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Nonstationary Motor Fault Detection Using Recent Quadratic Time–Frequency Representations

机译:使用最近的二次时频表示的非平稳电动机故障检测

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摘要

As the use of electric motors increases in the aerospace and transportation industries where operating conditions continuously change with time, fault detection in electric motors has been gaining importance. Motor diagnostics in a nonstationary environment is difficult and often needs sophisticated signal processing techniques. In recent times, a plethora of new time–frequency distributions has appeared, which are inherently suited to the analysis of nonstationary signals while offering superior frequency resolution characteristics. The Zhao–Atlas–Marks distribution is one such distribution. This paper proposes the use of these new time–frequency distributions to enhance nonstationary fault diagnostics in electric motors. One common myth has been that the quadratic time–frequency distributions are not suitable for commercial implementation. This paper also addresses this issue in detail. Optimal discrete-time implementations of some of these quadratic time–frequency distributions are explained. These time–frequency representations have been implemented on a digital signal processing platform to demonstrate that the proposed methods can be implemented commercially.
机译:随着在运行条件随时间连续变化的航空航天和运输行业中电动机的使用不断增加,电动机中的故障检测变得越来越重要。在非平稳环境中的电机诊断非常困难,并且通常需要复杂的信号处理技术。近年来,出现了许多新的时频分布,它们固有地适用于非平稳信号的分析,同时具有出色的频率分辨率特性。 Zhao–Atlas–Marks分布就是这样一种分布。本文提出使用这些新的时频分布来增强电动机的非平稳故障诊断。一个普遍的神话是,二次时频分布不适合商业实施。本文还详细解决了这个问题。解释了其中一些二次时频分布的最佳离散时间实现。这些时频表示已在数字信号处理平台上实现,以证明所提出的方法可以商业实现。

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