Machine Learning-Based Prediction of the Martensite Start Temperature

被引:0
|
作者
Wentzien, Marcel [1 ]
Koch, Marcel [1 ]
Friedrich, Thomas [1 ]
Ingber, Jerome [1 ]
Kempka, Henning [1 ]
Schmalzried, Dirk [1 ]
Kunert, Maik [1 ]
机构
[1] Ernst Abbe Hsch Jena, Carl Zeiss Promenade 2, D-07745 Jena, Germany
关键词
deep learning; machine learning; martensite start temperatures; steels; M-S TEMPERATURE; NEURAL-NETWORKS; STEELS;
D O I
10.1002/srin.202400210
中图分类号
TF [冶金工业];
学科分类号
0806 ;
摘要
The prediction of the martensite start temperature (Ms) for steels based on their chemical compositions is a complex problem. Previous work has developed empirical, thermodynamic, and machine learning models to estimate Ms. However, the empirical models are limited to specific steel grades, the thermodynamic models rely on different model assumptions, and the machine learning models are based on a small number of data, are limited to specific steel grades, as well or are not available for easy use to the public. Herein, a new machine learning model for the prediction of Ms is developed on the basis of two publicly available datasets consisting of 1800 steels from different steel grades. Extensive hyperparameter tuning is performed to find the best artificial neural network for the dataset. The best model improves prediction accuracy compared to previous state of the art. Despite a very good prediction accuracy of the model, unexpected behavior is observed in specific unseen data. This opens up the discussion for the requirements of new metrics. The dataset and the model are freely available at . An easy-to-use web tool to estimate Ms without the need of programming based on the chemical composition can be found at . The prediction of martensite start temperature for all steel types based solely on their chemical compositions is investigated. After extensive hyperparameter, best deep learning approach is discussed against state-of-the-art thermodynamic models. Unexpectedly high boron influence on the predictions shows that novel regression metrics are required in high-dimensional problems. The model is open source and published as a free web tool.image (c) 2024 WILEY-VCH GmbH
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页数:10
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