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Mechanical Fault Diagnosis of High Voltage Circuit Breakers Based on Wavelet Time-Frequency Entropy and One-Class Support Vector Machine

机译:基于小波时频熵和一类支持向量机的高压断路器机械故障诊断

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Mechanical faults of high voltage circuit breakers (HVCBs) are one of the most important factors that affect the reliability of power system operation. Because of the limitation of a lack of samples of each fault type; some fault conditions can be recognized as a normal condition. The fault diagnosis results of HVCBs seriously affect the operation reliability of the entire power system. In order to improve the fault diagnosis accuracy of HVCBs; a method for mechanical fault diagnosis of HVCBs based on wavelet time-frequency entropy (WTFE) and one-class support vector machine (OCSVM) is proposed. In this method; the S-transform (ST) is proposed to analyze the energy time-frequency distribution of HVCBs’ vibration signals. Then; WTFE is selected as the feature vector that reflects the information characteristics of vibration signals in the time and frequency domains. OCSVM is used for judging whether a mechanical fault of HVCBs has occurred or not. In order to improve the fault detection accuracy; a particle swarm optimization (PSO) algorithm is employed to optimize the parameters of OCSVM; including the window width of the kernel function and error limit. If the mechanical fault is confirmed; a support vector machine (SVM)-based classifier will be used to recognize the fault type. The experiments carried on a real SF6 HVCB demonstrated the improved effectiveness of the new approach.
机译:高压断路器(HVCB)的机械故障是影响电力系统运行可靠性的最重要因素之一。由于缺乏每种故障类型的样本的局限性;某些故障情况可以视为正常情况。 HVCB的故障诊断结果严重影响了整个电力系统的运行可靠性。为了提高HVCB的故障诊断准确性;提出了一种基于小波时频熵(WTFE)和一类支持向量机(OCSVM)的HVCB机械故障诊断方法。用这种方法提出了S变换(ST)来分析HVCB振动信号的能量时频分布。然后;选择WTFE作为特征向量,以反映振动信号在时域和频域中的信息特征。 OCSVM用于判断HVCB的机械故障是否发生。为了提高故障检测的准确性;采用粒子群优化算法对OCSVM的参数进行优化。包括内核函数的窗口宽度和错误限制。如果确认机械故障;基于支持向量机(SVM)的分类器将用于识别故障类型。在真实的SF 6 HVCB上进行的实验证明了该新方法的改进有效性。

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