2024
DOI: 10.1115/1.4066959
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Prediction of Thermally Induced Axial Displacement of Mechanical Components Using LightGBM

Yohichi Nakao,
Fuusei Yagi,
Tsuyoshi Sato

Abstract: The goal of this research is to create a machine learning model that can predict thermally induced axial displacement of machine tool spindles. To achieve this goal, this study applied the LightGBM machine learning framework to predict thermally induced axial displacement of mechanical equipment by a heat source in a model that had an outer structure similar to that of a machine spindle. In the predictions using LightGBM, the time, temperature, and heat flux of equipment surfaces are measured and used to predi… Show more

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