J Phys Chem Lett. 2021 Jan 14;12(1):132-137. doi: 10.1021/acs.jpclett.0c03101. Epub 2020 Dec 14.
High-level chemical calculations, such as second-order Møller-Plesset perturbation (MP2), are highly accurate but time-consuming, making it inefficient to apply to macromolecular systems. Here, we propose a newly efficient approach based on the neural network and fragment method to predict the Gibbs free energy, structural characteristics, and thus phase transition of solid crystal structures. The proposed approach has the same prediction accuracy as the MP2 calculation but is hundreds of times faster than the MP2. The predicted structures and phase transitions of two selected ice phases (IX and XV) under extreme conditions are in excellent agreement with the MP2 calculations and experimental results but with an extremely low computational cost. It not only predicts the high-pressure structures and phase diagrams of solid systems accurately and efficiently but also solves the problem of extreme calculation cost during a high-precision theoretical study on high-pressure molecular crystals with potentially essential applications.
高级化学计算,如二阶 Møller-Plesset 微扰(MP2),具有很高的准确性,但计算时间长,因此对于大分子系统的应用效率不高。在这里,我们提出了一种新的基于神经网络和片段方法的有效方法来预测固体晶体结构的吉布斯自由能、结构特征,从而预测相变。该方法的预测精度与 MP2 计算相同,但速度比 MP2 快数百倍。在极端条件下,对两种选定的冰相(IX 和 XV)的预测结构和相变与 MP2 计算和实验结果非常吻合,但计算成本极低。它不仅可以准确高效地预测固体系统的高压结构和相图,而且还解决了在具有潜在重要应用的高压分子晶体的高精度理论研究中,计算成本极高的问题。