Machine learning-assisted methods for rapid and accurate prediction of temperature field, mushy zone, and grain size were proposed for the heating-cooling combined mold (HCCM) horizontal continuous casting of C70250 alloy plates. First, finite element simulations of casting processes were carried out with various parameters to build a dataset. Subsequently, different machine learning algorithms were employed to achieve high precision in predicting temperature fields, mushy zone locations, mushy zone inclination angle, and billet grain size. Finally, the process parameters were quickly optimized using a strategy consisting of random generation, prediction, and screening, allowing the mushy zone to be controlled to the desired target. The optimized parameters are 1234 °C for heating mold temperature, 47 mm/min for casting speed, and 10 L/min for cooling water flow rate. The optimized mushy zone is located in the middle of the second heat insulation section and has an inclination angle of roughly 7°.
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Ling-hui MENG
Fan ZHAO
Dong Liu
Transactions of Nonferrous Metals Society of China
Central South University
University of Science and Technology Beijing
Henan Academy of Sciences
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MENG et al. (Thu,) studied this question.
www.synapsesocial.com/papers/69a765febadf0bb9e87db321 — DOI: https://doi.org/10.1016/s1003-6326(25)66958-5
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