神经网络作为局部放电识别的工具

E. Gulski, A. Krivda
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引用次数: 219

摘要

研究了三种不同的神经网络在局部放电识别中的应用。本文介绍了简单双电极模型以及工业物体中人工缺陷模型的局部放电测量结果。PD是用传统的放电检测来测量的,PD模式是用以前开发的统计工具来处理的。数学描述符被用作反向传播网络、Kohonen自组织映射和学习向量量化网络的输入模式。这三种神经网络都能很好地识别出它们所训练的绝缘缺陷的PD模式。另一方面,神经网络可能会对那些没有经过训练的PD模式进行错误分类。神经网络对PD模式的分类也会受到特定神经网络的结构、收敛准则的值和学习周期的数量的影响。>
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural networks as a tool for recognition of partial discharges
The application of three different neural networks (NNs) to the recognition of partial discharge (PD) is studied. Results of PD measurements on simple two-electrode models, as well as on models of artificial defects in industrial objects, are presented. The PDs are measured using conventional discharge detection, and PD patterns are processed by previously developed statistical tools. Mathematical descriptors are used as input patterns for a backpropagation network, Kohonen self-organizing map, and learning vector quantization network. All three NNs recognize fairly well the PD patterns of those insulation defects for which they were trained. On the other hand, the NNs could misclassify those PD patterns for which they were not trained. The classification of PD patterns by NNs can be influenced also by the structure of the particular NN, the value of the convergence criterion, and the number of learning cycles. >
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