Machine Learning Time Propagators for Time-Dependent Density Functional Theory Simulations
Machine Learning Time Propagators for Time-Dependent Density Functional Theory Simulations
Time-dependent density functional theory (TDDFT) is a widely used method to investigate electron dynamics under external time-dependent perturbations such as laser fields. In this work, we present a novel approach to accelerate electron dynamics simulations based on real time TDDFT using autoregressive neural operators as time-propagators for the electron density. By leveraging physics-informed constraints and featurization, and high-resolution training data, our model achieves superior accuracy and computational speed compared to traditional numerical solvers. We demonstrate the effectiveness of our model on a class of one-dimensional diatomic molecules under the influence of a range of laser parameters. This method has potential in enabling real-time, on-the-fly modeling of laser-irradiated molecules and materials with varying experimental parameters.
Karan Shah、Attila Cangi
物理学
Karan Shah,Attila Cangi.Machine Learning Time Propagators for Time-Dependent Density Functional Theory Simulations[EB/OL].(2025-08-22)[2025-09-05].https://arxiv.org/abs/2508.16554.点此复制
评论