JVSS 2023

Presentation information

Oral Presentation

[1Dp01-09] Surface Science(SS1) Physical Property

Tue. Oct 31, 2023 2:00 PM - 4:30 PM D: Room221 (2F)

Chair:Wilson Agerico Diño(Osaka University), Satoru Ichinokura(Tokyo Institute of Technology)

2:45 PM - 3:00 PM

[1Dp04] Machine learning molecular dynamics simulation of vibration driven CO2 hydrogenation to formate on Cu(111) surface

*Harry Halim1, Yoshitada Morikawa1 (1. Graduate School of Engineering, Osaka University)

The hydrogenation of CO2 to formate (i.e., HCOO*) on Cu(111) is investigated by machine-learning molecular dynamics (MLMD). Benchmark of MLMD simulations to the Ab-initio MD (AIMD) shows the capability of MLMD to predict the energetics of chemical reactions in a good accuracy. The success of the hydrogenation strongly depends on the initial conditions of the incoming gas CO2 such as vibrational modes, vibrational energy, incident angles, and translational energy. Multi-dimensional tables depicting the correlation of those of initial states to the success rate of hydrogenation will be discussed in the conference. The main outcome of this research is the combinations of initial states of CO2 that are the most efficient ones to produce HCOO* on the surface.

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