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A novel perturbed particle swarm optimization-based support vector machine forfault diagnosis in power distribution systems

机译:一种基于扰动粒子群优化的新型支持向量机在配电系统中的故障诊断

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In this paper, a novel perturbed particle swarm optimization (PPSO) algorithm is investigated to improve the performance of a support vector machine (SVM) for short-circuit fault diagnosis in power distribution systems. In the proposed PPSO algorithm, the velocity of each particle is perturbed whenever the particles strike into a local optimum, in order to achieve a higher quality solution to optimization problems. Furthermore, the concept of proposed perturbation is applied to three variants of PSO, and improved corresponding algorithms are named perturbed C-PSO (PC-PSO), perturbed T-PSO (PT-PSO), and perturbed K-PSO (PK-PSO). For the purpose of fault diagnosis, the time- domain re ectometry (TDR) method with pseudorandom binary sequence (PRBS) excitation is considered to generate the necessary fault simulation data set. The proposed approaches are tested on a typical two-lateral radial distribution network. Keywords: Fault diagnosis, particle swarm optimization, power distribution networks support vector machine, time- domain re ectometry Full Text: PDF.
机译:本文研究了一种新颖的扰动粒子群算法(PPSO),以提高支持向量机(SVM)在配电系统短路故障诊断中的性能。在提出的PPSO算法中,每当粒子达到局部最优值时,每个粒子的速度都会受到扰动,以实现针对优化问题的更高质量的解决方案。此外,将提议的扰动概念应用于PSO的三个变体,并将改进的相应算法命名​​为扰动C-PSO(PC-PSO),扰动T-PSO(PT-PSO)和扰动K-PSO(PK-PSO )。出于故障诊断的目的,考虑使用具有伪随机二进制序列(PRBS)激励的时域直肠检测(TDR)方法来生成必要的故障仿真数据集。建议的方法在典型的双向径向分布网络上进行了测试。关键字:故障诊断,粒子群优化,支持向量机的配电网络,时域直肠测量法全文:PDF。

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