Utilization of predictive maintenance, backed by machine learning, has made a difference in monitoring industrial equipment and manufacturing, cutting down on downtime, improving operational efficiency, and ensuring safety. However, current systems suffer limitations, including lack of real-time deployment, low scalability, significant computation footprints, security vulnerabilities and low interpretability. We present a novel, scalable explainable AI based predictive maintenance framework integrating lightweight deep learning models, federated learning, blockchain secure storage and adaptive self-learning mechanisms. With the application of edge AI computing, interpretable machine learning methods, and real-time industrial data processing, the proposed study realizes a cost-effective, secure, and scalable predictive maintenance solution. A practical and innovative solution for minimizing failures and enhancing manufacturing efficiency involving sustainable smart industrial approaches can be achieved by validating the proposed model in real-world industrial environments.
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Dokku Durga Bhavani
Tandra Nagarjuna
Pradeep H
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Bhavani et al. (Tue,) studied this question.
www.synapsesocial.com/papers/697460e9bb9d90c67120acd4 — DOI: https://doi.org/10.1051/itmconf/20257601008/pdf