Efficient Milling Quality Prediction with Explainable Machine Learning
- URL: http://arxiv.org/abs/2409.10203v1
- Date: Mon, 16 Sep 2024 11:52:17 GMT
- Title: Efficient Milling Quality Prediction with Explainable Machine Learning
- Authors: Dennis Gross, Helge Spieker, Arnaud Gotlieb, Ricardo Knoblauch, Mohamed Elmansori,
- Abstract summary: This paper presents an explainable machine learning (ML) approach for predicting surface roughness in milling.
The key contributions include developing ML models that accurately predict various roughness values and identifying redundant sensors.
- Score: 9.623578875486183
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents an explainable machine learning (ML) approach for predicting surface roughness in milling. Utilizing a dataset from milling aluminum alloy 2017A, the study employs random forest regression models and feature importance techniques. The key contributions include developing ML models that accurately predict various roughness values and identifying redundant sensors, particularly those for measuring normal cutting force. Our experiments show that removing certain sensors can reduce costs without sacrificing predictive accuracy, highlighting the potential of explainable machine learning to improve cost-effectiveness in machining.
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