International Journal of Prognostics and Health Management (Jul 2023)

DOMAIN ADAPTATION BASED FAULT DIAGNOSIS UNDER VARIABLE OPERATING CONDITIONS OF A ROCK DRILL

  • Yong Chae Kim,
  • Taehun Kim,
  • Jin Uk Ko,
  • Jinwook Lee,
  • Keon Kim

DOI
https://doi.org/10.36001/ijphm.2023.v14i2.3425
Journal volume & issue
Vol. 14, no. 2

Abstract

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Data-driven fault diagnosis is an essential technology for the safety and maintenance of rock drills. However, since the signals acquired from a rock drill have different distributions, which arise due to their variable operating conditions, the classification performance of any data-driven method is diminished; this is called the domain-shift issue. This paper proposes a new domain-adaptation-based fault diagnosis scheme to solve the domain-shift problem. The proposed method introduces a data-cropping technique to mitigate the difference in the length of the data measured from a rock drill for each impact cycle. To extract invariant features for all operating conditions, the proposed method combines two methods: a domain adversarial neural network and minimization of the maximum mean discrepancy (MMD) between the features from different domains. In addition, a soft voting ensemble is used to reduce the model uncertainty. The proposed method shows superior performance when validated with a rock drill dataset; the proposed approach was ranked in 2nd place in the 2022 PHM Conference Data Challenge.

Keywords