Jingzhe Wang, Hao Bai, Yongqian Yan, Min Xu, Yipeng Liu, Hao Wang, Wei Huang, and Chunyan Li. 2024. "Optimization Strategy for an Outage Sequence in Medium- and Low-Voltage Distribution Networks Considering the Importance of Users" Applied Sciences 14, no. 18: 8386. https://doi.org/10.3390/app14188386
APA StyleLi, W., Wang, J., Bai, H., Yan, Y., Xu, M., Liu, Y., Wang, H., Huang, W., & Li, C. (2024). Optimization Strategy for an Outage Sequence in Medium- and Low-Voltage Distribution Networks Considering the Importance of Users. Applied Sciences, 14(18), 8386. https://doi.org/10.3390/app14188386