Enhanced periodic mode decomposition and its application to composite fault diagnosis of rolling bearings

ISA Trans. 2022 Jun:125:474-491. doi: 10.1016/j.isatra.2021.07.014. Epub 2021 Jul 12.

Abstract

The impulse components of different periods in the composite fault signal of rolling bearing are extracted difficultly due to the background noise and the coupling of composite faults, which greatly affects the accuracy of composite fault diagnosis. To accurately extract the periodic impulse components from the composite fault signals, we introduce the theory of Ramanujan sum to generate the precise periodic components (PPCs). In order to comprehensively extract major periods in composite fault signals, the SOSO-maximum autocorrelation impulse harmonic to noise deconvolution (SOSO-MAIHND) method is proposed to reduce noise and enhance the relatively weak periodic impulses. Based on this, an enhanced periodic mode decomposition (EPMD) method is proposed. The experimental results indicate that the EPMD is an effective method for composite fault diagnosis of rolling bearings.

Keywords: Composite fault diagnosis; Enhanced periodic mode decomposition; Ramanujan sum; Rolling bearing; SOSO-MAIHND.