Integrating Expert Knowledge with Domain Adaptation for Unsupervised Fault Diagnosis
Qin Wang,
Cees Taal,
Olga Fink
Abstract:Data-driven fault diagnosis methods often require abundant labeled examples for each fault type. On the contrary, real-world data is often unlabeled and consists of mostly healthy observations and only few samples of faulty conditions. The lack of labels and fault samples imposes a significant challenge for existing data-driven fault diagnosis methods. In this paper, we aim to overcome this limitation by integrating expert knowledge with domain adaptation in a synthetic-to-real framework for unsupervised fault… Show more
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