Submitted:
20 January 2025
Posted:
21 January 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Power System Supply and Demand Flexibility and Quantitative Model
2.1. Quantification of Flexibility Requirements Considering Spatiotemporal Correlation and Uncertainty
2.1.1. Wind and Photovoltaic Power Generation based on Copula Theory
2.1.2. Quantifying Flexibility Requirements

2.2. Analysis of Flexibility Resources and Flexibility Supply Capabilities
2.2.1. Conventional Units
2.2.2. Pumped Storage Power Station
2.2.3. Conventional Transferable Load
2.2.4. Cluster Electric Vehicles

2.3. Flexibility Balance
2.4. Model Transformation
2.4.1. Conventional Unit Constraints
2.4.2. Pumped Storage Power Station Constraints
2.4.3. Conventional Transferable Load Constraints
3. Based on a Data-Driven DRO Model
3.1. Deterministic Model
3.2. Two-Stage DRO Model
4. Two-Stage Model Solving Algorithm
- Start
-
Collect historical wind-photovoltaic-load dataGather historical sample data for wind, photovoltaic, and load.
-
Construct copula temporal and spatial correlation output setUse the collected data to build the Copula temporal and spatial correlation output set.
-
Initialize iteration parametersSet the lower bound LB of the second-stage cost to -∞ and the upper bound UB to +∞.Set the iteration counter l to 1.
-
Main problem optimizationSolve the main optimization problem considering the worst-case scenario probability distribution.Update the upper bound UB and lower bound LB based on the solution.
-
Check iteration termination conditionsIf the termination conditions (e.g., convergence of UB and LB, maximum number of iterations reached) are met, proceed to the next step.Otherwise, go back to the Main Problem Optimization step.
-
Update worst-case scenario probability distributionSolve the subproblem to update the probability distribution of the worst-case scenario.
-
Obtain optimal solutionAfter the iteration terminates, obtain the optimal solution for the wind-photovoltaic-load management problem.
- End
5. Results and Discussion
5.1. Power System Flexibility Balancing Results
5.2. Analysis of Flexibility Adjustment Capacity for Flexibility Resources
5.3. Conservativeness Analysis of Data-Driven DRO Models
5.4. Comparative Analysis with Other Uncertainty Optimization Methods
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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| Unit equipment | Variable | Numerical value |
| Electric vehicle | N[9,1]h | |
| N[20,2]h | ||
| 6kW | ||
| -6kW | ||
| N[25.6,6.4]kW·h | ||
| 6.4kW·h | ||
| 64kW·h | ||
| 64kW·h | ||
| 0.64 | ||
| Thermal unit | 300kW | |
| 1500kW | ||
| 280kW/h | ||
| Pumped storage | 1000kW·h | |
| 300kW·h | ||
| 0.38 | ||
| 500kW | ||
| 500kW·h | ||
| 0.85 | ||
| Conventional transferable load | 0.32 | |
| 2840kW·h | ||
| 50kW·h | ||
| 250kW·h |
| Scheme | Operation cost/RMB | Total operation cost/RMB | Flexibility gap/(kW·h) | |||
| Thermal unit | Transferable load | Electric vehicle | Pumped storage | |||
| 1 | 22116.6 | 0 | 0 | 1232.1 | 23348.7 | 4445 |
| 2 | 20821.2 | 834.1 | 190.6 | 1077.2 | 22923.1 | 1311 |
| 3 | 20903.9 | 910.5 | 218.3 | 1080.1 | 23112.8 | 48 |
| 4 | 22221.1 | 0 | 0 | 1301.2 | 23522.3 | 3982 |
| M | Operation cost/RMB | Total operation cost/RMB | Flexibility gap/(kW·h) | |||
| Thermal unit | Transferable load | Electric vehicle | Pumped storage | |||
| 500 | 20903.9 | 910.5 | 218.3 | 1080 | 23112.8 | 48.0 |
| 1000 | 20653.2 | 899.2 | 209.2 | 1002 | 22763.6 | 46.2 |
| 2000 | 20611.5 | 873.4 | 201.3 | 1002 | 22688.3 | 41.9 |
| 5000 | 20542.8 | 868.4 | 201.3 | 1002 | 22614.5 | 41.9 |
| K | Operation cost/RMB | Total operation cost/RMB | Flexibility gap/(kW·h) | |||
| Thermal unit | Transferable load | Electric vehicle | Pumped storage | |||
| 500 | 20903.9 | 910.5 | 218.3 | 1080 | 23112.7 | 48.0 |
| 1000 | 20921.1 | 914.2 | 221.2 | 1082 | 23138.5 | 48.0 |
| 2000 | 20958.3 | 916.1 | 222.5 | 1086 | 23182.9 | 52.8 |
| 5000 | 20961.9 | 922.3 | 228.1 | 1090 | 23202.3 | 74.0 |
| K | Operation cost/RMB | Total operation cost/RMB | Flexibility gap/(kW·h) | |||
| Thermal unit | Transferable load | Electric vehicle | Pumped storage | |||
| 500 | 20903.9 | 910.5 | 218.3 | 1080 | 23112.7 | 48.0 |
| 1000 | 20921.1 | 914.2 | 221.2 | 1082 | 23138.5 | 48.0 |
| 2000 | 20958.3 | 916.1 | 222.5 | 1086 | 23182.9 | 52.8 |
| 5000 | 20961.9 | 922.3 | 228.1 | 1090 | 23202.3 | 74.0 |
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