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Milling diagnosis using machine learning techniques toward Industry 4.0

Authors :
Codjo, L.
Jaafar, M.
Makich, H.
Knittel, D.
Mohammed NOUARI
NOUARI, Mohammed
Laboratoire d'Etude des Microstructures et de Mécanique des Matériaux (LEM3)
Université de Lorraine (UL)-Centre National de la Recherche Scientifique (CNRS)-Arts et Métiers Sciences et Technologies
HESAM Université (HESAM)-HESAM Université (HESAM)
Source :
Scopus-Elsevier, DX@ Safeprocess, DX@ Safeprocess, Aug 2018, Lyon, France

Abstract

International audience; Smart diagnosis of the milling in an industrial environment is a difficult task. In this work, the diagnosis using machine learning techniques has been developed and implemented for composite sandwich structures based on honeycomb core. The goal is to qualify the resulting surface flatness. Different algorithms have been implemented and compared. The time domain and frequency domain features are calculated from the measured milling forces. The experimental results have shown that a good milling diagnosis can be obtained with a Linear Support Vector Machine (SVM) algorithm: good accuracy and short training time.

Details

Database :
OpenAIRE
Journal :
Scopus-Elsevier, DX@ Safeprocess, DX@ Safeprocess, Aug 2018, Lyon, France
Accession number :
edsair.dedup.wf.001..76375c98072153fafadcfe3bdc797568