人工神经网络
极限抗拉强度
计算机科学
财产(哲学)
随机森林
材料科学
回归
机器学习
延展性(地球科学)
代表(政治)
合金
吞吐量
回归分析
人工智能
冶金
数学
统计
电信
哲学
蠕动
认识论
政治
政治学
法学
无线
作者
M. Ghorbani,Mario Boley,Philip N. H. Nakashima,N. Birbilis
标识
DOI:10.1016/j.jma.2023.09.010
摘要
Machine learning (ML) models provide great opportunities to accelerate novel material development, offering a virtual alternative to laborious and resource-intensive empirical methods. In this work, the second of a two-part study, an ML approach is presented that offers accelerated digital design of Mg alloys. A systematic evaluation of four ML regression algorithms was explored to rationalise the complex relationships in Mg-alloy data and to capture the composition-processing-property patterns. Cross-validation and hold-out set validation techniques were utilised for unbiased estimation of model performance. Using atomic and thermodynamic properties of the alloys, feature augmentation was examined to define the most descriptive representation spaces for the alloy data. Additionally, a graphical user interface (GUI) webtool was developed to facilitate the use of the proposed models in predicting the mechanical properties of new Mg alloys. The results demonstrate that random forest regression model and neural network are robust models for predicting the ultimate tensile strength and ductility of Mg alloys, with accuracies of ∼80% and 70% respectively. The developed models in this work are a step towards high-throughput screening of novel candidates for target mechanical properties and provide ML-guided alloy design.
科研通智能强力驱动
Strongly Powered by AbleSci AI