4.5 Article

Energy prediction for CNC machining with machine learning

Journal

Publisher

ELSEVIER
DOI: 10.1016/j.cirpj.2021.07.014

Keywords

Energy prediction; CNC machine tools; Machine learning; CNC machining; NC code

Funding

  1. FFG [854184]
  2. Pro2Future GmbH
  3. Austrian Federal Ministry of Transport, Innovation and Technology
  4. Austrian Federal Ministry for Digital and Economic Affairs
  5. Province of Upper Austria
  6. Province of Syyria

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This paper discusses the trend of policies shifting CO2 emissions from fossil fuels to renewable energy sources, and governments' efforts to reduce energy consumption. Not only large industries, but also small and medium enterprises, as well as enterprises with production lots of one, are now required to reduce their energy demands in production. Through machine learning algorithms, particularly the 'RandomForest' algorithm, accurate predictions of energy demand in CNC machining operations can be achieved.
Nowadays, the reduction of CO2 emissions by moving from fossil to renewable energy sources is on the policy of many governments. At the same time, these governments are forcing the reduction of energy consumption. Since large industries have been in the focus for the last decade, today also small and medium enterprises with production lot size one are increasingly being obliged to reduce their energy requirements in production. Energy-efficient CNC machine tools contribute to this goal. In machining processes, the machining strategy also has a significant influence on energy demand. For manufacturing of lot size one, the prediction of the energy demand of a machining strategy, before a part is manufactured plays a decisive role. In numerous previous studies, analytical models between the energy demand and the machining strategy have been developed. However, their accuracy depends largely on the parameterization of these models by dedicated experiments. In this paper, different machine learning algorithms, especially variations of the decision tree ('DecisionTree', 'RandomForest', boosted 'RandomForest') are investigated for their ability to predict the energy demand of CNC machining operations based on real production data, without the need for dedicated experiments. As shown in this paper, the most accurate energy demand predictions can be achieved with the 'RandomForest' algorithm. (C) 2021 The Authors.

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