Cognitive Computation and Systems (Mar 2022)

Fast Fourier transform and wavelet‐based statistical computation during fault in snubber circuit connected with robotic brushless direct current motor

  • Sankha Subhra Ghosh,
  • Surajit Chattopadhyay,
  • Arabinda Das

DOI
https://doi.org/10.1049/ccs2.12041
Journal volume & issue
Vol. 4, no. 1
pp. 31 – 44

Abstract

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Abstract The snubber circuit plays an important role in motor drives. This paper deals with the detection of the inverter switch snubber circuit resistance fault (ISSCRF) in brushless direct current (BLDC) motors used for robotic applications. This has been carried out in two parts: Fast‐Fourier‐Transform‐based analysis and wavelet‐decomposition‐based analysis on the stator current of the BLDC motor. The first analysis investigates the effects of different percentages of ISSCRF on direct current (DC) component, fundamental frequency component and total harmonic distortion percentage. Next analyses consider all of kurtosis, skewness and root‐mean‐square values of wavelet coefficients of stator current harmonic spectra. Comparative learning is made to obtain a few selective parameters best fit for the detection of ISSCRF. A fault detection algorithm to detect ISSCRF has been proposed and validated by three case studies. The algorithm is again modified with best‐fit parameters. Comparative discussion and novel contributions of the work have also been presented.

Keywords