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Review of local mean decomposition and its application in fault diagnosis of rotating machinery

机译:均值分解及其在旋转机械故障诊断中的应用综述

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摘要

Rotating machinery is widely used in the industry. They are vulnerable to many kinds of damages especially for those working under tough and time-varying operation conditions. Early detection of these damages is important, otherwise, they may lead to large economic loss even a catastrophe. Many signal processing methods have been developed for fault diagnosis of the rotating machinery. Local mean decomposition (LMD) is an adaptive mode decomposition method that can decompose a complicated signal into a series of mono-components, namely product functions (PFs). In recent years, many researchers have adopted LMD in fault detection and diagnosis of rotating machines. We give a comprehensive review of LMD in fault detection and diagnosis of rotating machines. First, the LMD is described. The advantages, disadvantages and some improved LMD methods are presented. Then, a comprehensive review on applications of LMD in fault diagnosis of the rotating machinery is given. The review is divided into four parts: fault diagnosis of gears, fault diagnosis of rotors, fault diagnosis of bearings, and other LMD applications. In each of these four parts, a review is given to applications applying the LMD, improved LMD, and LMD-based combination methods, respectively. We give a summary of this review and some future potential topics at the end.
机译:旋转机械在工业中被广泛使用。它们很容易受到多种损害,特别是对于那些在艰难而时变的工作条件下工作的人。及早发现这些损害很重要,否则,它们可能导致巨大的经济损失,甚至是灾难。为了旋转机械的故障诊断,已经开发了许多信号处理方法。局部均值分解(LMD)是一种自适应模式分解方法,可以将复杂的信号分解为一系列单分量,即乘积函数(PF)。近年来,许多研究人员已将LMD用于旋转机械的故障检测和诊断。我们对旋转机械故障检测和诊断中的LMD进行了全面回顾。首先,描述LMD。介绍了优点,缺点和一些改进的LMD方法。然后,综述了LMD在旋转机械故障诊断中的应用。本文分为四个部分:齿轮故障诊断,转子故障诊断,轴承故障诊断和其他LMD应用。在这四个部分的每个部分中,分别回顾了应用LMD,改进的LMD和基于LMD的组合方法的应用程序。最后,我们对本次审查进行了总结,并提出了一些未来的潜在话题。

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