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ANN based evaluation of performance of wavelet transform for condition monitoring of rolling element bearing

机译:基于ANN评估滚动元件轴承条件监测的小波变换性能

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Bearings are one of the critical components in rotating machines and the majority of the failure arises from the defective bearings. Bearing failure leads to failure of a machine and unpredicted productivity loss for production facilities. Hence, bearing fault detection and diagnosis is an integral part of the preventive maintenance procedures. In this paper vibration signals for three conditions of a deep groove ball bearing Normal (N), defect on inner race (IR) and defect on outer race (OR) were acquired from a customized bearing test rig, under one load and two speed conditions. Discrete Wavelet Transform (DWT) has been used for vibration signal analysis. The statistical features extracted from the dominant wavelet coefficients are used as inputs to ANN classifier to evaluate its performance. The vibration signals have also been denoised using a new thresholding scheme. A comparison of ANN performance is made based on raw vibration data and denoised data. The ANN performance has been found to be comparatively higher when denoised signals were used as inputs to the classifier. Also various mother wavelet functions (Db8, Db4, Db44 and Sym10) were used to analyze the denoised vibration signals and their performance has been evaluated using the ANN classifiers.
机译:轴承是旋转机器中的关键部件之一,并且大部分失败从缺陷的轴承产生。轴承故障导致机器的失效和生产设施的未预测的生产率损失。因此,轴承故障检测和诊断是预防性维护程序的组成部分。在本文的振动信号中,用于深沟球轴承的三个条件,在一个负载和两个速度条件下,从定制的轴承试验台中获取内圈(IR)上的缺陷(IR)和外圈(或)上的缺陷。离散小波变换(DWT)已被用于振动信号分析。从主导小波系数提取的统计特征用作ANN分类器的输入,以评估其性能。振动信号也使用新的阈值方案进行了去噪。 ANN性能的比较是基于原始振动数据和去噪数据进行的。当被去噪信号用作分类器的输入时,已发现ANN性能相对较高。还使用各种母小波函数(DB8,DB4,DB44和SYM10)来分析去噪振动信号,并且使用ANN分类器评估其性能。

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