MODELING THE OPTIMAL MEASUREMENT TIME WITH A PROBE ON THE MACHINE TOOL USING MACHINE LEARNING METHODS

This paper explores the application of various machine learning techniques to model the optimal measurement time required after machining with a probe on CNC machine tools. Specifically, the research employs four different machine learning models: Elastic Net, Neural Networks, Decision Trees, and Su...

Full description

Saved in:
Bibliographic Details
Published inApplied Computer Science (Lublin) Vol. 20; no. 2; pp. 43 - 59
Main Authors JÓZWIK, Jerzy, ZAWADA-MICHAŁOWSKA, Magdalena, KULISZ, Monika, TOMIŁO, Paweł, BARSZCZ, Marcin, PIEŚKO, Paweł, LELEŃ, Michał, CYBUL, Kamil
Format Journal Article
LanguageEnglish
Published Polish Association for Knowledge Promotion 30.06.2024
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:This paper explores the application of various machine learning techniques to model the optimal measurement time required after machining with a probe on CNC machine tools. Specifically, the research employs four different machine learning models: Elastic Net, Neural Networks, Decision Trees, and Support Vector Machines, each chosen for their unique strengths in addressing different aspects of predictive modeling in an industrial context. The study examines as input parameters such as material type, post-processing wall thickness, cutting depth, and rotational speed over measurement time. This approach ensures that the models account for the variables that significantly affect CNC machine operations. Regression value, mean square error, root mean square error, mean absolute percentage error, and mean absolute error were used to evaluate the quality of the obtained models. As a result of the analyses, the best modeling results were obtained using neural networks. Their ability to accurately predict measurement times can significantly increase operational efficiency by optimizing schedules and reducing downtime in machining processes.
ISSN:2353-6977
2353-6977
DOI:10.35784/acs-2024-15