| Literature DB >> 31182897 |
Yanfei Lu1, Rui Xie2, Steven Y Liang1,3.
Abstract
The successful prediction of the remaining useful life of rolling element bearings depends on the capability of early fault detection. A critical step in fault diagnosis is to use the correct signal processing techniques to extract the fault signal. This paper proposes a newly developed diagnostic model using a sparse-based empirical wavelet transform (EWT) to enhance the fault signal to noise ratio. The unprocessed signal is first analyzed using the kurtogram to locate the fault frequency band and filter out the system noise. Then, the preproc signal is filtered using the EWT. The l q -regularized sparse regression is implemented to obtain a sparse solution of the defect signal in the frequency domain. The proposed method demonstrates a significant improvement of the signal to noise ratio and is applicable for detection of cyclic fault, which includes the extraction of the fault signatures of bearings and gearboxes.Entities:
Keywords: Ball bearing; Fault diagnosis; Sparse matrices; Wavelet transforms
Year: 2018 PMID: 31182897 PMCID: PMC6556120
Source DB: PubMed Journal: Int J Adv Manuf Technol ISSN: 0268-3768 Impact factor: 3.226