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首页> 外文期刊>Journal of Experimental and Theoretical Artificial Intelligence >Parameter optimisation of support vector machine using mutant particle swarm optimisation for diagnosis of metal-oxide surge arrester conditions
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Parameter optimisation of support vector machine using mutant particle swarm optimisation for diagnosis of metal-oxide surge arrester conditions

机译:支持向量机参数的变异粒子群优化诊断金属氧化物避雷器状况

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摘要

This paper proposes an enhanced support vector machine (SVM), whose parameters are optimised by a novel mutant particle swarm optimisation (mutant PSO) algorithm to identify metal-oxide surge arrester conditions. The total leakage current and its resistive component under different arrester conditions are obtained and then are inputted into a multilayer SVM for the purpose of fault identification. Then, a mutant PSO-based technique is investigated to increase the classification accuracy as well as the training speed of the SVM classifier. The proposed technique has been tested on an actual data set obtained from Taipower Company to monitor five arrester operating conditions, including normal (N), pre-fault (A), tracking (T), abnormal (U) and degradation (D). Furthermore, to demonstrate the effectiveness of the proposed mutant PSO, the obtained results are compared to those obtained by using cross-validation method, genetic algorithm and particle swarm optimisation.
机译:本文提出了一种增强的支持向量机(SVM),其参数通过一种新颖的突变粒子群优化(mutant PSO)算法进行了优化,以识别金属氧化物避雷器的状况。获得在不同避雷器条件下的总漏电流及其电阻分量,然后将其输入到多层SVM中以进行故障识别。然后,研究了一种基于变异PSO的技术,以提高分类精度以及SVM分类器的训练速度。该技术已在台电公司的实际数据集上进行了测试,以监测五个避雷器的运行状况,包括正常(N),故障前(A),跟踪(T),异常(U)和降级(D)。此外,为了证明所提出的突变PSO的有效性,将获得的结果与通过交叉验证方法,遗传算法和粒子群优化获得的结果进行比较。

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