Abstract

Early fault diagnosis in rolling bearings is crucial to maintenance and safety in industry. To highlight the weak fault features from complex signals combined with multiple interferences and heavy background noise, a novel approach for bearing fault diagnosis based on higher-order analytic energy operator (HO-AEO) and adaptive local iterative filtering (ALIF) is put forward. HO-AEO has better effect in dealing with heavy noise. However, it is subjected to the limitation of mono-components. To solve this limitation, ALIF is adopted firstly to decompose the nonlinear, non-stationary signals into multiple mono-components adaptively. In the next, the resonance frequency band as the optimal intrinsic mode function (IMF) is selected according to the maximum kurtosis. In the following, HO-AEO is utilized to highlight weak fault characteristics of the selected IMF. Finally, the early bearing fault is diagnosed by the energy operator spectrum based on fast Fourier transform (FFT). Comparisons in the simulation indicate that the fourth order HO-AEO shows the best performance in fault diagnosis compared with Teager energy operator (TEO), analytic energy operator (AEO), the second and the third order HO-AEO. The simulated test and experimental results demonstrate that the proposed approach could effectively extract weak fault characteristics from contaminated vibration signals.

Highlights

  • Rolling element bearings are always playing critical roles in rotating machines and often work in harsh environment

  • A framework based on ALIF and higher-order analytic energy operator (HO-analytic energy operator (AEO)) has been established for the early fault diagnosis of rolling bearings, and the steps are as follows: (1) The faulty signals are collected and adaptive local iterative filtering is employed to decompose the faulty signals into a sum of intrinsic mode function (IMF)

  • An improved HO-AEO based on ALIF is proposed for the early fault diagnosis in rolling element bearings

Read more

Summary

Introduction

Rolling element bearings are always playing critical roles in rotating machines and often work in harsh environment. AN IMPROVED HIGHER-ORDER ANALYTICAL ENERGY OPERATOR WITH ADAPTIVE LOCAL ITERATIVE FILTERING FOR EARLY FAULT DIAGNOSIS OF BEARINGS. Feng et al [13] adopted ensemble EMD to decompose signals into mono-component parts for bearing fault diagnosis based on Teager energy spectrum, and gave an improved energy separation with iterative generalized demodulation [17]. Adaptive local iterative filtering method achieves the decomposition with iterative filters generated by the Fokker-Planck (FP) equation and an adaptive filter length selection by data driven It could inhibit problems existed in EMD to some extent such as mode mixing [19], and has been applied in some fields, like oscillation mode analysis on power grids [20].

Adaptive local iterative filtering
Teager energy operator
Analytic energy operator
Higher-order analytic energy operator
The proposed method
Simulation illustration
Experimental verification
Artificially seeded damage bearing with an inner race fault
Run-to-failure bearing with an outer race fault
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call