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A new rotating machinery fault diagnosis method based on local oscillatory-characteristic decomposition

机译:一种基于本地振荡特征分解的新型旋转机械故障诊断方法

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A new self-adaptive time-frequency analysis method named local oscillatory-characteristic decomposition (LOD) is introduced. This method is based on local oscillatory characteristics of signal itself, and it uses kinds of mathematical operations such as differential, coordinate domain transform and piecewise linear transform to decompose the signal into a series of mono-oscillatory components (MOC) whose instantaneous frequency has physical meanings. Each of MOC represents a kind of oscillatory characteristic of the original signal, and thus reflects the intrinsic characteristics of the original signal, so the LOD method is particularly suitable for processing non-stationary signals. After illustrating the decomposition principle of LOD in detail, the LOD is compared with the empirical mode decomposition (EMD) and local mean decomposition (LMD) by analyzing simulation signals. The results show the superiority of LOD method. Meanwhile, aiming at the multi-component modulated characteristic of gear and roller bearing fault vibration signals, the envelope analysis based on LOD is applied to gear and roller bearing fault vibration signals analysis. Analytical results from experimental signal and real signal demonstrate that the new diagnosis approach based on LOD can identify gear and roller bearing work condition accurately and effectively. (C) 2018 Elsevier Inc. All rights reserved.
机译:介绍了名为本地振荡特征分解(LOD)的新的自适应时频分析方法。该方法基于信号本身的本地振荡特性,它使用各种数学操作,如差分,坐标域变换和分段线性变换,以将信号分解为一系列单振动组件(MOC),其瞬时频率具有物理意义。 MOC中的每一个代表原始信号的振荡特性,因此反映了原始信号的内在特性,因此LOD方法特别适用于处理非静止信号。在详细说明LOD的分解原理之后,通过分析模拟信号将LOD与经验模式分解(EMD)和局部平均分解(LMD)进行比较。结果表明了LOD方法的优越性。同时,旨在瞄准齿轮和滚子轴承故障振动信号的多分量调制特性,基于LOD的包络分析应用于齿轮和滚子轴承故障振动信号分析。实验信号和实际信号的分析结果表明,基于LOD的新诊断方法可以准确且有效地识别齿轮和滚轮轴承工作状态。 (c)2018年Elsevier Inc.保留所有权利。

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