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  4. Thermal displacement prediction model with a structural optimized transfer learning technique
 
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Thermal displacement prediction model with a structural optimized transfer learning technique

Journal
Case Studies in Thermal Engineering
Journal Volume
49
Date Issued
2023-09-01
Author(s)
Kuo, Ping Huan
Tu, Tzung Lin
Chen, Yen Wen
Wen-Yuh Jywe  
Yau, Her Terng
DOI
10.1016/j.csite.2023.103323
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/634490
URL
https://api.elsevier.com/content/abstract/scopus_id/85165490095
Abstract
Thermal deformation of the spindle accounts for a large proportion of existing errors. After gathering data on thermal deformation through an experiment with a machine tool, AI algorithms were used in this study to predict the displacement of a cutting tool caused by heat deformation. Thermal displacement and temperature data were entered into models constructed using several machine learning algorithms. These models were then quantitatively evaluated in terms of their accuracy and compared to each other. Subsequently, transfer learning and hyperparameter tuning were conducted to produce a model with optimal prediction capability. The experimental results revealed that after machine learning models were trained using data collected on the first day of the experiments, their predictions based on data collected on the second day of the experiments were rife with severe prediction errors. This outcome indicated that experimental data gathered at different times weakened the models’ predictive abilities. Thus, to increase the prediction accuracy and prevent time from being wasted on repeated training, transfer learning were incorporated with model optimization. Finally, this approach achieved excellent R2 scores of 0.99941, 0.99964, and 0.99902 for the prediction of displacement in the x-, y-, and z-directions.
Subjects
Machine learning | Neural network | Optimization | Thermal displacement | Transfer learning
SDGs

[SDGs]SDG7

Type
journal article

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