Particle Swarm Optimization Trained Feedforward Neural Network for Under-Voltage Load Shedding

S. Sundarajoo, D. Soomro
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Abstract

This paper suggests an under-voltage load shedding (UVLS) approach to avoid voltage collapse in stressed distribution systems. Prior to a blackout, a failing system reaches an emergency state, and UVLS is executed as the final option to prevent voltage collapse. Hence, this article introduces an optimal UVLS method using a feedforward artificial neural network (ANN) model trained with the particle swarm optimization (PSO) algorithm to obtain the optimal load shedding amount for a distribution system. PSO is used to obtain the best topology and optimum initial weights of the ANN model to enhance the precision of the ANN model. Thus, the dispute between the optimum fitting regression of the allocation of ANN nodes and computational time was disclosed, while the MSE of the ANN model was minimized. Moreover, the proposed method uses the stability index (SI) to identify the weak buses in the system following an emergency state. Different overload scenarios are examined on the IEEE 33-bus distribution network to validate the efficacy of the suggested UVLS scheme. A comparative study is performed to further assess the performance of the proposed technique. The comparison indicates that the recommended method is effective in terms of voltage stability and remaining load.
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粒子群优化训练的前馈神经网络欠压减载
本文提出了一种避免高压配电系统电压崩溃的欠压减载方法。在停电之前,故障系统达到紧急状态,UVLS被执行作为防止电压崩溃的最后选择。为此,本文提出了一种基于粒子群优化算法训练的前馈人工神经网络(ANN)模型的最优UVLS方法,以获得配电系统的最优减载量。利用粒子群算法获得神经网络模型的最佳拓扑结构和最优初始权值,以提高神经网络模型的精度。从而揭示了神经网络节点分配的最优拟合回归与计算时间之间的争议,同时最小化了神经网络模型的MSE。此外,该方法还利用稳定指数(SI)来识别紧急状态后系统中的弱总线。在IEEE 33总线配电网上测试了不同的过载情况,以验证所建议的UVLS方案的有效性。进行了比较研究,以进一步评估所提出的技术的性能。对比表明,该方法在电压稳定性和剩余负荷方面是有效的。
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来源期刊
Transactions on Electrical Engineering, Electronics, and Communications
Transactions on Electrical Engineering, Electronics, and Communications Engineering-Electrical and Electronic Engineering
CiteScore
1.60
自引率
0.00%
发文量
45
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