In this work we show that deep learning (DL) can be used for exploring complex and highly nonlinear multistate potential energy surfaces of polyatomic molecules and related nonadiabatic dynamics. Our DL is based on deep neural networks (DNNs), which are used as accurate representations of the CASSCF ground- and excited-state potential energy surfaces (PESs) of CH2NH. After geometries near conical intersection are included in the training set, the DNN models accurately reproduce excited-state topological structures; photoisomerization paths; and, importantly, conical intersections. We have also demonstrated that the results from nonadiabatic dynamics run with the DNN models are very close to those from the dynamics run with the pure ab initi...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
While the primary bottleneck to a number of computational workflows was not so long ago limited by p...
Williams D, Viel A, Eisfeld W. Diabatic neural network potentials for accurate vibronic quantum dyna...
In this work we show that deep learning (DL) can be used for exploring complex and highly nonlinear ...
A general neural network (NN)-fitting procedure based on nonadiabatic couplings is proposed to gener...
A general neural network (NN)-fitting procedure based on nonadiabatic couplings is proposed to gener...
Development and applications of neural network (NN)-based approaches for representing potential ener...
| openaire: EC/H2020/676580/EU//NoMaDDeep learning methods for the prediction of molecular excitatio...
| openaire: EC/H2020/676580/EU//NoMaDDeep learning methods for the prediction of molecular excitatio...
Light-induced chemical processes are ubiquitous in nature and have widespread technological applicat...
While the primary bottleneck to a number of computational workflows was not so long ago limited by p...
Machine learning interatomic potentials (ML-IPs) have emerged as a promising approach for bridging t...
A light–matter hybrid quasiparticle, called a polariton, is formed when molecules are strongly coupl...
Obtaining the exciton dynamics of large photosynthetic complexes by using mixed quantum mechanics/mo...
To accurately study the chemical reactions in the condensed phase or within enzymes, both quantum-me...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
While the primary bottleneck to a number of computational workflows was not so long ago limited by p...
Williams D, Viel A, Eisfeld W. Diabatic neural network potentials for accurate vibronic quantum dyna...
In this work we show that deep learning (DL) can be used for exploring complex and highly nonlinear ...
A general neural network (NN)-fitting procedure based on nonadiabatic couplings is proposed to gener...
A general neural network (NN)-fitting procedure based on nonadiabatic couplings is proposed to gener...
Development and applications of neural network (NN)-based approaches for representing potential ener...
| openaire: EC/H2020/676580/EU//NoMaDDeep learning methods for the prediction of molecular excitatio...
| openaire: EC/H2020/676580/EU//NoMaDDeep learning methods for the prediction of molecular excitatio...
Light-induced chemical processes are ubiquitous in nature and have widespread technological applicat...
While the primary bottleneck to a number of computational workflows was not so long ago limited by p...
Machine learning interatomic potentials (ML-IPs) have emerged as a promising approach for bridging t...
A light–matter hybrid quasiparticle, called a polariton, is formed when molecules are strongly coupl...
Obtaining the exciton dynamics of large photosynthetic complexes by using mixed quantum mechanics/mo...
To accurately study the chemical reactions in the condensed phase or within enzymes, both quantum-me...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
While the primary bottleneck to a number of computational workflows was not so long ago limited by p...
Williams D, Viel A, Eisfeld W. Diabatic neural network potentials for accurate vibronic quantum dyna...