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The Taguchi-Artificial Neural Network Approach for the Detection of Incipient Faults in Oil-Filled Power Transformer

机译:油填充电力变压器初期故障检测的Taguchi - 人工神经网络方法

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This paper presents hybrid Taguchi-Artificial Neural Network to detect incipient faults in oil-immersed power transformer. It involved the development of Artificial Neural Network (ANN) designs and embedding Taguchi methodology to fine tune the parameters of a back-propagation feed-forward ANN. Detection of incipient faults in power transformer is essential because it is one of the fundamental equipments in the power system. Dissolved gas analysis technique was used as it has been found as a reliable technique to detect incipient faults as it provides wealth of information in analyzing transformer condition. This study is based on IEC 60599 (2007) standard and historical data were used in the training and testing processes. Comparative studies were conducted between heuristic ANN design and optimized hybrid Taguchi-Neural Network. The results show the effectiveness of the optimized neural network using Taguchi methodology.
机译:本文介绍了混合动力Taguchi - 人工神经网络,以检测油浸式电力变压器中的初始故障。它涉及人工神经网络(ANN)设计和嵌入TAGUCHI方法的开发,以微调反向传播前馈ANN的参数。检测电力变压器中的初始故障是必不可少的,因为它是电力系统中的基本设备之一。使用溶解气体分析技术被发现是可靠的技术,以检测初始故障,因为它在分析变压器条件时提供了丰富的信息。本研究基于IEC 60599(2007)标准,历史数据用于培训和测试过程。比较研究是在启发式ANN设计和优化的混合动力Taguchi-神经网络之间进行的。结果表明了使用Taguchi方法的优化神经网络的有效性。

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