Co-Optimization of Market and Grid Stability in High-Penetration Renewable Distribution Systems with Multi-Agent
Abstract
:1. Introduction
- A dynamic electricity price-driven multi-agent transaction model is developed, embedding network loss costs and voltage sensitivity into market mechanisms. This establishes a collaborative mechanism between economic objectives and grid security boundaries through price-guided energy storage dispatch sequences.
- A spatiotemporal response matrix is constructed for four vehicle types (taxis, buses, official vehicles, and private cars), creating a dynamic matching model between charging behavior characteristics and grid flexibility demands, and overcoming the rigidity of conventional homogeneous scheduling methods.
- A deep coupling interface is designed to integrate market signals with physical regulation, enabling the self-organized optimization of “source–grid–load–storage” resources across temporal price incentives and spatial reactive power coordination.
2. Multi-Agent Operation Model
2.1. DG Output Model
2.2. EV Load Model
3. Multi-Agent Optimal Operation Model in the Market Environment
3.1. DG Optimal Output Model in Market Environment
3.2. Price-Responsive EV Ordered Charging Optimization Model
3.2.1. Dynamic Adjustment Mechanism for Charging Time Windows
3.2.2. Differentiated Scheduling Model for Multi-Class EVs
4. Multi-Objective Reactive Power Optimization Model
4.1. Objective Function
4.2. Constraint Conditions
5. MOPSO Algorithm
5.1. Principle of the PSO Algorithm
5.2. Principle of the MOPSO Algorithm
6. Example Analysis
6.1. IEEE 33-Node Example
6.2. DG Output and EV Load Profiles
6.2.1. Load Profiles
6.2.2. DG Output Profiles
6.3. Optimization Analysis Results
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Types of EVs | Charging Start Time | Initial SOC | ||
---|---|---|---|---|
Probability Distribution Type | Charging Period | Charging Ratio | ||
Taxi | N(μ, σ2) | 0:00–8:00 | 0.1 V | N(μ, σ2) |
Uniform distribution | 8:00–20:00 | 0.8 U | N(μ, σ2) | |
N(μ, σ2) | 20:00–24:00 | 0.1 V | N(μ, σ2) | |
Bus | Uniform distribution | 12:00–18:00 | 0.6 U | N(μ, σ2) |
N(μ, σ2) | 23:00–24:00 | 0.4 V | N(μ, σ2) | |
Official car | Uniform distribution | 10:00–20:00 | 0.7 V | N(μ, σ2) |
Uniform distribution | 8:00–24:00 | 0.25 U | N(μ, σ2) | |
N(μ, σ2) | 0:00–8:00 | 0.05 U | N(μ, σ2) | |
Private car | N(μ, σ2) | 0:00–8:00 | 0.04 U | N(μ, σ2) |
N(μ, σ2) | 8:00–12:00 | 0.08 U | N(μ, σ2) | |
N(μ, σ2) | 15:00–19:00 | 0.08 U | N(μ, σ2) | |
Uniform distribution | 0:00–24:00 | 0.8 V | N(μ, σ2) |
Contract Price of DG (CNY/MWh) | Case 1 | Case 2 | Case 3 |
---|---|---|---|
PVs | 850 | 850 | 800 |
WTs | 800 | 850 | 850 |
Scene | Average Voltage Amplitude/pu | Mean Voltage Standard Deviation |
---|---|---|
The DG is not connected | 0.9288 | 0.04455 |
The unoptimized DG has been connected | 1.009 | 0.03492 |
The case 1-optimized DG has been connected | 1.015 | 0.03153 |
The case 2-optimized DG has been connected | 1.016 | 0.03206 |
The case 3-optimized DG has been connected | 1.016 | 0.03156 |
Scene | Network Loss/kW |
---|---|
The DG is not connected | 296.9 |
The unoptimized DG has been connected | 207.3 |
The case 1-optimized DG has been connected | 178.9 |
The case 2-optimized DG has been connected | 192.5 |
The case 3-optimized DG has been connected | 185.8 |
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Jia, D.; Ren, Z.; Liu, K. Co-Optimization of Market and Grid Stability in High-Penetration Renewable Distribution Systems with Multi-Agent. Energies 2025, 18, 3209. https://doi.org/10.3390/en18123209
Jia D, Ren Z, Liu K. Co-Optimization of Market and Grid Stability in High-Penetration Renewable Distribution Systems with Multi-Agent. Energies. 2025; 18(12):3209. https://doi.org/10.3390/en18123209
Chicago/Turabian StyleJia, Dongli, Zhaoying Ren, and Keyan Liu. 2025. "Co-Optimization of Market and Grid Stability in High-Penetration Renewable Distribution Systems with Multi-Agent" Energies 18, no. 12: 3209. https://doi.org/10.3390/en18123209
APA StyleJia, D., Ren, Z., & Liu, K. (2025). Co-Optimization of Market and Grid Stability in High-Penetration Renewable Distribution Systems with Multi-Agent. Energies, 18(12), 3209. https://doi.org/10.3390/en18123209