International Journal of Prognostics and Health Management (Jan 2023)

A Hybrid Approach Combining Data-Driven and Signal-ProcessingBased Methods for Fault Diagnosis of a Hydraulic Rock Drill

  • Hye Jun Oh,
  • Jinoh Yoo,
  • Sangkyung Lee,
  • Minseok Chae,
  • Jongmin Park,
  • Byeng D. Youn

DOI
https://doi.org/10.36001/ijphm.2023.v14i1.3458
Journal volume & issue
Vol. 14, no. 1

Abstract

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This study presents a novel method for fault diagnosis of a hydrostatic rock drill. Hydraulic rock drills suffer from both domain discrepancy issues that arise due to their harsh working environment and indivisible difference. As a result, fault diagnosis is very challenging. To overcome these problems, we propose a novel diagnosis method that combines both data-driven and signal-process-based methods. In the proposed approach, data-driven methods are employed for overall fault classification, using domain adaptation, metric learning, and pseudo-label-based deep learning methods. Next, a signal-process-based method is used to diagnose the specific fault by generating a reference signal. Using the combined approach, the fault-diagnosis performance was 100%; the proposed method was able to perform well even in cases with domain discrepancy.

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