Diagnosis of Localized Bearing Defects using Texture Analysis of Vibration Envelope Signals and Machine Learning

Cong Dai Nguyen, Fazal Nasir, Shahbaz Khan, S. Khan, Jong-Myon Kim
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Abstract

Bearings are important because they play a critical role in the operation of many machines and devices by reducing friction and enabling smooth motion between two moving parts. They are commonly used in rotating machinery, such as electric motors, turbines, pumps, and gearboxes, where they support and guide the rotating shafts. The primary cause of failure in wind turbines and induction motors is bearing faults, resulting in significant downtime and economic losses. Detecting these faults accurately and promptly is crucial to preventing unexpected shutdowns. Most of the existing methods for bearing fault detection rely on envelope analysis, which involves filtering and demodulating the raw signal, and Fourier analysis of the envelope signal to identify defect frequencies. Recent research has focused on improving the visibility of these frequencies by selecting an optimal band for filtering, using sub-band analysis and spectral kurtosis, which is a complex process and can be time-consuming. This paper presents a new approach to envelope signal analysis using texture analysis of the envelope signals that are projected as 2D grayscale images where each fault generates a unique texture. These textures are encoded using the local binary pattern operator and then used for fault classification. The method is tested on a publicly available seeded fault dataset.
基于振动包络信号织构分析和机器学习的轴承局部缺陷诊断
轴承很重要,因为它们通过减少摩擦和使两个运动部件之间的平滑运动,在许多机器和设备的运行中起着至关重要的作用。它们通常用于旋转机械,如电动机、涡轮机、泵和齿轮箱,在那里它们支持和引导旋转轴。风力涡轮机和感应电机故障的主要原因是轴承故障,导致大量停机和经济损失。准确、及时地检测这些故障对于防止意外停机至关重要。大多数现有的轴承故障检测方法依赖于包络分析,包括对原始信号进行滤波和解调,并对包络信号进行傅立叶分析以识别缺陷频率。最近的研究主要集中在通过选择最优频带进行滤波,利用子频带分析和谱峰度来提高这些频率的可见性,这是一个复杂且耗时的过程。本文提出了一种新的包络信号分析方法,利用包络信号的纹理分析,将包络信号投影为二维灰度图像,其中每个断层产生一个独特的纹理。这些纹理使用局部二进制模式算子进行编码,然后用于故障分类。该方法在一个公开可用的种子故障数据集上进行了测试。
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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