Rolling bearing fault diagnosis based on multipoint optimal minimum entropy deconvolution adjusted technique and direct spectral analysis

Yitian Wang, N. Hu, Lei Hu, Zhe Cheng
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引用次数: 3

Abstract

This paper introduces a new idea of bearing fault diagnosis, which is to use the Multipoint Optimal Minimum Entropy Deconvolution Adjusted (MOMEDA) Technique to filter the vibration signal, getting the output signal and directly to do spectral analysis, then to observe the fault characteristics for fault diagnosis. MOMEDA technique is an improved MED algorithm proposed by McDonald in 2016, which can enhance the repetition of pulses in the signal. In this paper, MOMEDA is applied to the fault signal processing of rolling bearing. For bearing fault signal with constant speed, we firstly use MOMEDA technology to filter the signal, then do the frequency spectrum analysis. In addition, for variable speed bearing fault signal, this paper uses MOMEDA technology combined with resampling order analysis technology to analyze variable speed signal. The simulation signals and the bearing experimental data of Case Western Reserve University were processed, from the results, the direct spectral analysis after MOMEDA processing can obtain the fault characteristic without traditional envelope analysis, for fault diagnosis of bearing is simple and effective.
基于多点最优最小熵反褶积调整技术和直接谱分析的滚动轴承故障诊断
本文提出了一种新的轴承故障诊断思路,即利用多点最优最小熵反褶积调整(MOMEDA)技术对振动信号进行滤波,得到输出信号并直接进行频谱分析,然后观察故障特征进行故障诊断。MOMEDA技术是McDonald在2016年提出的一种改进的MED算法,可以增强信号中脉冲的重复。本文将MOMEDA应用于滚动轴承故障信号的处理。对于恒转速轴承故障信号,首先利用MOMEDA技术对信号进行滤波,然后进行频谱分析。此外,对于变速轴承故障信号,本文采用MOMEDA技术结合重采样阶次分析技术对变速信号进行分析。将仿真信号与美国凯斯西储大学轴承实验数据进行处理,结果表明,经过MOMEDA处理后的直接频谱分析无需传统的包络分析即可获得轴承的故障特征,对轴承的故障诊断简单有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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