Cycle-consistent Adversarial Adaptation Network and its application to machine fault diagnosis.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

Driven by industrial big data and intelligent manufacturing, deep learning approaches have flourished and yielded impressive achievements in the community of machine fault diagnosis. Nevertheless, current diagnosis models trained on a specific dataset seldom work well on other datasets due to the domain discrepancy. Recently, adversarial domain adaptation-based approaches have become an emerging and compelling tool to address this issue. Nonetheless, existing methods still have a shortcoming since they cannot guarantee sufficient feature similarity between the source domain and the target domain after adaptation, resulting in unguaranteed performance. To this end, a Cycle-consistent Adversarial Adaptation Network (CAAN) is advanced to realize more effective fault diagnosis of machinery. In CAAN, specifically, an adversarial game formed by the feature extractor and the domain discriminator is constructed to induce transferable feature learning. Meanwhile, the feature translators and discriminators between source and target domains are further designed to build a more comprehensive cycle-consistent generative adversarial constrain, which can more reliably ensure domain-invariant and class-separate characteristics of learned features. Extensive experiments constructed on three datasets from different mechanical systems demonstrate the effectiveness and superiority of CAAN.

Authors

  • Jinyang Jiao
    School of Reliability and Systems Engineering, Beihang University, Beijing 100191, China. Electronic address: jiaojinyang@buaa.edu.cn.
  • Jing Lin
    Operation Room, Guilin People's Hospital, Guilin, Guangxi, China.
  • Ming Zhao
    School of Computer Science and Engineering, Central South University, Changsha, 410000, China.
  • Kaixuan Liang
    School of Mechanical Engineering, Xi'an Jiaotong University, Xi'an, Shaanxi 710049, China. Electronic address: lkxcarrot@stu.xjtu.edu.cn.
  • Chuancang Ding
    School of Rail Transportation, Soochow University, Suzhou, Jiangsu 215131, China. Electronic address: ccding@suda.edu.cn.