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Predictive Maintenance in the Industrial Sector: A CRISP-DM Approach for Developing Accurate Machine Failure Prediction Models

Conférence : Communications avec actes dans un congrès international

In production systems, avoiding repeated failures is crucial for reducing costs and preventing downtime. Industry 4.0 technologies have enabled companies to collect and analyze
real-time data from machines, which helps in identifying and
preventing potential problems. By using metrics like MTBF and
MTTR and analyzing past failures, we can develop predictive
models to prevent future failures. This paper explores the use of
CRISP-DM methodology in the industrial sector to ensure the ac curate prediction of machine failures. Specifically, we examine the application of this methodology in developing predictive models for cutting machines. The results demonstrate that CRISP-DM methodology is effective in developing models that can accurately predict potential failures and prevent them from occurring. The
findings have implications for companies looking to implement
predictive maintenance strategies in their production systems,
highlighting the importance of using data-driven approaches to
improve reliability and reduce downtime. Overall, our study high lights the importance of leveraging industry 4.0 technologies and CRISP-DM methodology for optimal performance of production
systems in the industrial sector.