论文标题
多任务混合物密度图神经网络,用于预测基于CU的单原子合金催化剂,用于CO2还原反应
Multi-Task Mixture Density Graph Neural Networks for Predicting Cu-based Single-Atom Alloy Catalysts for CO2 Reduction Reaction
论文作者
论文摘要
图神经网络(GNN)从材料科学家那里引起了越来越多的关注,并证明了建立结构和属性之间的连接的高能力。但是,只有仅提供的未删除结构作为输入,很少有GNN模型可以预测带有可接受的误差水平的放松配置的热力学特性。在这项工作中,我们基于Dimenet ++和混合物密度网络开发了多任务(MT)体系结构,以提高此类任务的性能。以基于Cu的单原子合金催化剂为例,我们表明我们的方法可以可靠地估计CO的吸附能,而从初始CO的吸附结构中,平均绝对误差为0.087 eV,而无需昂贵的第一原则计算。此外,与其他最先进的GNN方法相比,我们的模型在预测具有看不见的底物表面或掺杂物种的脱域构型的催化性能时具有提高的概括能力。我们表明,拟议的GNN策略可以促进催化剂发现。
Graph neural networks (GNNs) have drawn more and more attention from material scientists and demonstrated a high capacity to establish connections between the structure and properties. However, with only unrelaxed structures provided as input, few GNN models can predict the thermodynamic properties of relaxed configurations with an acceptable level of error. In this work, we develop a multi-task (MT) architecture based on DimeNet++ and mixture density networks to improve the performance of such task. Taking CO adsorption on Cu-based single-atom alloy catalysts as an illustration, we show that our method can reliably estimate CO adsorption energy with a mean absolute error of 0.087 eV from the initial CO adsorption structures without costly first-principles calculations. Further, compared to other state-of-the-art GNN methods, our model exhibits improved generalization ability when predicting catalytic performance of out-of-domain configurations, built with either unseen substrate surfaces or doping species. We show that the proposed MT GNN strategy can facilitate catalyst discovery.