论文标题
使用3D深卷积神经网络从电子电荷密度预测材料的弹性特性
Predicting Elastic Properties of Materials from Electronic Charge Density Using 3D Deep Convolutional Neural Networks
论文作者
论文摘要
材料表示在基于机器学习的材料属性和新材料发现的预测中起着关键作用。目前,图和3D体素表示方法均基于晶体结构的异质元素。在这里,我们建议将电子电荷密度(ECD)用作材料属性预测的通用统一的3D描述符,其优势与材料的物理和化学性质密切相关。我们开发了一个基于ECD的3D卷积神经网络(CNN),用于预测材料的弹性特性,其中CNN可以通过多个卷积和汇总操作学习有效的分层特征。超过2,170 FM-3M面对面的立方(FCC)材料的广泛基准实验表明,我们的基于ECD的CNN可以实现良好的弹性预测性能。尤其是,我们的CNN模型基于元素喜p功能和ECD描述符的融合,实现了最佳的5倍交叉验证性能。更重要的是,我们表明,当通过在测试样品周围几乎没有邻居训练样本的非冗余数据集评估时,我们的基于ECD的CNN模型可以实现明显更好的外推性能。作为附加验证,我们通过比较DFT计算值来评估了模型在329个空间组FM-3M材料上的预测性能,该值比剪切模量比散装模量的DFT计算值进行了比较。由于ECD的统一表示能力,预计我们的基于ECD的CNN方法也可以应用于预测晶体材料的其他物理和化学特性。
Materials representation plays a key role in machine learning based prediction of materials properties and new materials discovery. Currently both graph and 3D voxel representation methods are based on the heterogeneous elements of the crystal structures. Here, we propose to use electronic charge density (ECD) as a generic unified 3D descriptor for materials property prediction with the advantage of possessing close relation with the physical and chemical properties of materials. We developed an ECD based 3D convolutional neural networks (CNNs) for predicting elastic properties of materials, in which CNNs can learn effective hierarchical features with multiple convolving and pooling operations. Extensive benchmark experiments over 2,170 Fm-3m face-centered-cubic (FCC) materials show that our ECD based CNNs can achieve good performance for elasticity prediction. Especially, our CNN models based on the fusion of elemental Magpie features and ECD descriptors achieved the best 5-fold cross-validation performance. More importantly, we showed that our ECD based CNN models can achieve significantly better extrapolation performance when evaluated over non-redundant datasets where there are few neighbor training samples around test samples. As additional validation, we evaluated the predictive performance of our models on 329 materials of space group Fm-3m by comparing to DFT calculated values, which shows better prediction power of our model for bulk modulus than shear modulus. Due to the unified representation power of ECD, it is expected that our ECD based CNN approach can also be applied to predict other physical and chemical properties of crystalline materials.