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Fault diagnosis of electric power system transformer on CMAC neural network approach

机译:基于CMAC神经网络的电力系统变压器故障诊断

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Regarding characteristics of electric power system transformer faults, such as diversity of types, uncertainty of fault information and irregularity, this study employed the Cerebellar Model Articulation controller(CMAC) neural network approach to diagnose dissolved gas in transformers, in order to determine the fault causes. By using the CMAC neural network's memory space, weight memory and other learning mechanisms, similar input data are excited to the same memory locations to achieve the fast convergence results. Good recognition capabilities are available in the recognition of similar data. Moreover, regarding the non-training data, they are categorized according to specific category similarity. This study conducted the five types of electric power system transformer faults for the final fault diagnosis. The simulation results showed that the correct judgment rate reached nearly 94% through a small number of iterations of training times, thus improving the diagnosis accuracy and efficiency.
机译:针对电力系统变压器故障的特点,如类型多样性,故障信息不确定性和不规则性,本文采用小脑模型关节控制器(CMAC)神经网络方法对变压器中的溶解气体进行诊断,以确定故障原因。 。通过使用CMAC神经网络的存储空间,权重存储和其他学习机制,将相似的输入数据激发到相同的存储位置以实现快速收敛的结果。良好的识别能力可用于识别相似数据。此外,关于非训练数据,根据特定的类别相似性将它们分类。本研究对电力系统变压器故障进行了五种类型的最终故障诊断。仿真结果表明,经过少量的训练次数迭代,正确判断率达到了近94%,提高了诊断的准确性和效率。

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