论文标题

部分可观测时空混沌系统的无模型预测

Simulate Time-integrated Coarse-grained Molecular Dynamics with Multi-Scale Graph Networks

论文作者

Fu, Xiang, Xie, Tian, Rebello, Nathan J., Olsen, Bradley D., Jaakkola, Tommi

论文摘要

分子动力学(MD)模拟对于各种科学领域至关重要,但计算上昂贵。基于学习的力场在加速AB-Initio MD模拟方面取得了重大进展,但由于对大型系统和较小的时间步长的推理缓慢(秒秒级),因此对于许多现实世界应用的速度还不够快。我们旨在通过学习一个多尺度图神经网络来应对这些挑战,该图形神经网络直接使用非常大的时间步长(纳秒级)和基于扩散模型来减轻模拟不稳定性的新颖的细化模块,直接模拟了粗粒的MD。我们方法的有效性在两个复杂的系统中得到了证明:单链粗粒聚合物和多组分锂离子聚合物电解质。为了进行评估,我们模拟轨迹比训练轨迹的轨迹要长得多。通过离开飞秒制度,可以以比经典力场高的几个数量级的速度准确地恢复结构和动力学特性。

Molecular dynamics (MD) simulation is essential for various scientific domains but computationally expensive. Learning-based force fields have made significant progress in accelerating ab-initio MD simulation but are not fast enough for many real-world applications due to slow inference for large systems and small time steps (femtosecond-level). We aim to address these challenges by learning a multi-scale graph neural network that directly simulates coarse-grained MD with a very large time step (nanosecond-level) and a novel refinement module based on diffusion models to mitigate simulation instability. The effectiveness of our method is demonstrated in two complex systems: single-chain coarse-grained polymers and multi-component Li-ion polymer electrolytes. For evaluation, we simulate trajectories much longer than the training trajectories for systems with different chemical compositions that the model is not trained on. Structural and dynamical properties can be accurately recovered at several orders of magnitude higher speed than classical force fields by getting out of the femtosecond regime.

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