2024
DOI: 10.3390/jmse12101792
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Development of a Hierarchical Clustering Method for Anomaly Identification and Labelling of Marine Machinery Data

Christian Velasco-Gallego,
Iraklis Lazakis,
Nieves Cubo-Mateo

Abstract: The application of artificial intelligence models for the fault diagnosis of marine machinery increased expeditiously within the shipping industry. This relates to the effectiveness of artificial intelligence in capturing fault patterns in marine systems that are becoming more complex and where the application of traditional methods is becoming unfeasible. However, despite these advances, the lack of fault labelling data is still a major concern due to confidentiality issues, and lack of appropriate data, for … Show more

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