Journal of Manufacturing and Materials Processing (Jan 2024)

Implications from Legacy Device Environments on the Conceptional Design of Machine Learning Models in Manufacturing

  • Bastian Engelmann,
  • Anna-Maria Schmitt,
  • Lukas Theilacker,
  • Jan Schmitt

DOI
https://doi.org/10.3390/jmmp8010015
Journal volume & issue
Vol. 8, no. 1
p. 15

Abstract

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While new production areas (greenfields) have state-of-the-art technologies for implementing digitalization, existing production areas (brownfields) and devices must first be upgraded with technologies before digitalization can be implemented. The aim of this research work is to use a case study to identify the differences in the implementation of machine learning (ML) projects in brownfields and greenfields. For this purpose, an ML application for the detection of changeover times on milling machines is implemented and analyzed in the brownfield and greenfield scenarios as well as a combined scenario. Particular attention is paid to the selection of sensors and features. It was found that the abundant availability of features in the greenfield scenario poses pitfalls when creating ML projects if the underlying sensors cannot be checked for their suitability. For the changeover detector use case, the best model quality was achieved for the combined scenario, followed by the greenfield scenario.

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