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PD recognition with knowledge-based preprocessing and neural networks

机译:通过基于知识的预处理和神经网络进行PD识别

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摘要

Partial discharge (PD) patterns are an important tool for the diagnosis of HV insulation systems. Human experts can discover possible insulation defects in various representations of the PD data. One of the most widely used representations is phase-resolved PD (PRPD) patterns. We present a method for the automated recognition of PRPD patterns using a neural network (NN) for the actual classification task. At the core of our method lies a preprocessing scheme that extracts relevant features from the raw PRPD data in a knowledge-based way, i.e. according to physical properties of PD gained from PD modeling. This allows a very small NN to be used for classification. In addition to the classification of single-type patterns (one defect) we present a method to separate superimposed patterns stemming from multiple defects. High recognition rates are achieved with a large number of single patterns generated by stochastic PD simulations. Our network architecture compares favorably with a more traditional network architecture used previously for PRPD classification. These results are confirmed by classification of patterns measured in laboratory experiments and power stations.
机译:局部放电(PD)模式是诊断高压绝缘系统的重要工具。人类专家可以在PD数据的各种表示形式中发现可能的绝缘缺陷。相位解析PD(PRPD)模式是使用最广泛的表示之一。我们为实际分类任务提供了一种使用神经网络(NN)自动识别PRPD模式的方法。我们方法的核心在于预处理方案,该方案以基于知识的方式(即根据从PD建模获得的PD的物理特性)从原始PRPD数据中提取相关特征。这允许将非常小的NN用于分类。除了对单一类型的图案(一个缺陷)进行分类之外,我们还提出了一种分离源自多个缺陷的叠加图案的方法。通过随机PD模拟生成的大量单个模式可以实现较高的识别率。与以前用于PRPD分类的更传统的网络体系结构相比,我们的网络体系结构具有优势。通过对实验室实验和电站中测得的模式进行分类,可以证实这些结果。

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