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首页> 外文期刊>Physical chemistry chemical physics: PCCP >Ring-polymer molecular dynamical calculations for the F plus HCl - HF plus Cl reaction on the ground 1(2)A ' potential energy surface
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Ring-polymer molecular dynamical calculations for the F plus HCl - HF plus Cl reaction on the ground 1(2)A ' potential energy surface

机译:地面1(2)A'势能面上F + HCl-> HF + Cl反应的环状聚合物分子动力学计算

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摘要

The reaction kinetics of the heavy-light-heavy abstraction reaction F + HCl -> HF + Cl on the ground electronic state potential energy surface (PES) is investigated theoretically by a recently developed ring polymer molecular dynamics (RPMD) approach. First, a new PES is developed by the permutation invariant polynomial neural network (PIP-NN) approach based on 30 620 points sampled over a large configuration space from the latest and most accurate Deskevich-Hayes-Takahashi-Skodje-Nesbitt (DHTSN) PES (J. Chem. Phys., 2006, 124, 224303). Excellent fitting performance was achieved with only 521 parameters. The PIP-NN PES is 11 times faster than the DHTSN PES. Besides, the first analytical derivatives with respect to the coordinates of the atoms have been obtained for the PIP-NN PES. The RPMD rate coefficients on the PIP-NN PES are calculated and compared with available theoretical and experimental results. It is found that the experimental rate coefficients are significantly larger than the theoretical results on the DHTSN PES, due to its overestimated reaction barrier. We conclude that a reliable PES for this important heavy-light-heavy reaction is highly desirable.
机译:通过最近开发的环聚合物分子动力学(RPMD)方法,从理论上研究了重轻重抽象反应F + HCl-> HF + Cl在基态电子势能表面(PES)上的反应动力学。首先,通过排列不变多项式神经网络(PIP-NN)方法开发了一种新的PES,该方法基于从最新,最准确的Deskevich-Hayes-Takahashi-Skodje-Nesbitt(DHTSN)PES在大型配置空间中采样的30620个点(J.Chem.Phys。,2006,124,224303)。仅521个参数即可实现出色的拟合性能。 PIP-NN PES比DHTSN PES快11倍。此外,对于PIP-NN PES,已经获得了关于原子坐标的一阶解析导数。计算PIP-NN PES上的RPMD速率系数,并将其与可用的理论和实验结果进行比较。结果发现,由于DHTSN PES的反应势垒过高,实验速率系数明显大于DHTSN PES的理论结果。我们得出结论,非常需要用于这种重要的轻重反应的可靠的PES。

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