Zaporozhets Iryna, Musil Félix, Kapil Venkat, Clementi Cecilia
Department of Physics, Freie Universität Berlin, Arnimallee 12, 14195 Berlin, Germany.
Department of Chemistry, Rice University, Houston, Texas 77005, USA.
J Chem Phys. 2024 Oct 7;161(13). doi: 10.1063/5.0226764.
The contribution of nuclear quantum effects (NQEs) to the properties of various hydrogen-bound systems, including biomolecules, is increasingly recognized. Despite the development of many acceleration techniques, the computational overhead of incorporating NQEs in complex systems is sizable, particularly at low temperatures. In this work, we leverage deep learning and multiscale coarse-graining techniques to mitigate the computational burden of path integral molecular dynamics (PIMD). In particular, we employ a machine-learned potential to accurately represent corrections to classical potentials, thereby significantly reducing the computational cost of simulating NQEs. We validate our approach using four distinct systems: Morse potential, Zundel cation, single water molecule, and bulk water. Our framework allows us to accurately compute position-dependent static properties, as demonstrated by the excellent agreement obtained between the machine-learned potential and computationally intensive PIMD calculations, even in the presence of strong NQEs. This approach opens the way to the development of transferable machine-learned potentials capable of accurately reproducing NQEs in a wide range of molecular systems.
核量子效应(NQEs)对包括生物分子在内的各种氢键系统性质的贡献日益受到认可。尽管已开发出许多加速技术,但在复杂系统中纳入NQEs的计算开销仍然很大,尤其是在低温情况下。在这项工作中,我们利用深度学习和多尺度粗粒化技术来减轻路径积分分子动力学(PIMD)的计算负担。具体而言,我们采用机器学习势来精确表示对经典势的修正,从而显著降低模拟NQEs的计算成本。我们使用四个不同的系统来验证我们的方法:莫尔斯势、祖德尔阳离子、单个水分子和体相水。我们的框架使我们能够精确计算位置相关的静态性质,机器学习势与计算密集型PIMD计算之间取得的出色一致性证明了这一点,即使存在强NQEs时也是如此。这种方法为开发能够在广泛分子系统中准确再现NQEs的可转移机器学习势开辟了道路。