Photoinduced desorption dynamics of CO from Pd(111): a neural network approach
Ikusi/Ireki
Data
2021-07-19Egilea
Serrano Jiménez, Alfredo
Sánchez Muzas, Alberto Pablo
Zhang, Yaolong
Ovcar, Juraj
Jiang, Bin
Loncaric, Ivor
Juaristi Oliden, Joseba Iñaki
Alducín Ochoa, Maite
Journal of Chemical Theory and Computation 17 : 4648-4659 (2021)
Laburpena
[EN] Modeling the ultrafast photoinduced dynamics and
reactivity of adsorbates on metals requires including the effect of the
laser-excited electrons and, in many cases, also the effect of the highly
excited surface lattice. Although the recent ab initio molecular dynamics
with electronic friction and thermostats, (Te,Tl)-AIMDEF [Alducin,
M.;et al. Phys. Rev. Lett. 2019, 123, 246802], enables such complex
modeling, its computational cost may limit its applicability. Here, we use
the new embedded atom neural network (EANN) method [Zhang,
Y.;et al. J. Phys. Chem. Lett. 2019, 10, 4962] to develop an accurate and
extremely complex potential energy surface (PES) that allows us a detailed and reliable description of the photoinduced desorption
of CO from the Pd(111) surface with a coverage of 0.75 monolayer. Molecular dynamics simulations performed on this EANN-PES
reproduce the (Te,Tl)-AIMDEF results with a remarkable level of accuracy. This demonstrates the outstanding performance of the
obtained EANN-PES that is able to reproduce available density functional theory (DFT) data for an extensive range of surface
temperatures (90-1000 K); a large number of degrees of freedom, those corresponding to six CO adsorbates and 24 moving surface
atoms; and the varying CO coverage caused by the abundant desorption events.