Recognition of partial discharges using an Ensemble of Neural Networks

A. Mas’ud, B. Stewart, S. McMeekin, A. Nesbitt
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引用次数: 9

Abstract

This paper introduces an improved method for classifying Partial Discharge (PD) patterns using Ensemble Neural Network (ENN) learning. The method is based on training several Neural Network (NN) models and combining their predictions. In this paper it is applied to the recognition of PD from artificially created poly-ethylene-terephthalate (PET) voids and in particular the ability of the ENN to categorise statistical Φ-q-n patterns for two different void sizes over 50 and 250 power cycles. The training data for the ENN comprises statistical parameters obtained from voids of 0.6mm and 1mm diameter. Measurements were made on three separately manufactured void samples for both these diameters. Similarities between the different PD measurements and different cycle captures is investigated using both a Single Neural Network (SNN) and the ENN. For each set of 3 void samples, each NN was trained and tested from the data of one PD void defect. Each NN was then tested using data from two other void geometries in order to determine the recognition abilities of both the ENN and SNN. The results show that the ENN always produces higher recognition efficiency for unseen data when compared to the SNN. It is also shown that ENN produces similar recognition predictions for PD patterns captured using either 50 or 250 power cycles while the SNN shows more sensitivity to the number of power cycles captured.
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基于神经网络集成的局部放电识别
介绍了一种基于集成神经网络学习的局部放电模式分类改进方法。该方法是基于训练多个神经网络(NN)模型并结合它们的预测。在本文中,它被应用于从人工创建的聚对苯二甲酸乙二醇酯(PET)空隙中识别PD,特别是新能源网络在50和250功率循环中对两种不同空隙尺寸的统计Φ-q-n模式进行分类的能力。ENN的训练数据包括从0.6mm和1mm直径的孔洞中获得的统计参数。对这两种直径的三个单独制造的空隙样品进行了测量。使用单个神经网络(SNN)和ENN研究了不同PD测量和不同周期捕获之间的相似性。对于每组3个空洞样本,每个神经网络从一个PD空洞缺陷的数据进行训练和测试。然后使用来自其他两个空洞几何的数据对每个神经网络进行测试,以确定ENN和SNN的识别能力。结果表明,与信噪比网络相比,新神经网络对未知数据的识别效率更高。研究还表明,新神经网络对使用50或250个功率周期捕获的PD模式产生类似的识别预测,而SNN对捕获的功率周期数量更敏感。
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