A Novel Incipient Fault Detection Technique for Roller Bearing Using Deep Independent Component Analysis and Variational Modal Decomposition

IF 2.2 3区 工程技术 Q2 ENGINEERING, MECHANICAL Journal of Tribology-transactions of The Asme Pub Date : 2023-02-10 DOI:10.1115/1.4056899
V. G. Salunkhe, R. Desavale, S. Khot, Nitesh P. Yelve
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引用次数: 2

Abstract

Roller bearing failure can result in downtime or the entire outage of rotating machinery. As a result, a timely incipient bearing defect must be diagnosed to ensure optimal process operation. Modern condition monitoring necessitates the use of Deep Independent Component Analysis to diagnose incipient bearing failure. This paper presents a Deep Independent Component Analysis method based on variational Modal Decomposition (VMD-ICA) is to diagnose incipient bearing defect. On a newly established test setup for rotor bearings, Fast Fourier Techniques are used to extract the vibration responses of bearings that have been artificially damaged using Electro-chemical Machining. VMD techniques diminish the noise of the measurement data, to decompose data processed into multiple sub-data sets for extracting incipient defect characteristics. The simplicity of the VMD-ICA model enriched the precision of diagnosis correlated to the experimental results with weak fault characteristic signal and noise interference. Moreover, Deep VMD-ICA has additionally demonstrated strong performance in comparison to experimental results and is useful for monitoring the condition of industrial machinery.
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基于深度独立分量分析和变分模态分解的滚动轴承早期故障检测技术
滚子轴承故障可能导致停机或整个旋转机械停机。因此,必须及时诊断早期轴承缺陷,以确保最佳的工艺操作。现代状态监测需要使用深度独立分量分析来诊断轴承的早期故障。提出了一种基于变分模态分解(VMD-ICA)的深度独立分量分析方法来诊断轴承早期缺陷。在新建立的转子轴承测试装置上,采用快速傅立叶技术提取了经电化学加工人为损坏的轴承的振动响应。VMD技术消除了测量数据的噪声,将处理后的数据分解成多个子数据集,用于提取早期缺陷特征。在故障特征信号和噪声干扰较弱的情况下,VMD-ICA模型的简单性提高了与实验结果相关的诊断精度。此外,与实验结果相比,深度VMD-ICA还显示出强大的性能,可用于监测工业机械的状态。
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来源期刊
Journal of Tribology-transactions of The Asme
Journal of Tribology-transactions of The Asme 工程技术-工程:机械
CiteScore
4.20
自引率
12.00%
发文量
117
审稿时长
4.1 months
期刊介绍: The Journal of Tribology publishes over 100 outstanding technical articles of permanent interest to the tribology community annually and attracts articles by tribologists from around the world. The journal features a mix of experimental, numerical, and theoretical articles dealing with all aspects of the field. In addition to being of interest to engineers and other scientists doing research in the field, the Journal is also of great importance to engineers who design or use mechanical components such as bearings, gears, seals, magnetic recording heads and disks, or prosthetic joints, or who are involved with manufacturing processes. Scope: Friction and wear; Fluid film lubrication; Elastohydrodynamic lubrication; Surface properties and characterization; Contact mechanics; Magnetic recordings; Tribological systems; Seals; Bearing design and technology; Gears; Metalworking; Lubricants; Artificial joints
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