2024
DOI: 10.1007/s00170-024-14097-3
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Machine learning-based digital twin of a conveyor belt for predictive maintenance

Valerio Pulcini,
Gianfranco Modoni

Abstract: The problem of achieving a good maintenance plan is well-known in the modern industry. One of the most promising approaches is predictive maintenance, which schedules interventions based on predictions made by collecting and analyzing data from the process. However, to the best of the authors’ knowledge, this approach is still not widespread and known enough, and particularly, the real-case scenarios of its application appear not exhaustive. To contribute to fill this gap, this work proposes a digital twin (DT… Show more

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