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Requirements of automated PD diagnosis systems for fault identification in noisy conditions

机译:自动化PD诊断系统在嘈杂条件下进行故障识别的要求

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摘要

This paper evaluates different design methods for powerful partial discharge (PD) diagnostics using an automated personal computer system. A comparison of innovative and conventional analysis tools for PD diagnosis is presented. With four defined performance features the quality of eight efficient PD fingerprint extraction methods are investigated. Furthermore, the same evaluation methods are applied to determine the diagnostical potential of neural network, fuzzy and distance classification algorithms. Diagnostic decisions under noisy conditions are discussed using fifteen different defects inside SF/sub 6/ and air insulated equipment. It is indicated that an advanced PD diagnosis can be performed independent of the test setup. The results show that the potential of every pattern recognition in PD diagnosis is influenced predominantly by the quality of the PD fingerprint. The choice of the classification method in most cases only influences the PD diagnosis system characterization.
机译:本文评估了使用自动个人计算机系统进行强大的局部放电(PD)诊断的不同设计方法。比较了PD诊断的创新和常规分析工具。具有四个定义的性能特征,研究了八种有效的PD指纹提取方法的质量。此外,将相同的评估方法应用于确定神经网络,模糊和距离分类算法的诊断潜力。使用SF / sub 6 /和空气绝缘设备内部的十五种不同缺陷讨论了在嘈杂条件下的诊断决策。这表明可以独立于测试设置执行高级PD诊断。结果表明,PD诊断中每种模式识别的潜力主要受PD指纹质量的影响。在大多数情况下,分类方法的选择仅影响PD诊断系统的表征。

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