Machine learning nonequilibrium phase transitions in charge-density wave insulators
By: Yunhao Fan, Sheng Zhang, Gia-Wei Chern
Potential Business Impact:
Learns how materials change to speed up computer simulations.
Nonequilibrium electronic forces play a central role in voltage-driven phase transitions but are notoriously expensive to evaluate in dynamical simulations. Here we develop a machine learning framework for adiabatic lattice dynamics coupled to nonequilibrium electrons, and demonstrate it for a gating induced insulator to metal transition out of a charge density wave state in the Holstein model. Although exact electronic forces can be obtained from nonequilibrium Green's function (NEGF) calculations, their high computational cost renders long time dynamical simulations prohibitively expensive. By exploiting the locality of the electronic response, we train a neural network to directly predict instantaneous local electronic forces from the lattice configuration, thereby bypassing repeated NEGF calculations during time evolution. When combined with Brownian dynamics, the resulting machine learning force field quantitatively reproduces domain wall motion and nonequilibrium phase transition dynamics obtained from full NEGF simulations, while achieving orders of magnitude gains in computational efficiency. Our results establish direct force learning as an efficient and accurate approach for simulating nonequilibrium lattice dynamics in driven quantum materials.
Similar Papers
Equivariant Neural Networks for Force-Field Models of Lattice Systems
Strongly Correlated Electrons
Helps computers understand how materials change.
Machine Learning Force-Field Approach for Itinerant Electron Magnets
Strongly Correlated Electrons
Helps computers understand how tiny magnets move.
Machine learning interatomic potential can infer electrical response
Materials Science
Predicts how materials react to electricity.