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Specific cutting energy: a physical measurement for representing tool wear

  • Antoine ProteauEmail author
  • Antoine Tahan
  • Marc Thomas
ORIGINAL ARTICLE
  • 25 Downloads

Abstract

In a machining context, unexpected tool breakage is still one of the primary causes of increase costs and machine downtimes. Hence, to increase productivity and ensure a company’s financial survival, a way to monitor cutting tool is essential. Thus, this paper proposes to show that it is possible to predict tool wear, with a low error, by using a recurrent neural network with a long short-term memory architecture. However, to achieve a general tool condition monitoring model, a proposition requiring no training is needed. Therefore, this paper introduces the concept of specific cutting energy based on the work of Debongnie [1], which is defined as the amount of energy required to remove 1 cm3 of material. Based on our work, we show that this feature is highly correlated (R > 90%) to the tool wear value. This concept also achieve a high adjusted R2 (R2 > 90%) with a linear regression model. These results are based on an experimental dataset provided by Agogino and Goebel [2]. We succeed in achieving our objectives; however, future work should include a methodology to measure the residual useful life of a cutting tool based on the specific cutting energy and an industrial application of our methodology to see if the results support our conclusions. Still, our proposition could help machining companies accurately monitor their cutting tool wear condition with a single feature.

Keywords

Tool condition monitoring Cutting energy EWMA chart Machine learning Recurrent neural network Long short-term memory architecture 

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Notes

Acknowledgements

The authors would like to thank UC Berkely and NASA Ames Prognostic Data Repository for providing the Milling Dataset.

Funding information

This work received financial support from the Fonds de Recherche du Québec – Nature et Technologies (FRQNT) through grant #257668.

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Copyright information

© Springer-Verlag London Ltd., part of Springer Nature 2019

Authors and Affiliations

  1. 1.Department of Mechanical EngineeringÉcole de technologie supérieureMontréalCanada

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