论文标题
基于边缘的张量预测通过图神经网络
Edge-based Tensor prediction via graph neural networks
论文作者
论文摘要
通知神经网络(MPNN)在预测分子和晶体的物理特性方面表现出极高的效率和准确性,并有望成为密度功能理论(DFT)之后的下一代材料模拟工具。但是,目前缺乏直接预测晶体的张量特性的一般MPNN框架。在这项工作中,提出了张量性能预测的一般框架:可以将晶体的张量特性分解为晶体中所有原子的张量贡献的平均值,并且每个原子的张量贡献可以扩展,因为随着边缘连接attom的张量的张量投影的总和,可以扩展。在此基础上,提出了基于边缘向量的基于边缘的膨胀,出生的有效电荷(BEC),载齿(DL)和压电(PZ)张量。这些膨胀在旋转上是旋转的,而这些张量扩展中的系数是旋转不变的标量,类似于物理量,例如形成能量和带隙。该张量预测框架的优点是,它不需要网络本身是均衡的。因此,在这项工作中,我们直接根据不变图神经网络设计了基于边缘的张量预测图神经网络(ETGNN)模型以预测张量。该张量预测框架的有效性和高精度通过ETGNN在扩展系统,随机扰动结构和JARVIS-DFT数据集上的测试显示。对于几乎所有GNN来说,这个张量预测框架都是一般的,并且将来可以通过更先进的GNN实现更高的精度。
Message-passing neural networks (MPNN) have shown extremely high efficiency and accuracy in predicting the physical properties of molecules and crystals, and are expected to become the next-generation material simulation tool after the density functional theory (DFT). However, there is currently a lack of a general MPNN framework for directly predicting the tensor properties of the crystals. In this work, a general framework for the prediction of tensor properties was proposed: the tensor property of a crystal can be decomposed into the average of the tensor contributions of all the atoms in the crystal, and the tensor contribution of each atom can be expanded as the sum of the tensor projections in the directions of the edges connecting the atoms. On this basis, the edge-based expansions of force vectors, Born effective charges (BECs), dielectric (DL) and piezoelectric (PZ) tensors were proposed. These expansions are rotationally equivariant, while the coefficients in these tensor expansions are rotationally invariant scalars which are similar to physical quantities such as formation energy and band gap. The advantage of this tensor prediction framework is that it does not require the network itself to be equivariant. Therefore, in this work, we directly designed the edge-based tensor prediction graph neural network (ETGNN) model on the basis of the invariant graph neural network to predict tensors. The validity and high precision of this tensor prediction framework were shown by the tests of ETGNN on the extended systems, random perturbed structures and JARVIS-DFT datasets. This tensor prediction framework is general for nearly all the GNNs and can achieve higher accuracy with more advanced GNNs in the future.