基于小波多尺度主成分分析的滚珠轴承多通道振动声故障分析

Satish Mohanty, K. K. Gupta, K. Raju
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引用次数: 10

摘要

在不同时间步长的球轴承故障分割是避免故障发生的重要手段。利用基于小波变换的多尺度主成分分析(WMSPCA)和快速傅里叶变换(FFT)对滚珠轴承的振动声学特性进行了研究。首先,利用脉冲激振锤验证了滚珠轴承在健康和不健康状态下的特征频率;使用Zigbee无线加速度计传感器获取所产生的频率。其次,利用三通道加速度计传感器和阵列传声器获得了声学和振动特性;最后,利用WMSPCA提取滚珠轴承的实际特征。WMSPCA的主要优点在于,它对不同信道的实际特征分割与故障传播方向无关。WMSPCA利用小波和主成分分析同时实现信号的自相关和交叉相关。该算法提取出滚珠轴承的工作频率范围,排除沿滚珠轴承切向、轴向和径向相关的模糊频率分量,帮助确定精确的振动频率。本文还论述了声振动在轴承故障诊断中的重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-channel vibro-acoustic fault analysis of ball bearing using wavelet based multi-scale principal component analysis
Ball bearing fault segmentation at different time steps are important to avert failure. This paper studies the Vibro-acoustic characteristic of the ball bearing using Wavelet Based Multi Scale Principal Component Analysis (WMSPCA) and FFT. Firstly, the characteristic frequencies of the ball bearing for healthy and unhealthy states are verified using an impulse exciter hammer; and the generated frequencies are acquired using a Zigbee wireless accelerometer sensor. Secondly, the acoustic and vibration characteristics are acquired using three channel accelerometer sensor and a array microphone. Lastly, the actual characteristics of the ball bearing are extracted using WMSPCA. The main advantage of WMSPCA lies in the actual feature segmentation from different channels independent relative to the direction of propagation of faults. WMSPCA uses wavelet and PCA to auto-correlate and cross-correlate the signal simultaneously. The algorithm extracts the frequency range of operation of the ball bearing and assists in determining the precise frequency of vibration excluding its perplexed frequency components associated along tangential, axial and radial direction of the ball bearing. The paper also correlates the significance of acoustic-vibration in the fault finding of bearing.
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