Emergency Dispatch Approach for Power Systems with Hybrid Energy Considering Thermal Power Unit Ramping
Abstract
:1. Introduction
- The multiagent system and consensus algorithm were used to solve the resource allocation problem of the power system with hybrid energy, and the distributed approach was used to provide the energy supply to the demand side.
- In modeling, the degradation cost of energy storage, the economic cost of thermal power units, and the pollution cost are jointly optimized, and a discrete consensus algorithm is used to find the optimal solution to complete the autonomous communication interaction between thermal power and energy storage.
- The consensus algorithm is improved by considering the ramping rate of thermal power units, setting the original communication interval to a variable communication interval matching the ramping of the units, and guiding the change of incremental cost value through power. The energy storage is replenished by the communication established with the thermal power for energy storage and energy use.
2. Problem Description
2.1. System Composition
2.2. System Optimization and Scheduling
3. Consensus Algorithm Considering the Ramp Rate of the Unit
3.1. Ramp Rate of the Unit
3.2. Improved Consensus Algorithm Considering the Ramp Climbing Rate
3.2.1. Graph Theoretical Foundation
3.2.2. Consensus Algorithm
3.2.3. Consensus Algorithm for Power System Scheduling
3.2.4. Improved Consensus Algorithm
4. Emergency Dispatch Model
4.1. Objective Function
4.1.1. Generation Cost of Conventional Thermal Power Units
4.1.2. Pollution Cost of Conventional Thermal Power Units
4.1.3. Battery Degradation Cost
4.2. Constraints
4.2.1. Thermal Power Unit Climbing Constraint
4.2.2. Minimum Start–Stop Time Constraint
4.2.3. Power Balance Constraint
4.2.4. Generator Output Power Constraint
4.2.5. Battery Output Power Constraint
4.2.6. Battery State of Charge (SOC) Constraint
4.3. Solution Steps
5. Case Study
5.1. System Structure
5.2. Algorithm Comparison
5.3. Results Analysis
5.3.1. Test 1
5.3.2. Test 2
5.3.3. Test 3
5.3.4. Test 4
- (1)
- Storing excess renewable energy power and reducing the rate of wind (light) abandonment.
- (2)
- Participating in daily dispatching to reduce the generation output of thermal power units and reduce carbon emissions.
- (3)
- Smoothing out the system power imbalance caused by unit ramp climbing and maintaining system stability.
5.4. Energy Distribution in Energy Storage Plants
5.5. Emergency Dispatch
5.5.1. Test 1
5.5.2. Test 2
5.5.3. Test 3
6. Conclusions
- (1)
- Taking into account the degradation cost of energy storage, it can be optimized jointly with thermal units to achieve consistent incremental costs and enable local autonomous communication between agents.
- (2)
- Energy storage, as a flexible resource, provides a very strong flexibility enhancement to the power system. There is a growing need to integrate more flexible resources into the system in order to cope with the increasing uncertainty of the grid.
- (3)
- By considering the ramp rate of thermal power units, resetting the communication intervals can solve the power imbalance problem of the consensus algorithm during emergency dispatch in the system.
- (4)
- Experimental analysis shows that using the improved consensus algorithm can ensure the reasonable allocation of resources during emergency dispatching in the system, enabling the tested system in this paper to achieve the effect of emergency disposal in about 10 s~150 s and ensure power balance within this period, thereby improving the flexibility and reliability of the system operation.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
Energy Storage Power Station | Agent | Location | h | g | (RMB) | Number of Batteries | |||
---|---|---|---|---|---|---|---|---|---|
PB1 | Agent7 | 3 | 1.0460 | 0.2037 | −60 | 60 | 5000 | 1230 | 1000 |
PB2 | Agent8 | 6 | 1.2309 | 0.2815 | −60 | 65 | |||
PB3 | Agent9 | 10 | 1.0292 | 0.1987 | −60 | 68 |
Generator | Agent | Location | a | b | c | d | e | f | Climbing Rate (MW/min) |
---|---|---|---|---|---|---|---|---|---|
PG1 | Agent1 | 5 | 10 | 150 | 120 | 13.85932 | 0.32767 | 0.00419 | 6 |
PG2 | Agent2 | 11 | 10 | 150 | 120 | 13.85932 | 0.32767 | 0.00419 | 5 |
PG3 | Agent3 | 1 | 20 | 180 | 40 | 40.2669 | −0.54551 | 0.00683 | 10 |
PG4 | Agent4 | 8 | 10 | 100 | 60 | 40.2669 | −0.54551 | 0.00683 | 8 |
PG5 | Agent5 | 2 | 20 | 180 | 40 | 42.89553 | −0.51116 | 0.00461 | 10 |
PG6 | Agent6 | 13 | 10 | 150 | 100 | 42.89553 | −0.51116 | 0.00461 | 4 |
Appendix B
Time Period | 6:00–7:00 | 7:00–8:00 | 8:00–9:00 | 11:00–12:00 | 12:00–13:00 | 13:00–14:00 | 14:00–15:00 | 15:00–16:00 |
Duration | 18 s | 270 s | 277 s | 195 s | 187 s | 67 s | 20 s | 18 s |
Time Period | 16:00–17:00 | 17:00–18:00 | 18:00–19:00 | 19:00–20:00 | 20:00–21:00 | 21:00–22:00 | 22:00–23:00 | 23:00–24:00 |
Duration | 156 s | 80 s | 30 s | 108 s | 48 s | 15 s | 78 s | 72 s |
Time Period | 7:00–8:00 | 8:00–9:00 | 11:00–12:00 | 12:00–13:00 | 13:00–14:00 | 14:00–15:00 | 16:00–17:00 | 17:00–18:00 |
Duration | 179 s | 156 s | 110 s | 108 s | 37 s | 10 s | 80 s | 45 s |
Time Period | 18:00–19:00 | 19:00–20:00 | 20:00–21:00 | 22:00–23:00 | 23:00–24:00 | |||
Duration | 20 s | 66 s | 20 s | 45 s | 45 s |
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Zhou, B.; Wu, J.; Zang, T.; Cai, Y.; Sun, B.; Qiu, Y. Emergency Dispatch Approach for Power Systems with Hybrid Energy Considering Thermal Power Unit Ramping. Energies 2023, 16, 4213. https://doi.org/10.3390/en16104213
Zhou B, Wu J, Zang T, Cai Y, Sun B, Qiu Y. Emergency Dispatch Approach for Power Systems with Hybrid Energy Considering Thermal Power Unit Ramping. Energies. 2023; 16(10):4213. https://doi.org/10.3390/en16104213
Chicago/Turabian StyleZhou, Buxiang, Jiale Wu, Tianlei Zang, Yating Cai, Binjie Sun, and Yiwei Qiu. 2023. "Emergency Dispatch Approach for Power Systems with Hybrid Energy Considering Thermal Power Unit Ramping" Energies 16, no. 10: 4213. https://doi.org/10.3390/en16104213
APA StyleZhou, B., Wu, J., Zang, T., Cai, Y., Sun, B., & Qiu, Y. (2023). Emergency Dispatch Approach for Power Systems with Hybrid Energy Considering Thermal Power Unit Ramping. Energies, 16(10), 4213. https://doi.org/10.3390/en16104213