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Early pitting fault detection for polymer gears using kurtosis-VMD based condition indicators

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Listed:
  • Anupam Kumar
  • Anand Parey
  • Pavan Kumar Kankar

Abstract

The vibration signals of a polymer gear are considerably weak and susceptible to ambient noise at the early stage of the fault, which makes the fault difficult to detect. Efficient detection of an early fault in a polymer gear may improve the operation safety of the machinery system that utilizes it for power transmission. This study introduces an innovative approach for the early detection of pitting faults in polymer gears, utilizing condition indicators (CIs) derived from kurtosis-variational mode decomposition (VMD). First, the vibration signal of the polymer gear is decomposed using VMD into several components. Second, the sensitive components are selected to construct a new signal from the first two largest kurtosis values. Third, the CIs are extracted from newly constructed signals, and envelope spectrum analysis is performed. It is observed from the results that the kurtosis-VMD based CIs are effective in the early pitting fault detection of polymer gears. Finally, it is found that the proposed method performs better in all operating conditions considered in the experiment, compared with raw signal and kurtosis-empirical mode decomposition (EMD) based analysis. The proposed method’s response to noise is also explored. Furthermore, the proposed method is compared with the existing time synchronous averaging (TSA), difference, and residual methods.

Suggested Citation

  • Anupam Kumar & Anand Parey & Pavan Kumar Kankar, 2025. "Early pitting fault detection for polymer gears using kurtosis-VMD based condition indicators," Journal of Risk and Reliability, , vol. 239(2), pages 358-370, April.
  • Handle: RePEc:sae:risrel:v:239:y:2025:i:2:p:358-370
    DOI: 10.1177/1748006X241232123
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