Quality Improvement of Milling Processes Using Machine Learning-Algorithms

Authors: 
Maik Frye, Robert H. Schmitt
Publisher: 
16th IMEKO TC10 Conference
Number, date: 
September 3-4, 2019
Year: 
2019
ISSN (or eSSN): 
ISBN 978-92-990084-1-6
Open access: 
Yes
Abstract: 
The increasing digitalization and industrial efforts towards artificial intelligence foster the use of Machine Learning (ML)-algorithms in the production environment. Within production, different application areas and use-cases arise for the usage of ML. In this paper, we focus on the implementation of MLalgorithms for a milling process where critical process conditions are predicted. Based on the predicted process conditions, the machining parameters can be adjusted in advance to avoid critical conditions of the process. The avoidance of critical process conditions increases the quality of the products, since quality characteristics such as surface roughness or dimensional deviations can be influenced. To ensure the transferability of the results to other applications, we follow a methodical approach. The results of the MLmodels are discussed critically and further steps are derived in order to use ML-models successfully in the future.
SCI: 
No
Kiemelt: 
No
Pdf: 
No
Place of publication: 
Berlin, Germany, https://www.imeko.org/publications/tc10-2019/IMEKO-TC10-2019-022.pdf