Machine Learning Nonadiabatic Dynamics: Eliminating Phase Freedom of Nonadiabatic Couplings with the State-Intraction State-Averaged Spin-Restricted Ensemble-Referenced Kohn-Sham Approach
Excited-state molecular dynamics (ESMD) simulations near conical intersections (CIs) pose significant challenges when using machine learning potentials (MLPs). Although MLPs have gained recognition for their integration into mixed quantum-classical (MQC) methods, such as trajectory surface hopping (...
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Zusammenfassung: | Excited-state molecular dynamics (ESMD) simulations near conical
intersections (CIs) pose significant challenges when using machine learning
potentials (MLPs). Although MLPs have gained recognition for their integration
into mixed quantum-classical (MQC) methods, such as trajectory surface hopping
(TSH), and their capacity to model correlated electron-nuclear dynamics
efficiently, difficulties persist in managing nonadiabatic dynamics.
Specifically, singularities at CIs and double-valued coupling elements result
in discontinuities that disrupt the smoothness of predictive functions. Partial
solutions have been provided by learning diabatic Hamiltonians with phaseless
loss functions to these challenges. However, a definitive method for addressing
the discontinuities caused by CIs and double-valued coupling elements has yet
to be developed. Here, we introduce the phaseless coupling term, $\Delta^2$,
derived from the square of the off-diagonal elements of the diabatic
Hamiltonian in the SSR(2,2) formalism. This approach improves the stability and
accuracy of the MLP model by addressing the issues arising from CI
singularities and double-valued coupling functions. We apply this method to the
penta-2,4-dieniminium cation (PSB3), demonstrating its effectiveness in
improving MLP training for ML-based nonadiabatic dynamics. Our results show
that the $\Delta^2$ based ML-ESMD method can reproduce ab initio ESMD
simulations, underscoring its potential and efficiency for broader
applications, particularly in large-scale and long-timescale ESMD simulations. |
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DOI: | 10.48550/arxiv.2410.22801 |