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为最先进的神经网络水势模型制造“短毛毯”困境:是重现实验性质还是潜在多体相互作用的物理性质?

A "short blanket" dilemma for a state-of-the-art neural network potential for water: Reproducing experimental properties or the physics of the underlying many-body interactions?

机构信息

Department of Computer Science and Engineering, University of California San Diego, La Jolla, California 92093, USA.

Department of Chemistry and Biochemistry, University of California San Diego, La Jolla, California 92093, USA.

出版信息

J Chem Phys. 2023 Feb 28;158(8):084111. doi: 10.1063/5.0142843.

Abstract

Deep neural network (DNN) potentials have recently gained popularity in computer simulations of a wide range of molecular systems, from liquids to materials. In this study, we explore the possibility of combining the computational efficiency of the DeePMD framework and the demonstrated accuracy of the MB-pol data-driven, many-body potential to train a DNN potential for large-scale simulations of water across its phase diagram. We find that the DNN potential is able to reliably reproduce the MB-pol results for liquid water, but provides a less accurate description of the vapor-liquid equilibrium properties. This shortcoming is traced back to the inability of the DNN potential to correctly represent many-body interactions. An attempt to explicitly include information about many-body effects results in a new DNN potential that exhibits the opposite performance, being able to correctly reproduce the MB-pol vapor-liquid equilibrium properties, but losing accuracy in the description of the liquid properties. These results suggest that DeePMD-based DNN potentials are not able to correctly "learn" and, consequently, represent many-body interactions, which implies that DNN potentials may have limited ability to predict the properties for state points that are not explicitly included in the training process. The computational efficiency of the DeePMD framework can still be exploited to train DNN potentials on data-driven many-body potentials, which can thus enable large-scale, "chemically accurate" simulations of various molecular systems, with the caveat that the target state points must have been adequately sampled by the reference data-driven many-body potential in order to guarantee a faithful representation of the associated properties.

摘要

深度神经网络(DNN)势在计算机模拟广泛的分子系统中越来越受欢迎,从液体到材料。在这项研究中,我们探索了将 DeePMD 框架的计算效率与 MB-pol 数据驱动的多体势的准确性相结合的可能性,以训练用于水相图中大规模模拟的 DNN 势。我们发现 DNN 势能够可靠地再现 MB-pol 对液态水的结果,但对汽液平衡性质的描述不够准确。这一缺点可以追溯到 DNN 势无法正确表示多体相互作用。试图显式包含多体效应的信息会导致新的 DNN 势表现出相反的性能,能够正确再现 MB-pol 的汽液平衡性质,但在描述液体性质时准确性降低。这些结果表明,基于 DeePMD 的 DNN 势不能正确地“学习”,因此无法正确表示多体相互作用,这意味着 DNN 势可能对未明确包含在训练过程中的状态点的性质预测能力有限。DeePMD 框架的计算效率仍然可以被利用来在数据驱动的多体势上训练 DNN 势,从而可以实现各种分子系统的大规模、“化学准确”模拟,但需要注意的是,目标状态点必须已经被参考数据驱动的多体势充分采样,以保证对相关性质的忠实表示。

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