2022
DOI: 10.1109/tim.2021.3127654
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Integrating Expert Knowledge With Domain Adaptation for Unsupervised Fault Diagnosis

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 article, we aim to overcome this limitation by integrating expert knowledge with domain adaptation (DA) in a synthetic-to-real framework for unsupervise… Show more

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Cited by 33 publications
(24 citation statements)
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References 61 publications
(71 reference statements)
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“…Here, the initial state of the structure is damaged with an edge notch. However, we can use this dataset considering the initial state as a baseline and upcoming states as delaminated [29].…”
Section: Nasa-pcoe Datasetmentioning
confidence: 99%
“…Here, the initial state of the structure is damaged with an edge notch. However, we can use this dataset considering the initial state as a baseline and upcoming states as delaminated [29].…”
Section: Nasa-pcoe Datasetmentioning
confidence: 99%
“…Sensors . Common types of sensors used for rolling bearing signal acquisition are accelerometer sensors [ 48 , 52 ] as well as microphones [ 46 ]. Accelerometer sensors measure the health of machinery by being fixed directly near the machinery to collect the vibration signals generated by the mechanical vibrations.…”
Section: Applicationsmentioning
confidence: 99%
“…Especially inducing data-driven models with knowledge based on experience and physics has been successful. Recent work in the PHM domain has shown to increase explainability and enable root cause analysis by taking into account input from human experts (Steenwinckel et al, 2021), make models more robust and decrease the amount of data needed through the simulation of data based on expert knowledge (Wang, Taal, & Fink, 2021), and increase overall performance by extending the feature space (Chao, Kulkarni, Goebel, & Fink, 2022). Even though recent work in the direction of combining knowledge with data is promising, a lot of untapped knowledge in the shape of physical models (e.g.…”
Section: State Of the Artmentioning
confidence: 99%