Accelerating Long-Term Molecular Dynamics with Physics-Informed Time-Series Forecasting
- URL: http://arxiv.org/abs/2510.01206v1
- Date: Tue, 16 Sep 2025 02:00:52 GMT
- Title: Accelerating Long-Term Molecular Dynamics with Physics-Informed Time-Series Forecasting
- Authors: Hung Le, Sherif Abbas, Minh Hoang Nguyen, Van Dai Do, Huu Hiep Nguyen, Dung Nguyen,
- Abstract summary: Molecular dynamics (MD) simulation is vital for understanding atomic-scale processes in materials science and biophysics.<n>Traditional density functional theory (DFT) methods are computationally expensive, which limits the feasibility of long-term simulations.<n>We propose a novel approach that formulates MD simulation as a time-series forecasting problem.
- Score: 7.705860755153007
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Efficient molecular dynamics (MD) simulation is vital for understanding atomic-scale processes in materials science and biophysics. Traditional density functional theory (DFT) methods are computationally expensive, which limits the feasibility of long-term simulations. We propose a novel approach that formulates MD simulation as a time-series forecasting problem, enabling advanced forecasting models to predict atomic trajectories via displacements rather than absolute positions. We incorporate a physics-informed loss and inference mechanism based on DFT-parametrised pair-wise Morse potential functions that penalize unphysical atomic proximity to enforce physical plausibility. Our method consistently surpasses standard baselines in simulation accuracy across diverse materials. The results highlight the importance of incorporating physics knowledge to enhance the reliability and precision of atomic trajectory forecasting. Remarkably, it enables stable modeling of thousands of MD steps in minutes, offering a scalable alternative to costly DFT simulations.
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