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Fault Diagnostic Method of Power Transformers Based on Fuzzy CMAC Neural Network

机译:基于模糊CMAC神经网络的电力变压器故障诊断方法

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Dissolved gas analysis (DGA) plays an important role in fault diagnosis of power transformers. A novel diagnosis method based on fuzzy CMAC neural network (FCMAC) is proposed in this paper. The proposed fuzzy CMAC neural network has an optimization mechanism to ensure high diagnosis accuracy. The basis functions in the original CMAC are replaced with membership functions of fuzzy theory for smoothing the networks output and increasing the approximation ability in function approximation. A structure of the FCMAC with membership functions of different receptive fields is employed. These receptive fields are determined by the distributions of training data. So, the proposed structure can reduce the memory requirement a great deal in the original CMAC, and keep the same performance with the original CMAC. This proposed neural network has been tested by lots of real fault samples, and its results are compared with those of IEC ratio codes and CMAC neural network, which indicates that the proposed approach has remarkable diagnosis accuracy, and with it multiple incipient faults can be classified effectively.
机译:溶解气体分析(DGA)在电力变压器的故障诊断中起着重要作用。提出了一种基于模糊CMAC神经网络(FCMAC)的诊断方法。提出的模糊CMAC神经网络具有优化机制以确保较高的诊断准确性。用模糊理论的隶属函数代替原始CMAC中的基函数,以平滑网络输出并提高函数逼近中的逼近能力。使用具有不同接收域的隶属函数的FCMAC的结构。这些接受场由训练数据的分布确定。因此,所提出的结构可以大大减少原始CMAC的存储需求,并保持与原始CMAC相同的性能。该神经网络已通过大量实际故障样本的测试,其结果与IEC比率代码和CMAC神经网络的结果进行了比较,表明该方法具有出色的诊断准确性,并且可以对多个早期故障进行分类。有效地。

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