Numerical Simulation and Machine Learning Prediction of the Direct Chill Casting Process of Large-Scale Aluminum Ingots

Author:

Guo Guanhua1,Yao Ting2,Liu Wensheng1,Tang Sai1,Xiao Daihong1ORCID,Huang Lanping1,Wu Lei3,Feng Zhaohui3,Gao Xiaobing2

Affiliation:

1. National Key Laboratory of Science and Technology on High-Strength Structural Materials, Central South University, Changsha 410083, China

2. Shaanxi Nonferrous Yulin New Material Group Co., Ltd., Yulin 719099, China

3. Beijing Engineering Research Center of Advanced Aluminum Alloys and Applications, Beijing Institute of Aeronautical Materials, Beijing 100095, China

Abstract

The large-scale ingot of the 7xxx-series aluminum alloys fabricated by direct chill (DC) casting often suffers from foundry defects such as cracks and cold shut due to the formidable challenges in the precise controlling of casting parameters. In this manuscript, by using the integrated computational method combining numerical simulations with machine learning, we systematically estimated the evolution of multi-physical fields and grain structures during the solidification processes. The numerical simulation results quantified the influences of key casting parameters including pouring temperature, casting speed, primary cooling intensity, and secondary cooling water flow rate on the shape of the mushy zone, heat transport, residual stress, and grain structure of DC casting ingots. Then, based on the data of numerical simulations, we established a novel model for the relationship between casting parameters and solidification characteristics through machine learning. By comparing it with experimental measurements, the model showed reasonable accuracy in predicting the sump profile, microstructure evolution, and solidification kinetics under the complicated influences of casting parameters. The integrated computational method and predicting model could be used to efficiently and accurately determine the DC casting parameters to decrease the casting defects.

Funder

National Key Laboratory of Science and Technology on High-strength Structural Materials in Central South University

the Pre-research Fund

Publisher

MDPI AG

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