J. Mater. Sci. Technol. ›› 2026, Vol. 254: 45-60.DOI: 10.1016/j.jmst.2025.08.011

• Research Article • Previous Articles     Next Articles

Predicting mechanical properties of as-rolled eutectic Mg-8Li alloy via machine learning

Jiawen Zhua, Yejia Lina, Chuanqiang Lia,b,*, Naiguang Wanga, Binqing Shic,*, Zhengrong Zhanga,b   

  1. aSchool of Materials and Energy, Guangdong University of Technology, Guangzhou 510006, China;
    bGuangdong Provincial Laboratory of Chemistry and Fine Chemical Engineering Jieyang Center, Jieyang 515200, China;
    cSchool of Materials and Energy, Foshan University, Foshan 528000, China
  • Received:2025-06-17 Revised:2025-08-16 Accepted:2025-08-16 Online:2026-05-08
  • Contact: *E-mail addresses: cqli13s@alum.imr.ac.cn (C. Li), bqshi@alum.imr.ac.cn (B. Shi)

Abstract: In order to elucidate the intricate, non-linear association between rolling process parameters and the mechanical properties of the eutectic Mg-8Li alloy, this work proposes a predictive framework that integrates machine learning and explainable analysis. A “rolling parameter-mechanical property” dataset constructed from experimental data is used to develop prediction models for ultimate tensile strength (UTS), yield strength (YS), and elongation (EL) based on six machine learning algorithms: support vector regression (SVR), random forest (RF), XGBoost, AdaBoost, extra trees, and CatBoost, with the Bayesian optimization framework and cross-validation strategy employed to enhance model generalization. The results indicate that the random forest model exhibits the best performance for UTS prediction (coefficient of determination R2 = 0.9452, mean absolute error MAE = 2.07), the SVR model achieves the highest accuracy for YS prediction (R2 = 0.9524, MAE = 3.38), and the AdaBoost model demonstrates the best performance for EL prediction (R2 = 0.8676, MAE = 1.65). Additionally, by using the Pearson correlation coefficient (PCC) along with the Shapley additive explanations (SHAP) method, it is shown that the initial thickness negatively affects UTS and YS, while the reduction ratio positively impacts UTS and YS the most, and the rolling temperature has a complex negative effect on EL. Experimental validation confirms the strong generalization ability and engineering applicability of the optimal models. This work clarifies the synergistic mechanism of rolling parameters through a data-driven approach, providing theoretical support and technical pathways for achieving an intelligent rolling process design for the eutectic Mg-8Li alloy.

Key words: Machine learning, Mg-8Li alloy, Rolling process, Mechanical properties, Shapley additive explanations