Liu Chengcheng, Wang Xuandong, Cai Weidong, Yang Jiahui, Su Hang
Institute of Structural Steel, Central Iron and Steel Research Institute, Beijing 100081, China.
Material Digital R&D Center, China Iron and Steel Research Institute Group, Beijing 100081, China.
Materials (Basel). 2023 Aug 15;16(16):5633. doi: 10.3390/ma16165633.
As the fourth paradigm of materials research and development, the materials genome paradigm can significantly improve the efficiency of research and development for austenitic stainless steel. In this study, by collecting experimental data of austenitic stainless steel, the chemical composition of austenitic stainless steel is optimized by machine learning and a genetic algorithm, so that the production cost is reduced, and the research and development of new steel grades is accelerated without reducing the mechanical properties. Specifically, four machine learning prediction models were established for different mechanical properties, with the gradient boosting regression (gbr) algorithm demonstrating superior prediction accuracy compared to other commonly used machine learning algorithms. Bayesian optimization was then employed to optimize the hyperparameters in the gbr algorithm, resulting in the identification of the optimal combination of hyperparameters. The mechanical properties prediction model established at this stage had good prediction accuracy on the test set (yield strength: R = 0.88, MAE = 4.89 MPa; ultimate tensile strength: R = 0.99, MAE = 2.65 MPa; elongation: R = 0.84, MAE = 1.42%; reduction in area: R = 0.88, MAE = 1.39%). Moreover, feature importance and Shapley Additive Explanation (SHAP) values were utilized to analyze the interpretability of the performance prediction models and to assess how the features influence the overall performance. Finally, the NSGA-III algorithm was used to simultaneously maximize the mechanical property prediction models within the search space, thereby obtaining the corresponding non-dominated solution set of chemical composition and achieving the optimization of austenitic stainless-steel compositions.
作为材料研发的第四范式,材料基因组范式能够显著提高奥氏体不锈钢的研发效率。在本研究中,通过收集奥氏体不锈钢的实验数据,利用机器学习和遗传算法对奥氏体不锈钢的化学成分进行优化,从而在不降低力学性能的情况下降低生产成本,并加速新钢种的研发。具体而言,针对不同力学性能建立了四个机器学习预测模型,与其他常用机器学习算法相比,梯度提升回归(gbr)算法展现出卓越的预测精度。随后采用贝叶斯优化对gbr算法中的超参数进行优化,从而确定超参数的最优组合。在此阶段建立的力学性能预测模型在测试集上具有良好的预测精度(屈服强度:R = 0.88,平均绝对误差MAE = 4.89 MPa;抗拉强度:R = 0.99,MAE = 2.65 MPa;伸长率:R = 0.84,MAE = 1.42%;断面收缩率:R = 0.88,MAE = 1.39%)。此外,利用特征重要性和夏普利值(SHAP)分析性能预测模型的可解释性,并评估各特征如何影响整体性能。最后,使用NSGA-III算法在搜索空间内同时最大化力学性能预测模型,从而获得化学成分的相应非支配解集,实现奥氏体不锈钢成分的优化。