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Application of a new EWT-based denoising technique in bearing fault diagnosis

机译:一种新的EWT基去噪技术在轴承故障诊断中的应用

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摘要

The vibration signal analysis is a popular method for extracting sensitive fault features. The vibration signals are usually contaminated by noise, and therefore the extracted features cannot be providing sufficient information about the bearing faults. In this paper, a new technique is introduced for denoising the vibration signals and recognizing the bearing faults based on the empirical wavelet transform (EWT). Firstly, the vibration signals are decomposed by the EWT method into a set of functions called the empirical modes. Then, the noise-dominate modes have been denoised by an improved thresholding function that has been recently presented. Finally, the kurtosis parameter and the envelope spectrum of the denoised signal are used for early fault detection and diagnosing the fault type, respectively. The result of the simulated signal and different experimental datasets illustrate that the presented work is preferable for the empirical mode decomposition based denoising technique in the early fault detection. (C) 2019 Elsevier Ltd. All rights reserved.
机译:振动信号分析是一种用于提取敏感故障特征的流行方法。振动信号通常被噪声污染,因此提取的特征不能提供关于轴承故障的足够的信息。在本文中,引入了一种新技术,用于基于经验小波变换(EWT)来识别振动信号并识别轴承故障。首先,振动信号由EWT方法分解成一组称为经验模式的功能。然后,通过最近呈现的改进的阈值函数来解析噪声主导模式。最后,刚性分子参数和去噪信号的包络谱分别用于早期故障检测并诊断故障类型。模拟信号和不同实验数据集的结果说明了所呈现的工作是基于在早期故障检测中基于经验模式分解的基于实验分解技术。 (c)2019年elestvier有限公司保留所有权利。

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