Molecular dynamics investigations of chlorine peroxide dissociation on a neural network ab initio potential energy surface

被引:0
|
作者
Anh T. H. Le
Nam H. Vu
Thach S. Dinh
Thi M. Cao
Hung M. Le
机构
[1] College of Science,Faculty of Materials Science
[2] Vietnam National University,undefined
来源
关键词
ClOOCl; Chlorine peroxide; ClO dimer; Neural network; Molecular dynamics; Reaction kinetics;
D O I
暂无
中图分类号
学科分类号
摘要
Molecular dissociation of chlorine peroxide (ClOOCl), which consists of two elementary dissociation channels (of Cl–O and O–O), is investigated using molecular dynamics simulations on a neural network-fitted potential energy surface constructed by MP2 calculations with the 6-311G(d,p) basis set. When relaxed scans of the surface are executed, we observe that Cl–O dissociation is extremely reactive with a low barrier height of 0.1928 eV (18.602 kJ/mol), while O–O bond scission is less reactive (0.7164 eV or 69.122 kJ/mol). By utilizing the “novelty sampling” method, 35,006 data points in the ClOOCl configuration hyperspace are collected, and a 40-neuron feed-forward neural network is employed to fit approximately 90% of the data to produce an analytic potential energy function. The mean absolute error and root mean squared error of this fit are reported as 0.0078 eV (0.753 kJ/mol) and 0.0137 eV (1.322 kJ/mol), respectively. Finally, quasi-classical molecular dynamics is executed at various levels of internal energy (from 0.8 to 1.3 eV) to examine the bond ruptures. The two first-order rate coefficients are computed statistically, and the results range from 5.20 to 22.67 ps−1 for Cl–O dissociation and 3.72–8.35 ps−1 for O–O dissociation. Rice-Ramsperger-Kassel theory is utilized to classically correlate internal energies to rate coefficients in both cases, and the plots exhibit very good linearity, thus can be employed to predict rate coefficients at other internal energy levels with good reliability.
引用
收藏
相关论文
共 50 条
  • [1] Molecular dynamics investigations of chlorine peroxide dissociation on a neural network ab initio potential energy surface
    Le, Anh T. H.
    Vu, Nam H.
    Dinh, Thach S.
    Cao, Thi M.
    Le, Hung M.
    THEORETICAL CHEMISTRY ACCOUNTS, 2012, 131 (03)
  • [2] Molecular dynamics investigations of the dissociation of SiO2 on an ab initio potential energy surface obtained using neural network methods
    Agrawal, PM
    Raff, LM
    Hagan, MT
    Komanduri, R
    JOURNAL OF CHEMICAL PHYSICS, 2006, 124 (13):
  • [3] Trajectory investigations of the dissociation dynamics of vinyl bromide on an ab initio potential-energy surface
    Rahaman, A
    Raff, LM
    JOURNAL OF PHYSICAL CHEMISTRY A, 2001, 105 (11): : 2156 - 2172
  • [4] Molecular Dynamics Investigations of Ozone on an Ab Initio Potential Energy Surface with the Utilization of Pattern-Recognition Neural Network for Accurate Determination of Product Formation
    Le, Hung M.
    Dinh, Thach S.
    Le, Hieu V.
    JOURNAL OF PHYSICAL CHEMISTRY A, 2011, 115 (40): : 10862 - 10870
  • [5] Molecular dissociation of hydrogen peroxide (HOOH) on a neural network ab initio potential surface with a new configuration sampling method involving gradient fitting
    Le, Hung M.
    Sau Huynh
    Raff, Lionel M.
    JOURNAL OF CHEMICAL PHYSICS, 2009, 131 (01):
  • [6] Direct molecular simulation of nitrogen dissociation based on an ab initio potential energy surface
    Valentini, Paolo
    Schwartzentruber, Thomas E.
    Bender, Jason D.
    Nompelis, Ioannis
    Candler, Graham V.
    PHYSICS OF FLUIDS, 2015, 27 (08) : 086102
  • [7] Surface potential of water with ab initio molecular dynamics
    Duignan, Timothy
    Baer, Marcel
    Schenter, Gregory
    Mundy, Christopher
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2017, 253
  • [8] An Ab Initio Neural Network Potential Energy Surface for the Dimer of Formic Acid and Further Quantum Tunneling Dynamics
    Li, Fengyi
    Yang, Xingyu
    Liu, Xiaoxi
    Cao, Jianwei
    Bian, Wensheng
    ACS OMEGA, 2023, 8 (19): : 17296 - 17303
  • [9] Molecular dynamics using ab initio potential-energy surfaces generated from a neural network/trajectory method
    Doughan, Dany I.
    Raff, Lionel M.
    Rockley, Mark G.
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2005, 230 : U2965 - U2965
  • [10] Molecular Dynamics Simulation of Zinc Ion in Water with an ab Initio Based Neural Network Potential
    Xu, Mingyuan
    Zhu, Tong
    Zhang, John Z. H.
    JOURNAL OF PHYSICAL CHEMISTRY A, 2019, 123 (30): : 6587 - 6595