利用 ACF 和 GMOMEDA 提取轴承故障的声发射信号特征

IF 2.6 3区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING Journal of Nondestructive Evaluation Pub Date : 2024-11-02 DOI:10.1007/s10921-024-01134-0
Yun Li, Yang Yu, Ping Yang, Fanzi Pu, Yunpeng Ben
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引用次数: 0

摘要

在工业中,滚动轴承损坏声发射(AE)信号会受到复杂传输路径和强噪声的干扰。AE 信号的信噪比很低。轴承周期性故障脉冲微弱,故障特征提取具有挑战性。针对这些问题,结合 AE 信号的脉冲性和快速关注的特点,本文提出了一种基于自相关函数(ACF)和改进的多点最优最小熵解卷积调整(MOMEDA)方法的轴承微弱故障信号增强方法。首先,在低信噪比情况下,MOMEDA 方法的目标向量不是最优的,诊断精度较低。针对这一问题,本文采用梯度下降法对 MOMEDA 进行了改进,称为 GMOMEDA。对滚动轴承故障 AE 脉冲信号进行了增强。然后,结合 ACF 和 GMOMEDA 方法,突出信号中的周期性弹性波。最后,对增强的 AE 信号进行包络解调处理,以提取轴承故障信号的频率。实验结果表明,ACF-GMOMEDA 方法的性能优于其他五种方法。轴承故障 AE 信号的频率特性可以被准确提取出来。
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Acoustic Emission Signal Feature Extraction for Bearing Faults Using ACF and GMOMEDA

In industry, rolling bearing damage acoustic emission (AE) signals are interfered with by complex transmission paths and strong noise. The signal-to-noise ratio of the AE signal is low. The bearing periodic fault pulse is weak, and fault feature extraction is challenging. To address these issues, combined with the characteristics of impulsiveness and rapid attention of the AE signal, an enhancement of the bearing weak fault signal based on the autocorrelation function (ACF) and improved multipoint optimal minimum entropy deconvolution adjusted (MOMEDA) method is proposed in this contribution. Firstly, in low signal-to-noise ratio, the target vector of the MOMEDA method is not optimal, and the diagnostic accuracy is low. To address this problem, this paper improves MOMEDA by using the gradient descent method, called GMOMEDA. Rolling bearing fault AE pulse signals are enhanced. Then, a method combination of ACF and GMOMEDA highlights the periodic elastic wave in the signal. Finally, the enhanced AE signal is processed by envelope demodulation to extract the frequency of the bearing fault signal. The experimental results show that the performance of the ACF-GMOMEDA method is better than the other five methods. The frequency features of bearing fault AE signal can be accurately extracted.

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来源期刊
Journal of Nondestructive Evaluation
Journal of Nondestructive Evaluation 工程技术-材料科学:表征与测试
CiteScore
4.90
自引率
7.10%
发文量
67
审稿时长
9 months
期刊介绍: Journal of Nondestructive Evaluation provides a forum for the broad range of scientific and engineering activities involved in developing a quantitative nondestructive evaluation (NDE) capability. This interdisciplinary journal publishes papers on the development of new equipment, analyses, and approaches to nondestructive measurements.
期刊最新文献
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