Power System Loss Reduction Strategy Considering Security Constraints Based on Improved Particle Swarm Algorithm and Coordinated Dispatch of Source–Grid–Load–Storage
Abstract
:1. Introduction
- (1)
- A bi-level optimization model is proposed for addressing distribution network loss reduction. The upper-level objective minimizes the total annual planning cost, while the lower-level objectives focus on minimizing both the load curve variance and the node voltage deviation. By considering economic efficiency and operational characteristics at both global and local levels, this model provides a theoretical foundation for the collaborative optimization of loss reduction strategies.
- (2)
- In response to the constructed bi-level optimization model, this paper proposes and applies an improved particle swarm optimization algorithm. The results demonstrate the algorithm’s superior performance in terms of search speed and convergence accuracy, thereby confirming the effectiveness and feasibility of the proposed method for distribution network loss reduction optimization.
2. Model of the Distribution Network
2.1. The Interaction Mechanism of “Source-Grid-Load-Storage” in the Distribution Network
2.2. Model of Distributed Photovoltaic Power Source
2.3. Model of Distribution Network Reconfiguration
2.4. Model of Energy Storage
2.5. Model of Loads
2.5.1. Model of Electric Car
2.5.2. Model of Load Power
3. Analysis of Factors Affecting Network Losses in Distribution Networks
4. Improved Particle Swarm Optimization Algorithm
4.1. Conventional Particle Swarm Optimization Algorithm
4.2. Improved PSO
4.2.1. Population Initialization
4.2.2. Adaptive Inertia Weight
4.2.3. Update the Velocity and Position of the Particles
4.2.4. Treatment of Border Crossings
5. Loss Reduction in Distribution Networks with “Source-Network-Hoist-Storage” Coordination
5.1. Analysis of Loss Reduction Strategies for Distribution Network Losses
5.2. The Coordinated Bi-Level Optimization Model of Source–Grid–Load–Storage
5.2.1. Upper-Level Planning Mathematical Model
- (1)
- Capacity constraints for distributed PV power.
- (2)
- The constraints on the installed capacity, charging and discharging efficiency, and state of charge of the energy storage system are given in (5) to (9).
- (3)
- Power balance constraints in the distribution system.
- (4)
- Contact line power constraint.
5.2.2. Lower-Level Planning Mathematical Model
- (1)
- Electric power flow constraints.
- (2)
- Distributed PV power supply, energy storage system output constraints, node voltage constraints, and line power constraints.
5.3. Model Solving Method
6. Case Study
6.1. Parameters of Case
6.2. The Role of “Source-Grid-Load-Storage” Coordination on Distribution Network Loss Reduction
6.3. Rationality and Effectiveness Analysis
7. Conclusions
- (1)
- Integrating distributed PV power generation systems into the distribution network reduces network losses and annual power purchase costs; integrating energy storage systems into the distribution network decouples simultaneous load demands, reduces peak-to-valley differences in the load curve, and thus reduces network losses; coordinated optimization of source–storage–load maximizes the consumption of PV power generation, reduces network losses, improves the system security levels, and reduces the fluctuation of the load curve.
- (2)
- The improved particle swarm algorithm proposed in this paper outperforms the traditional algorithm in terms of minimum fitness value, number of iterations, and computation time, and it provides higher solution accuracy and computational efficiency for the distribution network coordination optimization problem.
- (3)
- Through the IEEE 33-node distribution network and the IEEE 118-node and DTU 7K 47-node systems, the proposed method shows good applicability in different sizes and types of distribution networks, which can significantly reduce network losses and improve economic efficiency.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Parameters and variables | Meaning |
Tcell(t) | the temperature of the PV cell |
Ten(t) | the ambient temperature |
S(t) | the solar irradiance |
Tno | the rated battery operating temperature |
UMPP | the voltage and current corresponding to the maximum power emitted by a single PV module |
IMPP | the current and current corresponding to the maximum power emitted by a single PV module |
Uoc | the open-circuit voltage |
Isc | the short-circuit current |
Ωb | all branches of the distribution network |
SOCt | the charge storage states of the energy storage device battery at moment t |
d | charging and discharging rate |
ηc | the charging efficiency of energy storage |
ηd | the discharging efficiency of energy storage |
Ebess | the rated capacity of the energy storage |
μs | the expected value of the final arrival moment of the electric vehicle |
μD | the expected daily driving range of an electric vehicle |
ftch | the probability density function of electric vehicle charging duration |
IL | the load current |
IS | the supply current |
IG | the injection current of the DG |
Ploss1 | the first half of the line network loss between the substation to the DG |
Ploss2 | the second half of the line network loss between the DG to the end of the line |
LSFPt | the sensitivity of DG active power to affect network losses |
LSFQt | the sensitivity of DG reactive power to affect network losses |
F(∙) | the objective function of the upper level |
w(∙) | the objective function of the lower level |
G(∙) | the constraints associated with the upper-level objective function |
g(∙) | the constraints of the lower-level objective function |
Cinv | the total investment cost |
Cope | the system’s operation and maintenance costs |
Cen | the cost of purchasing electricity for the system |
PL,t | the net load power of the load distribution network |
PPV(t) | the actual output of PVs at moment t |
the maximum power limit for energy storage charging and discharging | |
SLi | the apparent power of line i. |
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Photovoltaic (kW) | Energy Storage (kWh) | Electric Vehicle (kW) |
---|---|---|
Node 18: 381.1 (400) | Node 6: 517.5 (500) | Node 1: 259.1 (250) |
Node 24: 200.1 (200) | Node 13: 537.9 (500) | Node 20: 247.5 (250) |
Algorithm | Minimum Fitness Value | Number of Iterations | Computation Time(s) |
---|---|---|---|
Improved PSO | 0.603 | 289 | 19.65 |
PSO | 0.712 | 472 | 29.08 |
GA | 0.725 | 392 | 28.66 |
SOA | 0.734 | 413 | 34.75 |
Distribution Network | Optimized Total Line Losses (MWh) | Savings in Network Loss Costs (CNY) |
---|---|---|
IEEE-33 | 1406.7 | 311,000 |
IEEE-118 | 4185.2 | 902,000 |
DTU | 1828.7 | 429,000 |
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Zhang, S.; Yan, J.; Xie, P.; Zhai, P.; Tao, Y. Power System Loss Reduction Strategy Considering Security Constraints Based on Improved Particle Swarm Algorithm and Coordinated Dispatch of Source–Grid–Load–Storage. Processes 2025, 13, 831. https://doi.org/10.3390/pr13030831
Zhang S, Yan J, Xie P, Zhai P, Tao Y. Power System Loss Reduction Strategy Considering Security Constraints Based on Improved Particle Swarm Algorithm and Coordinated Dispatch of Source–Grid–Load–Storage. Processes. 2025; 13(3):831. https://doi.org/10.3390/pr13030831
Chicago/Turabian StyleZhang, Shuolin, Jiongcheng Yan, Pengteng Xie, Pengming Zhai, and Ye Tao. 2025. "Power System Loss Reduction Strategy Considering Security Constraints Based on Improved Particle Swarm Algorithm and Coordinated Dispatch of Source–Grid–Load–Storage" Processes 13, no. 3: 831. https://doi.org/10.3390/pr13030831
APA StyleZhang, S., Yan, J., Xie, P., Zhai, P., & Tao, Y. (2025). Power System Loss Reduction Strategy Considering Security Constraints Based on Improved Particle Swarm Algorithm and Coordinated Dispatch of Source–Grid–Load–Storage. Processes, 13(3), 831. https://doi.org/10.3390/pr13030831