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Data-Driven Prediction of Thermal Conductivity from Short MD Trajectories:A GCN-LSTM Approach
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作者 Shihao Feng Haifeng Chen +2 位作者 Jian Zhang Meng An Gang Zhang 《Chinese Physics Letters》 2026年第2期282-299,共18页
We propose a data-driven framework for rapid prediction of thermal conductivity in solids based on shorttime molecular dynamics(MD)simulations.By converting atomic configurations into graph representations,a graph con... We propose a data-driven framework for rapid prediction of thermal conductivity in solids based on shorttime molecular dynamics(MD)simulations.By converting atomic configurations into graph representations,a graph convolutional network(GCN)is used to extract spatial features,which are then processed by a long short-term memory(LSTM)network to capture the temporal evolution of physical properties.The framework is validated using equilibrium MD simulations of germanium at 1000 K across various system sizes.With sizespecific normalization and optimized hyperparameters,the model accurately predicts the converged thermal conductivity,achieving results consistent with experimental data.Notably,the proposed method significantly reduces computational time by up to 800-fold at large system sizes,which demonstrates its potential to accelerate thermal transport simulations in solid-state systems. 展开更多
关键词 equilibrium md simulations molecular dynamics long short term memory data driven prediction graph representationsa graph convolutional network gcn thermal conductivity extract spatial featureswhich
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