4.7 Article

Rolling bearing fault diagnosis utilizing variational mode decomposition based fractal dimension estimation method

Journal

MEASUREMENT
Volume 181, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.measurement.2021.109614

Keywords

Rolling bearing; Fault diagnosis; Variational mode decomposition(VMD); Fractal dimension

Funding

  1. Natural Science Foundation of China [51305454]
  2. Scientific Innovation Development Foundation of Shijiazhuang Campus of Army Engineering University

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This paper proposes a novel fractal dimension estimation method based on VMD, which accurately estimates fractal dimensions through multi-dimensional volume calculation and least square method, further studying the fractal characteristics of vibration signals from rolling bearings.
A novel fractal dimension estimation method based on VMD is proposed in this paper. VMD is utilized to decompose the multi-component signal into several components. Multi-dimensional super-body volume is defined and calculated based on the decomposed components. Fractal dimension is then estimated by the least square method. Simulation results verify that fractal dimension estimation accuracy of the proposed method outperform box counting method and detrended fluctuation analysis. Furthermore, with this novel method, fractal characteristics of vibration signals form rolling bearing are studied. Achievements indicate that vibration signals are characterized by double-scale fractal features. Thus, two fractal dimensions corresponding to the small and large time scales respectively are extracted as feature parameters of vibration signals. Finally, doublescale fractal dimensions are employed for rolling bearing fault diagnosis. Classification results indicate that double-scale fractal dimensions extracted by VMD are capable of expressing fractal characteristics of vibration signals and diagnosing the rolling bearing faults.

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