The Burning Loss Behavior of Titanium Element in Electroslag Remelting Process and the Prediction of Titanium Content at the End Point Were Studied

28 Pages Posted: 25 Jun 2024

See all articles by Xi Chen

Xi Chen

Northeastern University

Yanwu Dong

Northeastern University

ZhouHua Jiang

Northeastern University

Jia Wang

Northeastern University

Yuxiao Liu

Northeastern University

Abstract

In this study, we investigate the burning behavior of titanium during the electroslag remelting (ESR) process and its impact on the titanium content at the endpoint using machine learning. Initially, a comprehensive database was established by collecting data from literature and experiments, encompassing slag system composition, smelting temperature, and material composition content. Subsequently, six machine learning algorithms, including random forest and Bayesian regression, were employed to model the burning loss behavior of titanium. The random forest model, which exhibited optimal mean square error (MSE) performance, was utilized to generate partial dependence plots. These plots, in conjunction with experimental observations and existing studies, facilitated the analysis of key factors influencing titanium burn loss. Furthermore, the same six machine learning models were applied to predict the endpoint titanium content. The Bayesian regression model demonstrated superior performance in terms of R2 and MSE, leading to the derivation of an empirical formula for predicting endpoint titanium content. This empirical formula was subsequently validated, refined, and optimized using a thermodynamic model based on the theory of molecular ion coexistence. The final prediction formula achieved an error margin of 0.123%.

Keywords: Machine learning, electroslag remelting, Titanium Burning Loss, Titanium End Point Content

Suggested Citation

Chen, Xi and Dong, Yanwu and Jiang, ZhouHua and Wang, Jia and Liu, Yuxiao, The Burning Loss Behavior of Titanium Element in Electroslag Remelting Process and the Prediction of Titanium Content at the End Point Were Studied. Available at SSRN: https://ssrn.com/abstract=4875365 or http://dx.doi.org/10.2139/ssrn.4875365

Xi Chen

Northeastern University ( email )

220 B RP
Boston, MA 02115
United States

Yanwu Dong (Contact Author)

Northeastern University ( email )

220 B RP
Boston, MA 02115
United States

ZhouHua Jiang

Northeastern University ( email )

220 B RP
Boston, MA 02115
United States

Jia Wang

Northeastern University ( email )

220 B RP
Boston, MA 02115
United States

Yuxiao Liu

Northeastern University ( email )

220 B RP
Boston, MA 02115
United States

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