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Abstract

This study presents the development of a predictive model for the health monitoring of power transmitters in a packaging robot using machine learning techniques. The model is based on a Discrete Bayesian Filter (DBF) and is compared to a model based on a Naïve Bayes Filter (NBF). Data preprocessing techniques are applied to select suitable descriptors for the predictive model. The results show that the DBF model outperforms the NBF model in terms of predictive power. The model can be used to estimate the current state of the power transmitter and predict its degradation over time. This can lead to improved maintenance planning and cost savings in the context of Industry 4.0.

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Correspondence to Ayoub Chakroun .

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Chakroun, A., Hani, Y., Turki, S., Rezg, N., Elmhamedi, A. (2023). Development of Predictive Maintenance Models for a Packaging Robot Based on Machine Learning. In: Alfnes, E., Romsdal, A., Strandhagen, J.O., von Cieminski, G., Romero, D. (eds) Advances in Production Management Systems. Production Management Systems for Responsible Manufacturing, Service, and Logistics Futures. APMS 2023. IFIP Advances in Information and Communication Technology, vol 690. Springer, Cham. https://doi.org/10.1007/978-3-031-43666-6_46

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  • DOI: https://doi.org/10.1007/978-3-031-43666-6_46

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