论文标题
机器学习启用了二维材料的应用程序依赖设计原理
Machine Learning Enabled Discovery of Application Dependent Design Principles for Two-dimensional Materials
论文作者
论文摘要
对高性能候选2D材料的大规模搜索仅限于计算一些简单的描述符,通常具有第一原理密度功能理论计算。在这项工作中,我们通过将晶体图卷积神经网络扩展到具有平面周期性的系统,并训练模型集合以预测热力学,机械和电子特性,从而减轻此问题。为了证明这种方法的实用性,我们对两个在很大程度上不相关的应用进行了近45,000个结构进行筛选:即机械稳健的复合材料和光伏材料。对与我们的方法相关的不确定性的分析表明,神经网络的整体已验证良好,并且具有与准确的第一原理密度功能理论计算的错误相当。模型的合奏使我们能够衡量预测的信心,并找到最有可能在其应用中表现出有效性能的候选人。由于我们筛选中使用的数据集是组合生成的,因此我们还能够使用创新方法,结构和组成设计原理,这些原理影响了所调查的结构的性质,并且可以通过反向工程充当未来物质发现的生成模型基础。我们的方法使我们能够恢复一些公认的设计原则:例如,我们发现带有铅和锡的混合有机无机钙蛋白酶往往是太阳能电池应用的良好候选者。
The large-scale search for high-performing candidate 2D materials is limited to calculating a few simple descriptors, usually with first-principles density functional theory calculations. In this work, we alleviate this issue by extending and generalizing crystal graph convolutional neural networks to systems with planar periodicity, and train an ensemble of models to predict thermodynamic, mechanical, and electronic properties. To demonstrate the utility of this approach, we carry out a screening of nearly 45,000 structures for two largely disjoint applications: namely, mechanically robust composites and photovoltaics. An analysis of the uncertainty associated with our methods indicates the ensemble of neural networks is well-calibrated and has errors comparable with those from accurate first-principles density functional theory calculations. The ensemble of models allows us to gauge the confidence of our predictions, and to find the candidates most likely to exhibit effective performance in their applications. Since the datasets used in our screening were combinatorically generated, we are also able to investigate, using an innovative method, structural and compositional design principles that impact the properties of the structures surveyed and which can act as a generative model basis for future material discovery through reverse engineering. Our approach allowed us to recover some well-accepted design principles: for instance, we find that hybrid organic-inorganic perovskites with lead and tin tend to be good candidates for solar cell applications.