Evaluation of Acceptance Capacity of Distributed Generation in Distribution Network Considering Carbon Emission
Abstract
:1. Introduction
- (1)
- The carbon emission is innovatively quantified as one of the sub-objectives of the acceptance capacity evaluation model of DG. The proposed model aims to minimize the carbon emission in the full life cycle, minimize the node voltage deviation and maximize the line capacity margin, which comprehensively considers the reliable, economic and low-carbon operation requirements of the distribution network with high penetration renewable energy access.
- (2)
- An improved NSGA-II is used to solve the proposed multi-objective optimization model. By selecting the compromise optimal solution from the Pareto optimal solution set, the compromise optimal solution, including the location and capacity decisions of the candidate DG, obtained better performance.
2. Multi-Objective Evaluation Model of Acceptance Capacity of DG in Distribution Network Considering Carbon Emission
2.1. Objective Function
2.1.1. Minimizing Carbon Emission in the Full Life Cycle
2.1.2. Minimizing Node Voltage Deviation
2.1.3. Maximizing Line Capacity Margin
2.2. Constraints
2.2.1. Power Flow Constraints
2.2.2. Node Voltage Constraints
2.2.3. Line Transmission Capacity Constraints
2.2.4. DG Output Constraints
2.2.5. Load Loss Constraints
3. Solving Process of Acceptance Capacity Evaluation of DG in Distribution Network Based on Improved NSGA-II
3.1. Phase I: The Acquirement of the Pareto Frontier Solution Set with NSGA-II for Acceptance Capacity Evaluation of DG
- Input the distribution network topology information and parameters and set k = 1;
- Initialize the parent population of DG access scheme;
- Calculate the carbon emission in the full life cycle, the node voltage deviation and the line capacity margin of each parent population;
- Use NSGA-II to sort the parent population;
- Use the tournament method to screen the parent population;
- Cross and mutate the screened parent population to obtain the offspring population;
- Calculate the carbon emissions of the full life cycle (f1), the node voltage deviation (f2) and the line capacity margin (f3) of the k-th generation population of DG access scheme;
- Merge the parent and offspring populations of the k-th generation DG access scheme;
- Use the improved NSGA-II and congestion calculation to sort the merged k-th generation DG access scheme;
- Screen the merged k-th generation DG access scheme with the elite strategy to obtain the k+1-th generation population and set k = k + 1;
- Update the Pareto optimal solution set according to the dominant relationship between the corresponding objective function values of each particle in the population;
- If k reaches the maximum number of iterations, output the Pareto optimal solution set of the acceptance capacity evaluation of DG; otherwise, turn to Step 6.
3.2. Phase II: The Determination of the Optimal Compromise Solution with the Entropy Weight Method for the Acceptance Capacity Evaluation of DG
3.3. Model Solving Process
4. Case Study
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Number of Node | Capacity of DG (MW) | Number of Node | Capacity of DG (MW) |
---|---|---|---|
3 | 3.4 | 36 | 6.3 |
5 | 3.5 | 37 | 7.7 |
6 | 5.2 | 39 | 1.6 |
7 | 7.2 | 40 | 9.7 |
9 | 8.3 | 41 | 9.5 |
11 | 8.5 | 50 | 5.2 |
12 | 7.7 | 51 | 8.0 |
29 | 6.5 | 54 | 0.9 |
30 | 1.3 | 55 | 3.8 |
34 | 0.6 |
Case | Algorithm | Minimum Carbon Emission of the Full Life Cycle (f1) | Minimum Node Voltage Deviation (f2) | Maximum Line Capacity Margin (f3) |
---|---|---|---|---|
1 | Improved NSGA-II | 2536.58 | 1251.98 | 3224.30 |
2 | NSGA-II | 2609.22 | 1313.36 | 3222.40 |
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Huang, Y.; Zhao, L.; Qiu, W.; Xu, Y.; Gao, J.; Yan, Y.; Wu, T.; Lin, Z. Evaluation of Acceptance Capacity of Distributed Generation in Distribution Network Considering Carbon Emission. Energies 2022, 15, 4406. https://doi.org/10.3390/en15124406
Huang Y, Zhao L, Qiu W, Xu Y, Gao J, Yan Y, Wu T, Lin Z. Evaluation of Acceptance Capacity of Distributed Generation in Distribution Network Considering Carbon Emission. Energies. 2022; 15(12):4406. https://doi.org/10.3390/en15124406
Chicago/Turabian StyleHuang, Yixin, Lei Zhao, Weiqiang Qiu, Yuhang Xu, Junyan Gao, Youxiang Yan, Tong Wu, and Zhenzhi Lin. 2022. "Evaluation of Acceptance Capacity of Distributed Generation in Distribution Network Considering Carbon Emission" Energies 15, no. 12: 4406. https://doi.org/10.3390/en15124406
APA StyleHuang, Y., Zhao, L., Qiu, W., Xu, Y., Gao, J., Yan, Y., Wu, T., & Lin, Z. (2022). Evaluation of Acceptance Capacity of Distributed Generation in Distribution Network Considering Carbon Emission. Energies, 15(12), 4406. https://doi.org/10.3390/en15124406