基于神经网络的地下电缆故障识别研究

Chul-Hwan Kim, Y. Lim, Woo-Gon Chung, Tae-Won Kwon, Jong-young Hwang, I. Kim
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引用次数: 9

摘要

提出了一种基于神经网络的地下电缆传输系统故障识别系统。EMTP用于故障类型识别训练中必要的瞬态数据。生成了地下电缆系统中各种故障类型的数据,并将其用于训练反向传播神经网络。为了系统的运行,对新数据进行了测试,以公平地评估设计的系统。神经网络采用归一化输入数据实现可靠学习。通过试错法找到了一个合适的神经网络大小,这是一种蛮力法。该系统在不同的故障距离和故障入射角下进行了测试,验证了系统的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study on the fault indentification of underground cable using neural networks
This paper presents a fault identification system based on neural networks for underground cable transmission systems (UCTS). EMTP was used for necessary transient data in training for fault type identification purposes. Data for various fault types in the underground cable system were generated and were used in training backpropagation neural networks. For the operation of the system a new data is tested for fair assessment of the designed system. Normalization of input data is adopted for reliable learning in neural networks. A proper size of the neural network was found via trial and error method, a brute-force method. This system was tested with various fault distances and fault incidence angles and proved its reliability.
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