MAINTENANCE BEHAVIOUR-BASED PREDICTION SYSTEM USING DATA MINING
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abstract
In the last years we have assisted to
several and deep changes in industrial manufacturing. Induced by the need of increasing efficiency, bigger
flexibility, better quality and lower costs, it became more complex. The complexity of this new scenario has caused big pressure under enterprises production systems and consequently in its maintenance systems.
Manufacturing systems recognize high level costs due equipment breakdown, motivated by the time spent to repair, which corresponds to no production time and scrapyard, and also money spent in repair actions. Usually, enterprises do not share data produced from
their maintenance interventions. This investigation intends to create an organizational architecture that integrates data produced in factories on their activities of reactive, predictive and preventive maintenance. The main idea is to develop a decentralized predictive maintenance system based on data mining concepts. Predicting the possibility of breakdowns with bigger accuracy will increase systems reliability.
In the last years we have assisted to several and deep changes in
industrial manufacturing. Induced by the need of increasing
efficiency, bigger flexibility, better quality and lower costs, it
became more complex. The complexity of this new scenario has
caused big pressure under enterprises production systems and
consequently in its maintenance systems. Manufacturing systems
recognize high level costs due equipment breakdown, motivated by
the time spent to repair, which corresponds to no production time
and scrapyard, and also money spent in repair actions. Usually,
enterprises do not share data produced from their maintenance
interventions. This investigation intends to create an
organizational architecture that integrates data produced in
factories on their activities of reactive, predictive and preventive
maintenance. The main idea is to develop a decentralized predictive
maintenance system based on data mining concepts. Predicting the
possibility of breakdowns with bigger accuracy will increase
systems reliability.
In the last years we have assisted to several and deep changes in industrial manufacturing. Induced by the need of increasing efficiency, bigger flexibility, better quality and lower costs, it became more complex. The complexity of this new scenario has caused big pressure under enterprises production systems and consequently in its maintenance systems. Manufacturing systems recognize high level costs due equipment breakdown, motivated by the time spent to repair, which corresponds to no production time and scrapyard, and also money spent in repair actions. Usually, enterprises do not share data produced from their maintenance interventions. This investigation intends to create an organizational architecture that integrates data produced in factories on their activities of reactive, predictive and preventive maintenance. The main idea is to develop a decentralized predictive maintenance system based on data mining concepts. Predicting the possibility of breakdowns with bigger accuracy will increase systems reliability