4.8 Article

Industrial Data-Driven Monitoring Based on Incremental Learning Applied to the Detection of Novel Faults

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 16, Issue 9, Pages 5985-5995

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2020.2973731

Keywords

Condition monitoring; fault detection; feature extraction; incremental learning; machine learning; novelty detection

Funding

  1. Autonomous University of Queretaro through the Research Strengthening Founding FOFIUAQ-2018, Mexico [FIN201811, FIN201812]

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The detection of uncharacterized events during electromechanical systems operation represents one of the most critical data challenges dealing with condition-based monitoring under the Industry 4.0 framework. Thus, the detection of novelty conditions and the learning of new patterns are considered as mandatory competencies in modern industrial applications. In this regard, this article proposes a novel multifault detection and identification scheme, based on machine learning, information data-fusion, novelty-detection, and incremental learning. First, statistical time-domain features estimated from multiple physical magnitudes acquired from the electrical motor under inspection are fused under a feature-fusion level scheme. Second, a self-organizing map structure is proposed to construct a data-based model of the available conditions of operation. Third, the incremental learning of the condition-based monitoring scheme is performed adding self-organizing structures and optimizing their projections through a linear discriminant analysis. The performance of the proposed scheme is validated under a complete set of experimental scenarios from two different cases of study, and the results compared with a classical approach.

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