Comparison and Selection of Wavelets for Vibration Signals Denoising and Fault Detection of Rotating Machines using Neighborhood Correlation of SWT Coefficients

R. Jha, P. D. Swami, Dhanpratap Singh
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引用次数: 2

Abstract

The vabartion signals carries the dynamic informations of the machine, which is useful for fault identification of the machine. The practical raw signals suffer from heavy noise, it is essential to retrieve the original signal from noisy raw signals. The signal processing techniques are very effective in such situations. The presence of noise in vibration signal is so large that its elimination results in information loss. In the proposed work noisy vibration signals corrupted by AWGN noise of faulty gear box faulty gear box are denoised using many wavelets and the results are compared. Stationary Wavelet Transform (SWT) is time invariant transform due to this property it is free from the aliasing problem. In this work SWT has been employed for vibration signal denoising and the results have been compared to the discrete wavelet Transfrom(DWT). The fault detection becomes easy for denoised signal and the analysis of its spectrum predicts the actual condition of the machine. The denoised results are compared on the basis of kurtosis.
基于SWT系数邻域相关的旋转机械振动信号去噪与故障检测小波的比较与选择
故障信号携带着机器的动态信息,有助于机器的故障识别。实际的原始信号存在较大的噪声,如何从有噪声的原始信号中提取出原始信号至关重要。在这种情况下,信号处理技术是非常有效的。振动信号中存在很大的噪声,消除噪声会造成信息损失。在该方法中,利用多小波对故障齿轮箱的噪声进行降噪,并对降噪结果进行比较。平稳小波变换(SWT)是一种时不变变换,由于这一特性,它不存在混叠问题。在这项工作中,SWT被用于振动信号去噪,并将结果与离散小波变换(DWT)进行了比较。对去噪后的信号进行故障检测变得容易,对其频谱的分析可以预测机器的实际状态。在峰度的基础上对去噪结果进行比较。
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