학술논문

Fault diagnosis of rolling bearing based on BP neural network with fractional order gradient descent.
Document Type
Article
Source
Journal of Vibration & Control. May2024, Vol. 30 Issue 9/10, p2139-2153. 15p.
Subject
*FAULT diagnosis
*ROLLER bearings
*SINGULAR value decomposition
*FEATURE extraction
*ROTATING machinery
Language
ISSN
1077-5463
Abstract
The health of rolling bearing is of great importance for the normal operation of rotating machinery. The fault diagnosis process can be roughly summarized as signal processing, feature extraction, and fault classification. In this paper, a novel feature extraction and fault diagnosis method with fractional order back-propagation neural network is put forward. The new sine cosine algorithm optimized variational mode decomposition is performed on vibration signals, and the fault feature vectors are selected and built by singular value decomposition. Inspired by the fractional order calculus, a fractional order back-propagation neural network is employed to realize fault classification. The capability of the developed fault diagnosis algorithm is comprehensively evaluated via benchmark bearing data. The experimental results demonstrate that the designed method substantially extracts bearing defect features, increases classification accuracy and efficiency, and also outperforms existing algorithms. [ABSTRACT FROM AUTHOR]