Kondati Natarajan Suresh, Morawietz Tobias, Behler Jörg
Lehrstuhl für Theoretische Chemie, Ruhr-Universität Bochum, D-44780 Bochum, Germany.
Phys Chem Chem Phys. 2015 Apr 7;17(13):8356-71. doi: 10.1039/c4cp04751f. Epub 2014 Dec 1.
Investigating the properties of protons in water is essential for understanding many chemical processes in aqueous solution. While important insights can in principle be gained by accurate and well-established methods like ab initio molecular dynamics simulations, the computational costs of these techniques are often very high. This prevents studying large systems on long time scales, which is severely limiting the applicability of computer simulations to address a wide range of interesting phenomena. Developing more efficient potentials enabling the simulation of water including dissociation and recombination events with first-principles accuracy is a very challenging task. In particular protonated water clusters have become important model systems to assess the reliability of such potentials, as the presence of the excess proton induces substantial changes in the local hydrogen bond patterns and many energetically similar isomers exist, which are extremely difficult to describe. In recent years it has been demonstrated for a number of systems including neutral water clusters of varying size that neural networks (NNs) can be used to construct potentials with close to first-principles accuracy. Based on density-functional theory (DFT) calculations, here we present a reactive full-dimensional NN potential for protonated water clusters up to the octamer. A detailed investigation of this potential shows that the energetic, structural, and vibrational properties are in excellent agreement with DFT results making the NN approach a very promising candidate for developing a high-quality potential for water. This finding is further supported by first preliminary but very encouraging NN-based simulations of the bulk liquid.
研究水中质子的性质对于理解水溶液中的许多化学过程至关重要。虽然原则上可以通过诸如从头算分子动力学模拟等准确且成熟的方法获得重要见解,但这些技术的计算成本通常非常高。这使得无法在长时间尺度上研究大型系统,从而严重限制了计算机模拟在解决广泛有趣现象方面的适用性。开发更有效的势能,以第一性原理精度模拟包括解离和重组事件的水,是一项极具挑战性的任务。特别是质子化水团簇已成为评估此类势能可靠性的重要模型系统,因为过量质子的存在会引起局部氢键模式的显著变化,并且存在许多能量上相似的异构体,极难描述。近年来,对于包括不同大小的中性水团簇在内的许多系统,已经证明神经网络(NNs)可用于构建接近第一性原理精度的势能。基于密度泛函理论(DFT)计算,我们在此提出了一种适用于八聚体以下质子化水团簇的全维反应性NN势能。对该势能的详细研究表明,其能量、结构和振动性质与DFT结果高度吻合,这使得NN方法成为开发高质量水势能的非常有前途的候选方法。对本体液体进行的首次初步但非常令人鼓舞的基于NN的模拟进一步支持了这一发现。