Implementation of an intelligent process monitoring system for screw presses using the CRISP-DM standard

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Abstract

Increasing the service life and process reliability of systems plays an important role in terms of sustainable and economical production. Especially in the field of energy-intensive bulk forming, low scrap rates and long tool lifetimes are business critical. This article describes a modular method for AI-supported process monitoring during hot forming within a screw press. With this method, the following deviations can be detected in an integrated process: the height of the semi-finished product, the positions of the die and the position of the semi-finished product. The method was developed using the CRISP-DM standard. A modular sensor concept was developed that can be used for different screw presses and dies. Subsequently a hot forming-optimized test plan was developed to examine individual and overlapping process deviations. By applying various methods of artificial intelligence, a method for process-integrated detection of process deviations was developed. The results of the investigation show the potential of the developed method and offer starting points for the investigation of further process parameters.

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Doede, N., Merkel, P., Kriwall, M., Stonis, M., & Behrens, B. A. (2024). Implementation of an intelligent process monitoring system for screw presses using the CRISP-DM standard. Production Engineering. https://doi.org/10.1007/s11740-024-01298-8

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