학술논문

Gearbox Fault Diagnosis Based on the LMD Cloud Model and PSO-KELM
Document Type
article
Source
Jixie chuandong, Vol 47, Pp 157-163 (2023)
Subject
Gearbox
Fault diagnosis
Local mean decomposition
Cloud model
Particle swarm optimization kernel extreme learning machine
Mechanical engineering and machinery
TJ1-1570
Language
Chinese
ISSN
1004-2539
Abstract
The characteristics of non-smoothness and uncertainty of gearbox fault vibration signal lead to the low accuracy of gearbox fault diagnosis. To address this problem, a gearbox fault diagnosis method based on local mean decomposition (LMD) cloud model feature extraction combined with particle swarm optimization (PSO) kernel extreme learning machine (KELM) is proposed. Firstly, the fault vibration signal is decomposed by LMD to obtain several PF components, and the PF components with higher correlation are screened out using the correlation coefficient principle. Secondly, the screened PF components are input into the cloud model, and the feature vectors are extracted using the inverse cloud generator and input into PSO-KELM for fault diagnosis. Finally, the performance of the method is analyzed using the measured data of the QPZZ-Ⅱ test-bed gearbox. The results show that the recognition accuracy of the method is 97.65%, and compared with various methods this method has the best recognition performance.