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Fault detection and analysis of electric generator based on wavelet transform and fuzzy logic technology

机译:基于小波变换和模糊逻辑技术的发电机故障检测与分析

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A new method combining wavelet transform with fuzzy theory is proposed to improve the limitation of traditional fault diagnosis technology of electric generator. In order to determine the threshold of each order of wavelet space and the decomposition level adaptively, the statistic rule is brought forward to increase the signal-noise-ratio. The wavelet transform is used to acquire the effective feature components and the proposed fuzzy diagnosis equation is used to complete classify fault pattern. The fault diagnosis model of electric generator is established and the network parameters training are fulfilled by the improved least squares algorithm. The input nodes include the information representing the fault characters. On basis of experiments data to train the fault diagnosis mode, the accurate classification results can be achieved in accordance with expert experience. In view of actual applications, the proposed method can effectively diagnose the fault pattern of electric generator.
机译:提出了一种将小波变换与模糊理论相结合的新方法,以克服传统发电机故障诊断技术的局限性。为了自适应地确定小波空间各阶的阈值和分解水平,提出了统计规则以提高信噪比。利用小波变换获取有效特征分量,利用提出的模糊诊断方程对故障模式进行分类。建立了发电机故障诊断模型,并通过改进的最小二乘算法完成了网络参数的训练。输入节点包括代表故障字符的信息。根据实验数据训练故障诊断模式,可以根据专家经验获得准确的分类结果。针对实际应用,该方法可以有效地诊断发电机的故障模式。

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