Zhai Yaoguang, Rashmi Richa, Palos Etienne, Paesani Francesco
Department of Chemistry and Biochemistry, University of California San Diego, La Jolla, California 92093, USA.
Department of Computer Science and Engineering, University of California San Diego, La Jolla, California 92093, USA.
J Chem Phys. 2024 Apr 14;160(14). doi: 10.1063/5.0203682.
We present a detailed assessment of deep neural network potentials developed within the Deep Potential Molecular Dynamics (DeePMD) framework and trained on the MB-pol data-driven many-body potential energy function. Specific focus is directed at the ability of DeePMD-based potentials to correctly reproduce the accuracy of MB-pol across various water systems. Analyses of bulk and interfacial properties as well as many-body interactions characteristic of water elucidate inherent limitations in the transferability and predictive accuracy of DeePMD-based potentials. These limitations can be traced back to an incomplete implementation of the "nearsightedness of electronic matter" principle, which may be common throughout machine learning potentials that do not include a proper representation of self-consistently determined long-range electric fields. These findings provide further support for the "short-blanket dilemma" faced by DeePMD-based potentials, highlighting the challenges in achieving a balance between computational efficiency and a rigorous, physics-based representation of the properties of water. Finally, we believe that our study contributes to the ongoing discourse on the development and application of machine learning models in simulating water systems, offering insights that could guide future improvements in the field.
我们对在深度势能分子动力学(DeePMD)框架内开发并基于MB-pol数据驱动的多体势能函数进行训练的深度神经网络势能进行了详细评估。具体重点在于基于DeePMD的势能在各种水体系中正确再现MB-pol准确性的能力。对水的体相和界面性质以及多体相互作用的分析揭示了基于DeePMD的势能在可转移性和预测准确性方面的固有局限性。这些局限性可追溯到“电子物质近视性”原理的不完全实现,这在不包括自洽确定的长程电场适当表示的整个机器学习势能中可能很常见。这些发现为基于DeePMD的势能所面临的“短覆盖困境”提供了进一步支持,突出了在计算效率与对水性质的严格基于物理的表示之间取得平衡的挑战。最后,我们相信我们的研究有助于正在进行的关于机器学习模型在模拟水体系中的开发和应用的讨论,提供可指导该领域未来改进的见解。