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Phase-compensation-based dynamic time warping for fault diagnosis using the motor current signal

机译:基于相位补偿的动态时间规整用于使用电机电流信号进行故障诊断

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摘要

Dynamic time warping (DTW) is a time-domain-based method and widely used in various similar recognition and data mining applications. This paper presents a phase-compensation-based DTW to process the motor current signals for detecting and quantifying various faults in a two-stage reciprocating compressor under different operating conditions. DTW is an effective method to align two signals for dissimilarity analysis. However, it has drawbacks such as singularities and high computational demands that limit its application in processing motor current signals for obtaining modulation characteristics accurately in diagnosing compressor faults. Therefore, a phase compensation approach is developed to reduce the singularity effect and a sliding window is designed to improve computing efficiency. Based on the proposed method, the motor current signals measured from the compressor induced with different common faults are analysed for fault diagnosis. Results show that residual signal analysis using the phase-compensation-based DTW allows the fault-related sideband features to be resolved more accurately for obtaining reliable fault detection and diagnosis. It provides an effective and easy approach to the analysis of motor current signals for better diagnosis in the time domain in comparison with conventional Fourier-transform-based methods.
机译:动态时间规整(DTW)是基于时域的方法,广泛用于各种类似的识别和数据挖掘应用程序中。本文提出了一种基于相位补偿的DTW,用于处理电动机电流信号,以检测和量化两级往复式压缩机在不同工况下的各种故障。 DTW是对齐两个信号以进行差异分析的有效方法。然而,它具有诸如奇异性和高计算需求的缺点,这限制了其在处理电动机电流信号中的应用,以在诊断压缩机故障时准确地获得调制特性。因此,开发了一种相位补偿方法来减少奇异效应,并设计了一个滑动窗口来提高计算效率。基于所提出的方法,分析了压缩机在不同常见故障下感应出的电动机电流信号,以进行故障诊断。结果表明,使用基于相位补偿的DTW进行残留信号分析可以更准确地解决与故障相关的边带特征,从而获得可靠的故障检测和诊断。与传统的基于傅立叶变换的方法相比,它为分析电动机电流信号提供了一种有效而简便的方法,可以在时域中进行更好的诊断。

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