Rolling bearing fault diagnosis based on variational mode decomposition and weighted multidimensional feature entropy fusion

IF 0.7 Q4 ENGINEERING, MECHANICAL Journal of Vibroengineering Pub Date : 2024-01-21 DOI:10.21595/jve.2023.23673
Na Lei, Feihu Huang, Chunhui Li
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引用次数: 0

Abstract

Since bearing fault signal in complex running status is usually characterized as nonlinear and non-stationary, it is difficult to extract accurate affluent features and achieve effective fault identification via conventional signal processing tools. In this article, a rolling bearing fault diagnosis technique based on variational mode decomposition and weighted multidimensional feature entropy fusion is proposed to address this issue, which is mainly composed of three procedures. First, the original signal undergoes the variational model decomposition. Next, the signal features are extracted by weighted multidimensional feature entropy as the input of the diagnosis model. Finally, the classification is performed by a convolutional neural network. The method is applied in simulation and experimental analysis. The experimental results show that the proposed method, which demonstrates strong immunity to noise and robustness, can more effectively and adaptively extract the fault features of rolling bearings and achieve the goal of identifying the rolling bearing fault category and damage degree under variable operating conditions. Meanwhile, this approach exhibits superior accuracy and identification performance to some similar entropy-based hybrid approaches referred to in this article, with a promising prospect in industrial application.
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基于变异模式分解和加权多维特征熵融合的滚动轴承故障诊断
由于复杂运行状态下的轴承故障信号通常具有非线性和非稳态的特点,因此很难通过传统的信号处理工具提取准确的富裕特征并实现有效的故障识别。本文针对这一问题,提出了一种基于变模分解和加权多维特征熵融合的滚动轴承故障诊断技术,主要包括三个步骤。首先,对原始信号进行变分模式分解。然后,通过加权多维特征熵提取信号特征,作为诊断模型的输入。最后,通过卷积神经网络进行分类。该方法被应用于仿真和实验分析。实验结果表明,所提出的方法具有很强的抗噪声能力和鲁棒性,能更有效、更自适应地提取滚动轴承的故障特征,实现在多变运行条件下识别滚动轴承故障类别和损坏程度的目标。同时,与本文提到的一些类似的基于熵的混合方法相比,该方法表现出更高的精度和识别性能,具有广阔的工业应用前景。
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来源期刊
Journal of Vibroengineering
Journal of Vibroengineering 工程技术-工程:机械
CiteScore
1.70
自引率
0.00%
发文量
97
审稿时长
4.5 months
期刊介绍: Journal of VIBROENGINEERING (JVE) ISSN 1392-8716 is a prestigious peer reviewed International Journal specializing in theoretical and practical aspects of Vibration Engineering. It is indexed in ESCI and other major databases. Published every 1.5 months (8 times yearly), the journal attracts attention from the International Engineering Community.
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