A Multi-Time Scale Hierarchical Coordinated Optimization Operation Strategy for Distribution Networks with Aggregated Distributed Energy Storage
Abstract
:1. Introduction
- A DES aggregation method based on the inner approximation of the Minkowski Sum is proposed, where zonotope is employed to characterize the feasible region of individual DES units, resolving the computational intractability of the Minkowski Sum in high-dimensional spaces.
- A multi-time scale hierarchical coordinated optimization operation model for DNs based on scenario analysis and chance constraints is established, which is transformed into a second-order cone programming (SOCP) model based on the second-order cone relaxation and linearization method for quadratic constraint to improve the solution efficiency.
- A power allocation method for the DES cluster based on the water-filling algorithm (WFA) is proposed, which preserves the total power flexibility of the DES cluster to a greater extent.
2. Distributed Energy Storage Aggregation Model Based on Inner Approximation of Minkowski Sum
2.1. Characterization of Feasible Region for Individual Distributed Energy Storage Resources
2.2. Characterization of Feasible Region for Distributed Energy Storage Clusters Based on Zonotope
- Objective functions
- 2.
- Calculation of parameters related to the original feasible region approximation index
- 3.
- Constraints
3. Multi-Time Scale Hierarchical Coordinated Optimization Strategy for Distribution Networks with Aggregated Distributed Energy Storage
- Day-ahead scheduling: The time scale is set to 1 h, with a scheduling period of 24 h. Considering the wear and tear costs associated with frequent and rapid adjustments of controllable generation units, gas turbines (GTs) are controlled once per hour in the day-ahead scheduling. The day-ahead scheduling determines the on/off states of GTs, power purchase plans from the upstream grid, the participation schedules of DES clusters at each node, and their participation quantities. These determined quantities are then directly fed into the intra-day rolling optimization as fixed variables.
- Intra-day rolling optimization: The time scale is set to 15 min, with an execution cycle of 4 h. During each control cycle, imbalance caused by the output fluctuations of renewable energy units, as well as the load fluctuations of users, is balanced by adjustments from ESS, GTs, and power purchases. In the intra-day scheduling, the on/off states of ESS need to be determined to correct deviations between the day-ahead scheduling plans and actual conditions.
- Real-time coordinated control: The execution cycle is set to 5 min. The objective is to use the intra-day rolling optimization curve as a reference and to implement real-time coordinated control strategies to correct actual operating conditions and minimize deviations.
3.1. Day-Ahead Optimal Scheduling Model
3.1.1. Objective Function
3.1.2. Constraints
- Power Balance Constraint:
- 2.
- GT Operation Constraints:
- 3.
- PV Output Constraints:
- 4.
- ESS Constraints:
- 5.
- DN Power Flow Constraints:
- 6.
- DES Cluster Constraints:
3.2. Intra-Day Rolling Optimization Scheduling Model
3.2.1. Objective Function
3.2.2. Constraints
3.3. Real-Time Optimization Scheduling Model
3.3.1. Objective Function
3.3.2. Constraints
4. Power Allocation Method Within Distributed Energy Storage Aggregates Based on the Water-Filling Algorithm
Algorithm 1. Water-Filling Algorithm WFA |
1. , which divides the range of v into L + 1 intervals. |
2. |
3. |
4. |
5. |
6. |
7. else |
8. Update j = j + 1 and return to step 3 |
9. end if |
10. end for |
5. Case Studies
5.1. Regulation Requirements of Distributed Energy Storage
5.2. Analysis of Day-Ahead Scheduling Results
5.3. Analysis of Intra-Day Scheduling Results
5.4. Real-Time Scheduling Results
5.5. Power Decomposition Results of Distributed Energy Storage Clusters
5.6. Analysis of the Regulation Efficiency of Distributed Energy Storage
5.6.1. Supply Assurance Effect
5.6.2. Accommodation Effect
5.6.3. Cost and Environmental Value
6. Conclusions
- Considering the participation of DES resource clusters in the optimal operation of DNs can reduce operational costs, improve the operational reliability of the DN, and enhance the renewable energy accommodation rate.
- The proposed multi-time scale optimization operation method effectively utilizes the fast regulation capabilities of ESS and DES resources, thereby improving the accuracy of the system’s response to forecast data.
- The application of the WFA for decomposing control commands of the DES clusters effectively balances the loads of individual DES units, optimizes resource allocation, and provides a feasible solution for large-scale distributed DES deployment.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Pmax/MW | Pmin/MW | a/($/(MW))2 | b/($/MW) | C/$ | Climbing Rate/(MW/h) | Minimum Switching Time/h |
---|---|---|---|---|---|---|
100 | 10 | 0.375 | 400 | 375 | 35 | 2 |
Scenarios | Probabilities |
---|---|
1 | 0.01 |
2 | 0.22 |
3 | 0.455 |
4 | 0.125 |
5 | 0.19 |
Scenarios | Probabilities |
---|---|
1 | 0.565 |
2 | 0.435 |
Scenarios | Voltage Overrun | Power Overrun | Overload |
---|---|---|---|
Before DES Integration | 2.47% | 0.65% | 6.46% |
After DES Integration | 0% | 0% | 0% |
Scenarios | Accommodation Rate Before DES Integration | Accommodation Rate After DES Integration |
---|---|---|
1 | 95.90% | 100% |
2 | 96.67% | 100% |
3 | 97.36% | 100% |
4 | 96.20% | 99.14% |
5 | 96.58% | 98.95% |
Scenarios | Carbon Emission Allowance | Carbon Emissions | Carbon Emission Cost |
---|---|---|---|
Before DES Integration | 2407.9 T | 1633.2 T | −38,736 CNY |
After DES Integration | 2399.4 T | 1607.4 T | −39,605 CNY |
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Liu, J.; Niu, C.; Zhang, Y.; Xie, A.; Lu, R.; Yu, S.; Qiao, S.; Lin, Z. A Multi-Time Scale Hierarchical Coordinated Optimization Operation Strategy for Distribution Networks with Aggregated Distributed Energy Storage. Appl. Sci. 2025, 15, 2075. https://doi.org/10.3390/app15042075
Liu J, Niu C, Zhang Y, Xie A, Lu R, Yu S, Qiao S, Lin Z. A Multi-Time Scale Hierarchical Coordinated Optimization Operation Strategy for Distribution Networks with Aggregated Distributed Energy Storage. Applied Sciences. 2025; 15(4):2075. https://doi.org/10.3390/app15042075
Chicago/Turabian StyleLiu, Junhui, Chengeng Niu, Yihan Zhang, Anbang Xie, Rao Lu, Shunjiang Yu, Siyuan Qiao, and Zhenzhi Lin. 2025. "A Multi-Time Scale Hierarchical Coordinated Optimization Operation Strategy for Distribution Networks with Aggregated Distributed Energy Storage" Applied Sciences 15, no. 4: 2075. https://doi.org/10.3390/app15042075
APA StyleLiu, J., Niu, C., Zhang, Y., Xie, A., Lu, R., Yu, S., Qiao, S., & Lin, Z. (2025). A Multi-Time Scale Hierarchical Coordinated Optimization Operation Strategy for Distribution Networks with Aggregated Distributed Energy Storage. Applied Sciences, 15(4), 2075. https://doi.org/10.3390/app15042075