Ma Xing-Yu, Lyu Hou-Yi, Hao Kuan-Rong, Zhu Zhen-Gang, Yan Qing-Bo, Su Gang
School of Physical Sciences, University of Chinese Academy of Sciences, Beijing 100049, China.
Center of Materials Science and Optoelectronics Engineering, College of Materials Science and Optoelectronic Technology, University of Chinese Academy of Sciences, Beijing 100049, China.
Nanoscale. 2021 Sep 17;13(35):14694-14704. doi: 10.1039/d1nr03886a.
Beyond the conventional trial-and-error method, machine learning offers a great opportunity to accelerate the discovery of functional materials, but still often suffers from difficulties such as limited materials data and the unbalanced distribution of target properties. Here, we propose the Bayesian active learning method that combines active learning and high-throughput calculations to accelerate the prediction of desired functional materials with ultrahigh efficiency and accuracy. We apply it as an instance to a large family (3119) of two-dimensional hexagonal binary compounds with unbalanced materials properties, and accurately screen out the materials with maximal electric polarization and proper photovoltaic band gaps, respectively, whereas the computational costs are significantly reduced by only calculating a few tenths of the possible candidates in comparison with a random search. This approach shows the enormous advantages for the cases with unbalanced distribution of target properties. It can be readily applied to seek a broad range of advanced materials.
除了传统的试错方法外,机器学习为加速功能材料的发现提供了巨大机遇,但仍常常面临材料数据有限以及目标属性分布不均衡等困难。在此,我们提出了贝叶斯主动学习方法,该方法将主动学习与高通量计算相结合,以超高的效率和准确性加速所需功能材料的预测。我们将其作为一个实例应用于具有不均衡材料属性的二维六角形二元化合物的大家族(3119种),分别准确筛选出具有最大极化强度和合适光伏带隙的材料,而与随机搜索相比,通过仅计算可能候选材料的十分之几,计算成本显著降低。这种方法在目标属性分布不均衡的情况下显示出巨大优势。它可以很容易地应用于寻找广泛的先进材料。