Integrated Carbon Flow Tracing and Topology Reconfiguration for Low-Carbon Optimal Dispatch in DG-Embedded Distribution Networks
Abstract
1. Introduction
- Integrated Carbon–Electricity Framework in DN: Bridges the “electricity” and “carbon” perspectives via CEF theory for low-carbon economic DG-integrated DN reconfiguration;
- Spatiotemporal Multi-Objective Optimization Model: Addressing the limitation of single-objective optimization in balancing competing requirements, a multi-objective model for DN topology reconfiguration was constructed which could enable collaborative low-carbon and economic dispatch for DG-integrated DN systems;
- Novel Q-Learning Enhanced MFO Algorithm (QMFO): Proposed Q-learning enhanced Moth Flame Optimization with adaptive exploration for efficient, accurate solution of the complex scheduling model.
2. Energy Flow in Distribution Network
2.1. Power Flow Calculation
2.1.1. General Forward/Backward Sweep Method
- Backward Sweep (Power Summation): Starting from the leaf nodes (end nodes) and moving backwards towards the root node, calculate the power flow in each branch. For each node j (starting from end nodes):
- Forward Sweep (Voltage Update): Starting from the root node and moving forward towards the leaf nodes, update the voltage at each node using the branch currents/powers calculated in the backward sweep. For each node j (starting from the root):
- Convergence Check: Check if the change in node voltages between consecutive iterations is below a specified tolerance:
- Loss Calculation (Post-Processing): For each branch :
2.1.2. Processing Method for Nodes with DGs
2.2. Carbon Emission Flow Theory
3. Topology Reconfiguration via Power Loss Minimization
4. Low-Carbon Optimal Dispatch Model
4.1. Objective Function
4.2. Constraints
5. Solution Method of Low-Carbon Dispatch Model
5.1. Moth Flame Optimization Algorithm
- Origin: Starts at the moth’s current position;
- Terminus: Converges at the flame position;
- Boundedness: Fluctuations constrained within the search space.
5.2. Q-Learning Algorithm for Power System Optimization
5.2.1. Markov Decision Process Components
5.2.2. Q-Value Learning Mechanism
5.2.3. Adaptive Exploration Strategy
5.3. Q-Learning Enhanced Moth Flame Optimization
6. Case Study
6.1. 16-Node Three-Feeder Model
- The electromotive force at Node 11 was greater than that at Node 5. In this case, the connecting switch that needed to be closed was 15. At this time, the alternative options that could conform to the were: opening the segmented Switch 16, 18 or 19, totaling three options;
- The electromotive force at Node 10 was greater than that at Node 14. In this case, the connecting switch that needed to be closed was 21. At this time, the alternative options that could conform to the were: opening the segmented switch 16 or 17, totaling two options;
- The electromotive force at Node 7 was greater than that at Node 16. In this case, the connecting switch that needed to be closed was 26. At this time, the alternative options that can conform to the were: opening the segmented Switch 11, 13 or 14, totaling three options.
6.2. Cases and Algorithms Comparison
6.2.1. Cases Comparison
6.2.2. Algorithms Comparison
- CPU: Intel(R) Core(TM) Ultra 7 155H @3.80 GHz;
- RAM: 32 GB;
- Simulation Tool: MATLAB/Simulink R2023b;
- Power Flow Solver: Forward/Backward Sweep (FBS).
7. Conclusions
- By introducing the carbon flow theory and integrating the electricity-oriented and carbon-oriented perspectives, low carbon dispatching of the distribution network system was effectively achieved. Coupled with the distribution network reconfiguration method, low carbon operation of the distribution network was realized.
- A multi-objective DN topology reconfiguration model was constructed, which took into account both the economic efficiency and low carbon characteristics of distribution network dispatching.
- The QMFO algorithm was proposed, enabling effective solution of the proposed model.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
References
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Gas Turbine | PV | Topology Reconfiguration | |
---|---|---|---|
Case 1 | Yes | No | No |
Case 2 | Yes | Yes | No |
Case 3 | Yes | Yes | Yes |
Power Loss (MW) | Carbon Emission (Tons) CO2 | Cost (M CNY) | |
---|---|---|---|
Case 1 | 924.646 | 34,059.671 | 48.670 |
Case 2 | 772.907 | 31,558.541 | 44.781 |
Case 3 | 463.733 | 30,758.782 | 43.815 |
Parameter | Q-Learning | MFO | QMFO |
---|---|---|---|
Population | - | 50 | 50 |
Subpopulation | - | 3 | 3 |
Penalty factor | 1 × 108 | 1 × 108 | 1 × 108 |
Learning rate | 0.7 | - | 0.7 |
0.5 | - | 0.5 | |
0.1 | - | 0.1 | |
Max iterations (per unit hour) | 20 | 20 | 20 |
Algorithm | Avg. Time (s) (Per Unit Hour) | Avg. Convergence Iterations (Per Unit Hour) | Avg. Cost (M CNY) | Standard Deviation | Min Cost | Max Cost |
---|---|---|---|---|---|---|
Q-learning | 1.413 | 7.821 | 43.8155 | 1.5 × 10−3 | 43.8134 | 43.8180 |
MFO | 1.71 | 2.741 | 43.8157 | 7.2 × 10−4 | 43.8146 | 43.8169 |
QMFO | 1.165 | 1.535 | 43.8146 | 3.7 × 10−4 | 43.8138 | 43.8152 |
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Fu, R.; Xia, G.; Hu, S.; Zhang, Y.; Li, H.; Shi, J. Integrated Carbon Flow Tracing and Topology Reconfiguration for Low-Carbon Optimal Dispatch in DG-Embedded Distribution Networks. Mathematics 2025, 13, 2395. https://doi.org/10.3390/math13152395
Fu R, Xia G, Hu S, Zhang Y, Li H, Shi J. Integrated Carbon Flow Tracing and Topology Reconfiguration for Low-Carbon Optimal Dispatch in DG-Embedded Distribution Networks. Mathematics. 2025; 13(15):2395. https://doi.org/10.3390/math13152395
Chicago/Turabian StyleFu, Rao, Guofeng Xia, Sining Hu, Yuhao Zhang, Handaoyuan Li, and Jiachuan Shi. 2025. "Integrated Carbon Flow Tracing and Topology Reconfiguration for Low-Carbon Optimal Dispatch in DG-Embedded Distribution Networks" Mathematics 13, no. 15: 2395. https://doi.org/10.3390/math13152395
APA StyleFu, R., Xia, G., Hu, S., Zhang, Y., Li, H., & Shi, J. (2025). Integrated Carbon Flow Tracing and Topology Reconfiguration for Low-Carbon Optimal Dispatch in DG-Embedded Distribution Networks. Mathematics, 13(15), 2395. https://doi.org/10.3390/math13152395