Song Kaisheng, Li Jun
School of Chemistry and Chemical Engineering & Chongqing Key Laboratory of Chemical Theory and Mechanism, Chongqing University, Chongqing 401331, P.R. China.
J Phys Chem A. 2024 Aug 15;128(32):6636-6647. doi: 10.1021/acs.jpca.4c02432. Epub 2024 Aug 3.
The hydrogen abstraction reaction of OH + CHOH plays a great role in combustion and atmospheric and interstellar chemistry and has been extensively studied theoretically and experimentally. Theoretically, the numerical gradients with respect to the Cartesian coordinates of atoms in molecular simulations on our recent potential energy surface (PES) for the title reaction trained using the permutationally invariant polynomial neural network (PIP-NN) approach hinder the extensive calculation because of the unaffordable computation cost. To address this issue, we in this work report a new full-dimensional accurate analytical PES for the title reaction using the fundamental invariant neural network (FI-NN) approach based on 140,192 points of the quality UCCSD(T)-F12a/AVTZ. Besides, the spin-orbit (SO) corrections of OH in the entrance channel were determined at the level of complete active space self-consistent field with the AVTZ basis set. As a compromise between computational cost and efficiency, the Δ-machine learning approach was employed to construct the SO-corrected PES. Based on this new FI-NN PES with analytical forces, thermal rate coefficients and various dynamic properties, including the integral cross sections, the differential cross sections, and the product energy partitioning, were determined by running a total of 5.5 million trajectories. The use of analytical gradients of the FI-NN PES accelerated simulations and about 99% of computation cost was saved, compared to that for the PIP-NN PES with numerical gradients. Such a significant acceleration is achieved mainly by replacing PIPs with FIs.
OH + CHOH的氢提取反应在燃烧、大气和星际化学中起着重要作用,并且已经在理论和实验上进行了广泛研究。从理论上讲,在我们最近使用置换不变多项式神经网络(PIP-NN)方法训练的标题反应势能面(PES)上进行分子模拟时,相对于原子笛卡尔坐标的数值梯度由于计算成本过高而阻碍了广泛的计算。为了解决这个问题,我们在这项工作中报告了一种基于140,192个UCCSD(T)-F12a/AVTZ质量点,使用基本不变神经网络(FI-NN)方法的标题反应新的全维精确分析PES。此外,在完全活性空间自洽场和AVTZ基组水平上确定了入口通道中OH的自旋轨道(SO)校正。作为计算成本和效率之间的折衷,采用了Δ机器学习方法来构建SO校正的PES。基于这个具有分析力的新FI-NN PES,通过总共运行550万个轨迹确定了热速率系数和各种动力学性质,包括积分截面、微分截面和产物能量分配。与具有数值梯度的PIP-NN PES相比,FI-NN PES的分析梯度的使用加速了模拟,并节省了约99%的计算成本。这种显著的加速主要是通过用FIs取代PIPs实现的。