Zhang Jingzi, Zhao Mengkun, Zhong Chengquan, Liu Jiakai, Hu Kailong, Lin Xi
School of Materials Science and Engineering, Harbin Institute of Technology, Shenzhen 518055, P. R. China.
Blockchain Development and Research Institute, Harbin Institute of Technology, Shenzhen 518055, P. R. China.
Nanoscale. 2023 Nov 23;15(45):18511-18522. doi: 10.1039/d3nr04380k.
The limited glass-forming ability (GFA) poses a significant challenge for the practical applications of metallic glasses (MGs). The development of high-GFA MGs typically involves trial-and-error processes to screen materials with a large critical diameter (), which serves as a criterion for determining the GFA. The formation and stability of MGs are influenced by the glass transition temperature (). Over the past decade, the emergence of machine learning (ML) has shown great promise in the exploration of high-GFA materials. However, the contribution of material features to and predictions, as well as their correlations, remains ambiguous, posing a challenge to achieving high prediction accuracy. Herein, we present a comprehensive dataset consisting of 1764 datapoints for and 1296 datapoints for . The governing rules for GFA have been established through feature significance analysis. The light gradient boosting (LGB) model exhibits remarkable accuracy in predicting , utilizing sixteen features, achieving a coefficient of determination () score of 0.984 and a root mean square error (RMSE) of 20.196 K. An integrated ML model, based on the weighted voting of three basic models, is developed to enhance the accuracy of prediction, achieving an score of 0.767 and an RMSE of 2.331 mm. Additionally, a GFA rule is proposed to explore materials with large values, defined by satisfying the criteria of a thermal conductivity difference ranging from 0.60 to 1.32 and an entropy density exceeding 1.05. Our work provides valuable insights into and predictions and facilitates the exploration of potential high-GFA MGs through the implementation of a well-established ML model and GFA rules.
有限的玻璃形成能力(GFA)对金属玻璃(MGs)的实际应用构成了重大挑战。高GFA金属玻璃的开发通常涉及反复试验过程,以筛选具有大临界直径()的材料,该临界直径用作确定GFA的标准。金属玻璃的形成和稳定性受玻璃化转变温度()的影响。在过去十年中,机器学习(ML)的出现在探索高GFA材料方面显示出巨大潜力。然而,材料特征对和预测的贡献及其相关性仍然不明确,这对实现高预测精度构成了挑战。在此,我们提出了一个综合数据集,其中包含1764个关于的数据点和1296个关于的数据点。通过特征重要性分析建立了GFA的控制规则。光梯度提升(LGB)模型在预测时表现出显著的准确性,利用16个特征,决定系数()得分达到0.984,均方根误差(RMSE)为20.196 K。基于三个基本模型的加权投票开发了一个集成ML模型,以提高预测的准确性,得分达到0.767,RMSE为2.331 mm。此外,还提出了一个GFA规则,以探索具有大值的材料,该规则定义为满足热导率差在0.60至1.32之间且熵密度超过1.05的标准。我们的工作为和预测提供了有价值的见解,并通过实施完善的ML模型和GFA规则促进了潜在高GFA金属玻璃的探索。