Fault Detection of Bearing Systems through EEMD and Optimization Algorithm

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초록

This study proposes a fault detection and diagnosis method for bearing systems using ensemble empirical mode decomposition (EEMD) based feature extraction, in conjunction with particle swarm optimization (PSO), principal component analysis (PCA), and Isomap. First, a mathematical model is assumed to generate vibration signals from damaged bearing components, such as the inner-race, outer-race, and rolling elements. The process of decomposing vibration signals into intrinsic mode functions (IMFs) and extracting statistical features is introduced to develop a damage-sensitive parameter vector. Finally, PCA and Isomap algorithm are used to classify and visualize this parameter vector, to separate damage characteristics from healthy bearing components. Moreover, the PSO-based optimization algorithm improves the classification performance by selecting proper weightings for the parameter vector, to maximize the visualization effect of separating and grouping of parameter vectors in three-dimensional space.

키워드

EEMDIsomapPSOfault detectionfeature extractionEMPIRICAL MODE DECOMPOSITIONROLLING ELEMENT BEARINGSFEATURE-EXTRACTIONDIAGNOSIS APPROACHSPECTRUMTRANSFORMENTROPYEMD
제목
Fault Detection of Bearing Systems through EEMD and Optimization Algorithm
저자
Lee, Dong-HanAhn, Jong-HyoKoh, Bong-Hwan
DOI
10.3390/s17112477
발행일
2017-11
유형
Article
저널명
Sensors
17
11