Flexibility Resource Planning and Stability Optimization Methods for Power Systems with High Penetration of Renewable Energy
Abstract
1. Introduction
- A virtual network coupling modeling method has been implemented to address topological constraints during network reconfiguration. In the planning stage, this method effectively resolves radiality constraints, facilitates truthful topology optimization, and improves operational efficiency. Moreover, accurate topology modeling contributes to the stable operation of the distribution network.
- A CVaR-based risk quantification framework has been established to manage uncertainties arising from extreme weather and fault risks. By integrating CVaR into the bi-level optimization model, an effective balance between investment costs and operational risks is achieved. Compared to traditional deterministic methods, this approach handles uncertainties more effectively, thereby enhancing system robustness and economic efficiency.
- A coordinated planning model for multiple flexibility resources has been developed to enable the integrated configuration of micro gas turbines, ESSs, intelligent soft switches, and other resources. Through a bi-level optimization framework that coordinates planning and operational decisions, and with the aid of a hybrid SA-PSO algorithm, the solution performance is significantly improved. Compared with single-resource configuration methods, this approach markedly enhances overall system benefits and operational resilience.
2. Modeling Methods for Multi-Type Flexibility Resources
2.1. Microturbine Model
2.2. Soft Open Point Model
2.3. On-Load Tap Changer Model
2.4. Capacitor Bank Model
2.5. Demand Response Model
2.5.1. Price-Based Demand Response
2.5.2. Incentive-Based Demand Response
2.6. Energy Storage System Model
3. Planning Method for Power System Flexibility Resources Considering Network Reconfiguration and Fault Risk
3.1. Virtual Network Coupling-Based Reconfiguration
- The network topology must not contain closed loops.
- All buses must remain connected to the power source.
3.2. CVaR-Based Fault Risk Quantification and Planning
- Planning Layer
- 2.
- Operation Layer
4. Model Solution
Algorithm 1: SA-PSO for Solving the Bi-Level Flexibility Resource Planning Model |
Input:
2: Set current temperature , iteration 3: while k < MaxIter do 4: for each particle i = 1 to N do 5: Input current particle into the lower-level model 6: Solve lower-level operation problem via SOCP to get cost 7: Evaluate fitness of particle i using upper-level objective 8: Update and if needed 9: end for 10: for each particle i = 1 to N do 11: Update velocity using PSO update rule 12: Update position 13: Calculate 14: if then 15: Accept new solution 16: else 17: Accept with probability 18: end if 19: end for 20: //Simulated annealing cooling 21: 22: end while 23: Return optimal solution |
5. Case Study
5.1. Parameter Settings
5.2. Impact Analysis of Coordinated Planning of Multiple Flexible Resources
5.3. Analysis of System Operation Results Under Multiple Flexibility Resource Deployment
5.4. Comparison of Planning Outcomes
5.5. Parameter Analysis of the CVaR Model
5.6. Performance Analysis of the Algorithm
5.7. Voltage Quality Analysis
6. Conclusions
- By introducing the virtual network coupling modeling method to handle topological constraints in network reconfiguration, the proposed approach significantly improves computational efficiency while ensuring radial operation requirements. This method effectively resolves the complexity challenges in traditional network reconfiguration modeling and provides rapid topology adjustment capabilities for fault isolation and power restoration, enhancing both the accuracy of topological decision-making and the overall system operational flexibility.
- The proposed CVaR-based risk quantification framework offers a comprehensive approach to managing extreme weather uncertainties and fault risks by incorporating conditional value-at-risk into the bi-level optimization model. By tuning risk preference parameters, system planners can effectively balance investment costs and operational risks under uncertain conditions, improving system robustness and economic performance while enhancing the system’s resilience against extreme events.
- The coordinated multi-type flexibility resource planning model significantly increases system operational efficiency and resilience. By integrating microturbines, energy storage systems, and soft open points through the bi-level optimization framework combined with the SA-PSO hybrid algorithm, the proposed method achieves superior overall benefits compared to single-resource configuration approaches, demonstrating substantial improvements in both system reliability and economic viability while contributing to the sustainable development of modern power systems.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviation
CVaR | Conditional Value-at-Risk | / | Shiftable load transferred in and out |
SA-PSO | Simulated Annealing–Particle Swarm Optimization | Whether load is reduced | |
PV | Photovoltaic | / | Whether load is shifted in/out |
PSO | Particle Swarm Optimization | / | Charging and discharging power |
SA | Simulated Annealing | / | Binary about charging/discharging state |
MT | Microturbine | Energy level of ESS | |
SOP | Soft Open Point | State of charge of ESS | |
OLTC | On-Load Tap Changer | Parameters | |
CB | Capacitor Bank | Initial state of microturbine | |
DR | Demand Response | Initial output power of microturbine | |
VaR | Value at Risk | / | Upward/Downward ramp rates |
SOCP | Second-Order Cone Programming | / | Maximum upward/downward ramping power |
ESS | Energy Storage System | Converter capacity of the SOP | |
Indices | / | Loss coefficients of SOP converters | |
i/j | Index of distribution network bus | / | Absolute values of sine of power factor angles |
t | Index of time | / | Resistance and reactance of branch ij |
s | Index of scenario | Maximum tap position of the OLTC | |
Variables | Tap adjustment step size for OLTC | ||
On/off status | Reactive power compensation of a single capacitor unit | ||
/ | microturbine start-up/shutdown | Maximum number of capacitor units available at bus i | |
/ | Active/reactive power injected by SOP | / | Time-of-use electricity prices |
Active power loss of the SOP | Cooling load | ||
/ | Active and reactive power flow on branch ij | Time periods for TOU prices | |
Voltage magnitude at bus i | DR cycle period | ||
Current on branch ij | Maximum reducible load | ||
Tap position of OLTC at time t, scenario s | / | Maximum load shift-in/out | |
Reactive power compensation of CB at bus i | / | Start/end times of load reduction | |
Number of capacitor units switched in at bus i | / | Start/end times of load shift-in | |
Change in demand after DR | / | Start/end times of load shift-out | |
Change in electricity price after DR | Maximum reduction duration | ||
/ | Load before/after DR implementation | / | Max charging/discharging power |
/ | Electricity price before/after DR | / | Charging/discharging efficiency |
Reducible load amount | / | Min/max energy storage level |
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Reference | Resource Types | Risk Model | Network Reconfiguration | Optimization | Solution Method |
---|---|---|---|---|---|
[11] | ESS, DR | No | No | Coordinated Planning | MIP |
[12] | ESS, DR, SOP | No | Yes | Three-stage dispatch under constraints | Heuristic |
[13] | ESS | No | Big-M linearization | Deterministic Optimization | MILP |
[15] | ESS | No | Virtual Network | Graph-based Topology Optimization | MILP |
[16] | ESS, DR | No | Yes | Incentive-integrated Modeling | Game-based |
[17] | ESS | No | No | Basic Planning | MIP |
[18] | ESS | CVaR | No | Multi-objective Scheduling | Stochastic Programming |
[19] | DR | CVaR | No | Bi-level Energy Management | Mixed Integer |
[20] | ESS | VaR | No | Risk-constrained Optimization | MILP |
[21] | ESS, DR | No | No | Classical Bi-level | MILP |
[22] | ESS | No | Yes | Bi-level (with topology) | MILP |
This paper | MT, ESS, SOP, DR | CVaR | Virtual Network Coupling | Bi-level (Planning + Operation) | SA–PSO + SOCP |
Parameter | Wind Turbines | PV Systems | ||||
---|---|---|---|---|---|---|
Access Location | 9 | 25 | 32 | 7 | 17 | 22 |
Capacity (kW) | 400 | 400 | 400 | 400 | 400 | 400 |
Scheme | Configuration Object | ||
---|---|---|---|
MT/kW (Location) | ESS/kWh (Location) | SOP/kVA (Location) | |
1 | 800 (5), 800 (10), 300 (18) | 500 (9), 700 (22), 500 (25) | / |
2 | 300 (10), 300 (18), 500 (28) | 700 (9), 300 (17), 400 (22) | / |
3 | 700 (5), 800 (10), 400 (28) | 600 (17), 600 (22), 600 (25) | 300 (9–15), 300 (25–29) |
4 | 500 (5), 300 (16), 500 (28) | 200 (7), 800 (17), 400 (22) | 200 (9–15), 100 (12–22) |
Scheme | Cost Distribution (CNY) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
MT | ESS | SOP | Power Purchase | Wind & Solar Curtailment | Network Loss | SOP Loss | Carbon Emission | O&M Cost | Annual Total | |
1 | 415,192 | 193,355 | / | 237,659 | 12,977 | 159,748 | / | 13,433 | 70,446 | 1,102,810 |
2 | 240,374 | 165,733 | / | 203,781 | 4791 | 125,236 | / | 12,512 | 55,046 | 807,473 |
3 | 415,192 | 202,563 | 65,557 | 170,739 | 0 | 31,526 | 71,178 | 13,506 | 68,382 | 1,038,643 |
4 | 284,079 | 165,733 | 32,778 | 167,609 | 0 | 32,935 | 28,602 | 12,282 | 54,438 | 778,456 |
Scenario Number | Operating Cost (CNY) | |||
---|---|---|---|---|
Network Loss Cost | SOP Loss Cost | Power Purchase Cost | Carbon Emission | |
Typical Scenario 1 | 60 | 187 | 0 | 17 |
Typical Scenario 2 | 239 | 30 | 2975 | 93 |
Typical Scenario 3 | 68 | 12 | 86 | 28 |
Category | Peak Load (kW) | Valley Load (kW) | Peak-Valley Difference (kW) | Peak-Valley Ratio |
---|---|---|---|---|
Original Load Curve | 2988 | 763 | 2225 | 0.745 |
After DR | 2199 | 888 | 1311 | 0.596 |
After ESS + DR | 1929 | 888 | 1041 | 0.540 |
Method | Configuration Scheme Capacity (Location) | Total Planning Cost (CNY) | Total Operating Cost (CNY) | Total Cost (CNY) |
---|---|---|---|---|
Risk-neutral | ESS: 400 (9), 1400 (25), 900 (32) MT: 300 (5), 600 (10), 500 (18) SOP: 200 (12–22), 200 (18–33) | 483,805 | 353,386 | 837,191 |
CVaR | ESS: 1000 (22), 500 (25), 1900 (32) MT: 700 (5), 800 (10), 900 (28) SOP: 200 (9–15), 300 (12–22) | 738,626 | 274,158 | 1,012,784 |
Method | Risk-Neutral | CVaR | ||||||
---|---|---|---|---|---|---|---|---|
Cost Distribution (CNY) | Load Shedding | External Purchase | Other Costs | Total Cost | Load Shedding | External Purchase | Other Costs | Total Cost |
Typical Scenario 1 | 0 | 0 | 895 | 895 | 0 | 0 | 572 | 572 |
Typical Scenario 2 | 75 | 0 | 690 | 765 | 0 | 0 | 647 | 647 |
Typical Scenario 3 | 2254 | 2188 | 2080 | 6522 | 1594 | 526 | 1890 | 4010 |
Fault Scenario 1 | 4821 | 2097 | 1977 | 8896 | 1920 | 627 | 2074 | 4621 |
Fault Scenario 2 | 5023 | 2725 | 1992 | 9740 | 2415 | 763 | 2199 | 5377 |
Fault Scenario 3 | 2366 | 2328 | 2289 | 6983 | 1694 | 585 | 1960 | 4239 |
Fault Scenario 4 | 5255 | 2593 | 2058 | 9907 | 2093 | 823 | 2276 | 5192 |
L | Investment Cost (CNY) | Annual Total Cost (CNY) | CVaR (CNY) |
---|---|---|---|
0.01 | 619,139 | 902,948 | 3,191,488 |
0.05 | 625,077 | 933,782 | 2,711,396 |
0.1 | 639,662 | 952,633 | 2,135,347 |
0.2 | 648,312 | 979,901 | 2,054,545 |
0.5 | 697,351 | 992,768 | 1,913,240 |
1 | 738,626 | 1,012,784 | 1,853,854 |
2 | 782,195 | 1,064,974 | 1,838,959 |
3 | 837,459 | 1,144,030 | 1,831,561 |
Algorithm | Best Solution (CNY) | Average Solution (CNY) | Standard Deviation | Average Computation Time (s) | Convergence Iterations |
---|---|---|---|---|---|
SA-PSO | 778,456 | 780,832 | 2156 | 45.2 | 152 |
PSO | 812,347 | 817,529 | 4287 | 38.7 | 245 |
SA | 785,692 | 791,276 | 3825 | 52.8 | 298 |
GA | 823,571 | 832,184 | 5967 | 41.3 | 320 |
M | Solution Time (S) | Average Solution (CNY) | Constraint Violation |
---|---|---|---|
N | 45.2 | 778,456 | No |
2 N | 47.6 | 778,460 | No |
0.5 N | Error | - | Yes |
0.7 N | 46.3 | 778,457 | No |
Network Size | Objective Value | Computation Time | Convergence Iterations |
---|---|---|---|
33 | 778,456 | 45.2 | 152 |
69 | 1,083,920 | 98.7 | 214 |
118 | 1,626,370 | 183.5 | 289 |
150 | 1,975,280 | 265.4 | 327 |
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Han, H.; Jiang, X.; Cao, Y.; Luo, X.; Liu, S.; Yang, B. Flexibility Resource Planning and Stability Optimization Methods for Power Systems with High Penetration of Renewable Energy. Energies 2025, 18, 4139. https://doi.org/10.3390/en18154139
Han H, Jiang X, Cao Y, Luo X, Liu S, Yang B. Flexibility Resource Planning and Stability Optimization Methods for Power Systems with High Penetration of Renewable Energy. Energies. 2025; 18(15):4139. https://doi.org/10.3390/en18154139
Chicago/Turabian StyleHan, Haiteng, Xiangchen Jiang, Yang Cao, Xuanyao Luo, Sheng Liu, and Bei Yang. 2025. "Flexibility Resource Planning and Stability Optimization Methods for Power Systems with High Penetration of Renewable Energy" Energies 18, no. 15: 4139. https://doi.org/10.3390/en18154139
APA StyleHan, H., Jiang, X., Cao, Y., Luo, X., Liu, S., & Yang, B. (2025). Flexibility Resource Planning and Stability Optimization Methods for Power Systems with High Penetration of Renewable Energy. Energies, 18(15), 4139. https://doi.org/10.3390/en18154139