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A Novel Mechanical Fault Feature Selection and Diagnosis Approach for High-Voltage Circuit Breakers Using Features Extracted without Signal Processing

机译:无需信号处理即可提取特征的高压断路器机械故障特征选择与诊断新方法

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摘要

The reliability and performance of high-voltage circuit breakers (HVCBs) will directly affect the safety and stability of the power system itself, and mechanical failures of HVCBs are one of the important factors affecting the reliability of circuit breakers. Moreover, the existing fault diagnosis methods for circuit breakers are complex and inefficient in feature extraction. To improve the efficiency of feature extraction, a novel mechanical fault feature selection and diagnosis approach for high-voltage circuit breakers, using features extracted without signal processing is proposed. Firstly, the vibration signal of the HVCBs’ operating system, which collects the amplitudes of signals from normal vibration signals, is segmented by a time scale, and obviously changed. Adopting the ensemble learning method, features were extracted from each part of the divided signal, and used for constructing a vector. The Gini importance of features is obtained by random forest (RF), and the feature is ranked by the features’ importance index. After that, sequential forward selection (SFS) is applied to determine the optimal subset, while the regularized Fisher’s criterion (RFC) is used to analyze the classification ability. Then, the optimal subset is input to the hierarchical hybrid classifier, and based on a one-class support vector machine (OCSVM) and RF for fault diagnosis, the state is accurately recognized by OCSVM. The known fault types are identified using RF, and the identification results are calibrated with OCSVM of a particular fault type. The experimental proves that the new method has high feature extraction efficiency and recognition accuracy by the measured HVCBs vibration signal, while the unknown fault type data of the untrained samples is effectively identified.
机译:高压断路器(HVCB)的可靠性和性能将直接影响电力系统本身的安全性和稳定性,并且HVCB的机械故障是影响断路器可靠性的重要因素之一。此外,现有的断路器故障诊断方法复杂且特征提取效率低。为了提高特征提取的效率,提出了一种无需信号处理即可提取特征的高压断路器机械故障特征选择与诊断的新方法。首先,HVCB操作系统的振动信号从正常的振动信号中收集信号的幅度,然后按时间分段进行分割,并且明显改变。采用集成学习方法,从分割后的信号的每个部分中提取特征,并将其用于构建向量。要素的基尼重要性是通过随机森林(RF)获得的,并且该要素按要素的重要性指数排名。之后,应用顺序前向选择(SFS)来确定最佳子集,而使用正则化的Fisher准则(RFC)来分析分类能力。然后,将最优子集输入到分层混合分类器,并基于一类支持向量机(OCSVM)和用于故障诊断的RF,OCSVM可以准确识别状态。使用RF识别已知的故障类型,并使用特定故障类型的OCSVM校准识别结果。实验证明,该方法具有很高的特征提取效率和对被测HVCBs振动信号的识别精度,同时可以有效地识别出未经训练样本的未知故障类型数据。

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