维氏硬度试验
剪切模量
计算机科学
材料科学
泊松比
体积模量
压痕硬度
弹性模量
模数
Boosting(机器学习)
杨氏模量
机器学习
泊松分布
复合材料
数学
统计
微观结构
作者
Viviana Dovale-Farelo,Pedram Tavadze,Logan Lang,A. Bautista Hernández,A. Romero
标识
DOI:10.1038/s41598-022-26729-3
摘要
The search for new superhard materials is of great interest for extreme industrial applications. However, the theoretical prediction of hardness is still a challenge for the scientific community, given the difficulty of modeling plastic behavior of solids. Different hardness models have been proposed over the years. Still, they are either too complicated to use, inaccurate when extrapolating to a wide variety of solids or require coding knowledge. In this investigation, we built a successful machine learning model that implements Gradient Boosting Regressor (GBR) to predict hardness and uses the mechanical properties of a solid (bulk modulus, shear modulus, Young's modulus, and Poisson's ratio) as input variables. The model was trained with an experimental Vickers hardness database of 143 materials, assuring various kinds of compounds. The input properties were calculated from the theoretical elastic tensor. The Materials Project's database was explored to search for new superhard materials, and our results are in good agreement with the experimental data available. Other alternative models to compute hardness from mechanical properties are also discussed in this work. Our results are available in a free-access easy to use online application to be further used in future studies of new materials at www.hardnesscalculator.com .
科研通智能强力驱动
Strongly Powered by AbleSci AI