Chen Haodong, Ye Wenjun, Hui Songxiao, Yu Yang
State Key Laboratory of Nonferrous Metals and Processes, China GRINM Group Co., Ltd., Beijing 100088, China.
GRIMAT Engineering Institute Co., Ltd., Beijing 101407, China.
Materials (Basel). 2024 Apr 13;17(8):1793. doi: 10.3390/ma17081793.
In this paper, a CatBoost model for predicting superelastic strains of alloys was established by utilizing features construction and selection as well as model filtering and evaluation based on 125 existing data points of superelastic titanium alloys. The alloy compositions of a TiNbMoZrSnTa system were optimized and three nickel-free titanium alloys with potentially excellent superelastic properties were designed using the Bayesian optimization algorithm using a superelastic strain as the optimization target. The experimental results indicated that only Ti-12Nb-18Zr-2Sn and Ti-12Nb-16Zr-3Sn exhibited clear superelasticity due to the absence of relevant information about the alloys' β stability in the machine learning model. Through experimental optimization of the heat treatment regimens, Ti-12Nb-18Zr-2Sn and Ti-12Nb-16Zr-3Sn ultimately achieved recovery strains of 4.65% after being heat treated at 853 K for 10 min and 3.01% after being heat treated at 1073 K for 30 min, respectively. The CatBoost model in this paper possessed a certain ability to design nickel-free superelastic titanium alloys but it was still necessary to combine it with existing knowledge of material theory for effective utilization.
本文基于125个超弹性钛合金现有数据点,通过特征构建与选择以及模型筛选与评估,建立了用于预测合金超弹性应变的CatBoost模型。以超弹性应变作为优化目标,利用贝叶斯优化算法对TiNbMoZrSnTa系合金成分进行了优化,设计出三种具有潜在优异超弹性性能的无镍钛合金。实验结果表明,由于机器学习模型中缺乏合金β稳定性的相关信息,仅Ti-12Nb-18Zr-2Sn和Ti-12Nb-16Zr-3Sn表现出明显的超弹性。通过对热处理制度进行实验优化,Ti-12Nb-18Zr-2Sn和Ti-12Nb-16Zr-3Sn分别在853 K下热处理10 min后最终实现了4.65%的回复应变,在1073 K下热处理30 min后实现了3.01%的回复应变。本文中的CatBoost模型具有一定的设计无镍超弹性钛合金的能力,但仍需将其与材料理论的现有知识相结合才能有效利用。