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Kernel principal component analysis fault diagnosis method based on sound signal processing and its application in hydraulic pump

机译:基于声音信号处理的核主成分分析故障诊断方法及其在液压泵中的应用

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In situations where the vibration sensor is not suitable to be used and while fault diagnosis method based on vibration signal processing has limitaions, KPCA fault diagnosis method based on sound signal is proposed. The basic theory of kernel principal component analysis and its basic procedures for fault detection are introduced and sound signal pre-processing is depicted, multi-domain feature vector is extracted from time, time-frequency and frequency domain, faults are diagnosed with kernel principal component analysis method. The new kernel principal component analysis fault diagnosis method based on sound signal processing is tested on axial piston pump, its result shows that the method is effective and it can overcome deficiencies of the fault diagnosis method based on vibration signal.
机译:在振动传感器不适合使用的情况下,虽然基于振动信号处理的故障诊断方法具有限制,提出了基于声音信号的KPCA故障诊断方法。介绍了内核主成分分析的基本理论及其故障检测的基本程序,并描绘了声音信号预处理,从时间,时频和频域中提取了多域特征向量,诊断了内核主组件的故障分析方法。基于声音信号处理的新的内核主成分分析故障诊断方法在轴向活塞泵上测试,其结果表明该方法有效,可以克服基于振动信号的故障诊断方法的缺陷。

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