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Diagnosis of incipient faults in power transformers using CMAC neural network approach

机译:CMAC神经网络方法诊断电力变压器中的初始故障

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摘要

Dissolved gas analysis (DGA) is one of the most useful techniques to detect the incipient faults of power transformer. However, the identification of the faulted location by the traditional method is not always an easy task due to the variability of gas data and operational natures. In this paper, a novel cerebellar model articulation controller (CMAC) neural network (NN) method is presented for the fault diagnosis of power transformers. By introducing the IEC standard 599 to generate the training data, and using the characteristic of self-learning and generalization, like the cerebellum of human being, a CMAC NN fault diagnosis scheme enables a powerful, straightforward, and efficient fault diagnosis. With application of this scheme to published transformers data, the diagnoses demonstrate the new scheme with high accuracy and high noise rejection ability. Moreover, the results also proved the ability of multiple incipient faults detection.
机译:溶解气体分析(DGA)是检测电力变压器初期断层的最有用技术之一。然而,由于气体数据和操作性自然的可变性,传统方法的故障位置的识别并不总是易于任务。本文提出了一种新型小脑模型关节控制器(CMAC)神经网络(NN)方法,用于电力变压器的故障诊断。通过介绍IEC标准599来生成培训数据,并使用自学和泛化的特征,如人类的小脑,CMAC NN故障诊断方案使得能够强大,简单,有效的故障诊断。随着该方案的应用于公布的变压器数据,诊断表明了具有高精度和高噪声抑制能力的新方案。此外,结果还证明了多种初期故障检测的能力。

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