AI Article Synopsis

  • An improved FI-NN approach uses symmetric neurons to simplify training for potential energy surfaces that involve permutation symmetry.
  • This method achieves a global accurate PES of the LiNa system with a low root-mean-square error and leverages quantum mechanics to calculate vibrational energy levels.
  • The study employs a statistical quantum model to analyze ultracold reaction dynamics, confirming its effectiveness by aligning with exact quantum dynamics results.

Article Abstract

An improved fundamental invariant neural network (FI-NN) approach for representing a potential energy surface (PES) involving permutation symmetry is introduced in this work. In this approach, FIs are regarded as symmetric neurons, thus avoiding complex preprocessing of training set data, especially when the training set contains gradient data. In this work, the improved FI-NN method, combined with simultaneous fitting of the energy and gradient strategy, is used for constructing a global accurate PES of a LiNa system (root-mean-square error of 12.20 cm). The potential energies and the corresponding gradients are calculated by a UCCSD(T) method with effective core potentials. Based on the new PES, the vibrational energy levels and the corresponding wave functions of LiNa molecules are calculated using an accurate quantum mechanics method. To accurately describe the cold or ultracold reaction dynamics of the Li + LiNa( = 0, = 0) → Li(', ') + Na reaction, the long-range region of the PES in both the reactant and product asymptotes is represented by an asymptotically correct form. A statistical quantum model (SQM) is used to study the dynamics of the ultracold Li + LiNa reaction. The calculated results are in good agreement with the exact quantum dynamics results (B. K. Kendrick, , 2021, , 124303), which indicates that the dynamics of the ultracold Li + LiNa reaction can be well described by the SQM approach. The time-dependent wave packet calculations are performed for the Li + LiNa reaction at thermal energies, and the characteristic of differential cross-sections confirms that the reaction follows the complex-forming reaction mechanism.

Download full-text PDF

Source
http://dx.doi.org/10.1039/d3cp01753bDOI Listing

Publication Analysis

Top Keywords

lina reaction
12
neural network
8
potential energy
8
energy surface
8
lina →
8
reaction
8
quantum dynamics
8
thermal energies
8
training set
8
dynamics ultracold
8

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!