4.7 Article

Adversarial Multiple-Target Domain Adaptation for Fault Classification

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIM.2020.3009341

Keywords

Adversarial domain adaptation (DA); convolutional neural network (CNN); discriminator; intelligent fault diagnosis; single-source multiple-targets (1SmTs)

Funding

  1. A*STAR Industrial Internet of Things Research Program though the RIE2020 IAF-PP [A1788a0023]
  2. National Natural Science Foundation of China [51835009]
  3. A*STAR SINGA Scholarship

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Data-driven fault classification methods are widely studied, with domain adaptation techniques addressing the domain shift problem. Existing methods focus on single-source single-target settings, limiting scalability as a new model needs to be trained for each new target domain. A novel adversarial multiple-target domain adaptation method is proposed to generalize to multiple target domains concurrently.
Data-driven fault classification methods are receiving great attention as they can be applied to many real-world applications. However, they work under the assumption that training data and testing data are drawn from the same distribution. Practical scenarios have varying operating conditions, which results in a domain-shift problem that significantly deteriorates the diagnosis performance. Recently, domain adaptation (DA) has been explored to address the domain-shift problem by transferring the knowledge from labeled source domain (e.g., source working condition) to unlabeled target domain (e.g., target working condition). Yet, all the existing methods are working under single-source single-target (1S1T) settings. Hence, a new model needs to be trained for each new target domain. This shows limited scalability in handling multiple working conditions since different models should be trained for different target working conditions, which is clearly not a viable solution in practice. To address this problem, we propose a novel adversarial multiple-target DA (AMDA) method for single-source multiple-target (1SmT) scenario, where the model can generalize to multiple-target domains concurrently. Adversarial adaptation is applied to transform the multiple-target domain features to be invariant from the single-source-domain features. This leads to a scalable model with a novel capability of generalizing to multiple-target domains. Extensive experiments on two public datasets and one self-collected dataset have demonstrated that the proposed method outperforms state-of-the-art methods consistently.

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