| Literature DB >> 27622428 |
Meng Luo1, Chaoshun Li2, Xiaoyuan Zhang3, Ruhai Li1, Xueli An4.
Abstract
This paper proposes a hybrid system named as HGSA-ELM for fault diagnosis of rolling element bearings, in which real-valued gravitational search algorithm (RGSA) is employed to optimize the input weights and bias of ELM, and the binary-valued of GSA (BGSA) is used to select important features from a compound feature set. Three types fault features, namely time and frequency features, energy features and singular value features, are extracted to compose the compound feature set by applying ensemble empirical mode decomposition (EEMD). For fault diagnosis of a typical rolling element bearing system with 56 working condition, comparative experiments were designed to evaluate the proposed method. And results show that HGSA-ELM achieves significant high classification accuracy compared with its original version and methods in literatures.Entities:
Keywords: Ensemble empirical mode decomposition; Extreme learning machine; Fault diagnosis; Feature selection; Gravitational search algorithm; Parameter optimization
Year: 2016 PMID: 27622428 DOI: 10.1016/j.isatra.2016.08.022
Source DB: PubMed Journal: ISA Trans ISSN: 0019-0578 Impact factor: 5.468