Research on the Low-Carbon Economic Operation Optimization of Virtual Power Plant Clusters Considering the Interaction Between Electricity and Carbon
Abstract
1. Introduction
1.1. Literature Review
1.2. Contributions
- Electricity–carbon interactive architecture:
- Privacy-preserving distributed optimization:
- Improved ADMM algorithm:
2. Framework of VPPC
3. Distributed Operation Model of VPPC Based on Nash Negotiation
3.1. Nash Bargaining Model of Cooperative Game
3.1.1. Basic Principle of Nash Negotiation
3.1.2. Nash Negotiation Model of VPPC
- Subproblem 1 guarantees the solution lies on the Pareto frontier (i.e., no other feasible physical schedule yields a higher total gain total achievable coalition gain), satisfying the collective optimality requirement.
- Subproblem 2, using the bargaining indices derived from Subproblem 1’s KKT conditions (which encode sensitivity at the optimum), ensures the distribution of total achievable coalition gain adheres to the proportional fairness inherent in the Nash product. The combined solution therefore satisfies the necessary optimality conditions for the original problem.
3.2. Calculation of the Individual Benefits of VPPs Under the Cooperative Alliance
3.2.1. Objective Function
- Interaction Cost with the External Market
- P2P Interaction Cost
- Carbon Cost
- Carbon Sequestration and Transportation Costs
- Operation and Maintenance Cost
- Interruptible Load Compensation Cost
Constraints
- Power Balance Constraint
- P2P Transaction Constraint
- P2P price transaction constraint
- Other constraints
3.3. Uncertainty Measurement of VPPs Based on Conditional Value at Risk
3.4. Distributed Optimization Model for Cluster Operation
3.4.1. Subproblem 1: Model for Minimizing the Total Cost of the VPPC
3.4.2. Subproblem 2: Model for Minimizing the Operating Cost of Each VPP
4. Model Solution Method and Solution Process
4.1. ADMM Computational Framework
4.2. Improved ADMM Method
4.3. Model Solution Process
5. Case Analysis
5.1. Basic Data
5.2. Result of Operation Optimization
5.2.1. Operation Results of the VPPC
- VPP1
- VPP2
- VPP3
5.2.2. Power Interaction Situation
5.2.3. Interaction Situation of Carbon Emission Allowances
5.2.4. Economic Analysis of VPPC
5.2.5. Analysis of the Low Carbon Nature of the VPPC
5.2.6. Performance Comparison: Original vs. Improved ADMM
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
VPPC | Virtual Power Plant Cluster |
VPP | Virtual Power Plant |
CCS | Carbon Capture and Storage |
P2G | Power-to-Gas |
ADMM | Alternating-Direction Method of Multipliers |
CHP | Combined Heat and Power |
WT | Wind Turbine |
PV | Photovoltaic |
EES | Electrical Energy Storage |
TES | Thermal Energy Storage |
GT | Gas Turbine |
WHB | Waste Heat Boiler |
GB | Gas Boiler |
CVaR | Conditional Value at Risk |
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VPP | WT | PV | GT | Electric Load/Electricity Demand Response | Heat Load/Thermal Demand Response | Waste Heat Recovery Device | Combined System of P2G and CCS | GB | EB | Energy Storage |
---|---|---|---|---|---|---|---|---|---|---|
VPP1 | × | √ | √ | √ | × | × | √ | × | × | EES |
VPP2 | √ | √ | × | √ | √ | × | × | × | √ | EES |
VPP3 | √ | √ | √ | √ | √ | √ | × | √ | √ | EES, TES |
Equipment | Carbon Quota (kg/kWh) | Carbon Emission Intensity (kg/kWh) | |
---|---|---|---|
CHP | GT | 0.424 | 0.7 power/0.4 heat |
WHB | |||
ORC | |||
GB | 0.21 | 0.29 | |
EB | / | / | |
Power purchase from the power grid | 0.78 | 0.85 | |
WT | 0.078 | / | |
PV | / |
Equipment | Parameters | Value | ||
---|---|---|---|---|
VPP1 | VPP2 | VPP3 | ||
GT | 0.35 | / | 0.35 | |
0/170 kW | / | 0/200 kW | ||
GB | 0.9 | / | / | |
0/100 kW | / | / | ||
EB | 0.9 | 0.92 | 0.9 | |
0/200 kW | 0/180 kW | 0/200 kW | ||
EES | 0.85/0.9 | 0.9/0.96 | 0.85/0.9 | |
60 kW | 100 kW | 80 kW | ||
TES | / | 0.9/0.95 | 0.9/0.95 | |
/ | 60 kW | 100 kW | ||
CCS | 0.65 | 0.65 | ||
/ | 0/50 kW | 0/50 kW | ||
P2G | / | 0.7 | / | |
/ | 0/300 kW | / |
Carbon Trading Volume, /kg | Carbon Trading Price/(yuan/kg) | |
---|---|---|
VPP1–VPP2 | −191.2 | 0.352 |
VPP1–VPP3 | 32.75 | 0.298 |
VPP2–VPP3 | 203.68 | 0.347 |
VPP | Independent Operation Cost | Cluster Operation Cost | |
---|---|---|---|
Total Cost (Including P2P) | P2P Cost | ||
VPP1 | 1732.5 | 1683.23 | 440 |
VPP2 | −1206.55 | −1454 | −802 |
VPP3 | 2298.4 | 2243.95 | 474 |
VPP | Carbon Emission/kg | The Proportion of New Energy Consumption | ||
---|---|---|---|---|
Independent Operation | Cluster Operation | Independent Operation | Cluster Operation | |
VPP1 | 457.57 | 478.04 | 70.92% | 87.75% |
VPP2 | −759.68 | −803.74 | ||
VPP3 | 500.3 | 527.65 |
Iteration Count (Iterations) | Total Solve Time (s) | ||
---|---|---|---|
Subproblem 1 | Subproblem 2 | ||
Original ADMM | 45 | 27 | 202.37 |
Improved ADMM | 28 | 15 | 168.72 |
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Pan, T.; Zhao, Q.; Zhao, J.; Wang, L. Research on the Low-Carbon Economic Operation Optimization of Virtual Power Plant Clusters Considering the Interaction Between Electricity and Carbon. Processes 2025, 13, 1943. https://doi.org/10.3390/pr13061943
Pan T, Zhao Q, Zhao J, Wang L. Research on the Low-Carbon Economic Operation Optimization of Virtual Power Plant Clusters Considering the Interaction Between Electricity and Carbon. Processes. 2025; 13(6):1943. https://doi.org/10.3390/pr13061943
Chicago/Turabian StylePan, Ting, Qiao Zhao, Jiangyan Zhao, and Liying Wang. 2025. "Research on the Low-Carbon Economic Operation Optimization of Virtual Power Plant Clusters Considering the Interaction Between Electricity and Carbon" Processes 13, no. 6: 1943. https://doi.org/10.3390/pr13061943
APA StylePan, T., Zhao, Q., Zhao, J., & Wang, L. (2025). Research on the Low-Carbon Economic Operation Optimization of Virtual Power Plant Clusters Considering the Interaction Between Electricity and Carbon. Processes, 13(6), 1943. https://doi.org/10.3390/pr13061943