2022
DOI: 10.36001/ijphm.2022.v13i2.3137
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Technical Language Supervision for Intelligent Fault Diagnosis in Process Industry

Abstract: In the process industry, condition monitoring systems with automated fault diagnosis methods assist human experts and thereby improve maintenance efficiency, process sustainability, and workplace safety. Improving the automated fault diagnosis methods using data and machine learning-based models is a central aspect of intelligent fault diagnosis (IFD). A major challenge in IFD is to develop realistic datasets with accurate labels needed to train and validate models, and to transfer models trained with labeled … Show more

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