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Order spectrum analysis enhanced by surrogate test and Vold-Kalman filtering for rotating machinery fault diagnosis under time-varying speed conditions

机译:代理试验和Vold-Kalman滤波加强旋转机械故障诊断的顺序分析,在时变速度条件下旋转机械故障诊断

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摘要

Rotating machinery signals are usually dominated by rotating frequency harmonics, and the presence of these frequency components or change in their magnitudes indicate health condition. Order spectrum is widely applied in rotating machinery fault feature extraction, because of its capability in intuitive spectral representation of rotating frequency harmonics in order domain. However, some speed non-synchronous components are often present. They show wide-band features in order spectra, and hinder accurate identification of rotating frequency harmonic orders. To address this issue, a scheme is proposed to identify and remove speed non-synchronous components of either constant or time-varying frequency. To this end, surrogate test is generalized through new candidate construction method and nonstationarity based indicator for test criterion, to identify true nonstationary signal components adaptively and eliminate subjective influences. Vold-Kalman filter is used to separate signal components by exploiting its capability in mono-component decomposition of complex nonstationary signals. The proposed method is validated through analyses of both induction motor stator current signals and hydraulic turbine rotor vibration signal. The results demonstrate its advantages over conventional computed order spectrum analysis.
机译:旋转机械信号通常是通过旋转频率谐波的主导,并且这些频率分量的存在或它们的大小的变化表示健康状况。订单频谱广泛应用于旋转机械故障特征提取,因为其在订单域中的旋转频率谐波的直观光谱表示中的能力。但是,通常存在一些速度的非同步组件。它们在订购光谱中显示宽带特征,并妨碍旋转频率谐波订单的准确识别。为了解决这个问题,提出了一种方案来识别和删除常变或时变频率的速度非同步分量。为此,通过新的候选施工方法和基于测试标准的非间抗性指标推广代理测试,以自适应地识别真正的非间断信号分量并消除主观影响。 Vold-Kalman滤波器用于通过利用复杂非间断信号的单组分分解的能力来分隔信号分量。通过对辅助电动机定子电流信号和液压涡轮转子振动信号的分析来验证所提出的方法。结果表明其优于传统的计算顺序频谱分析。

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