Machine Learning Model for Efficient Nonthermal Tuning of the Charge Density Wave in Monolayer NbSe2
Articolo
Data di Pubblicazione:
2025
Citazione:
Machine Learning Model for Efficient Nonthermal Tuning of the Charge Density Wave in Monolayer NbSe2 / Benic, L.; Grasselli, F.; Ben Mahmoud, C.; Novko, D.; Loncaric, I.. - In: JOURNAL OF CHEMICAL THEORY AND COMPUTATION. - ISSN 1549-9618. - 21:16(2025), pp. 8130-8141. [10.1021/acs.jctc.5c00959]
Abstract:
Understanding and controlling the charge density wave (CDW) phase diagram of transition-metal dichalcogenides are long-studied problems in condensed matter physics. However, due to the complex involvement of electron and lattice degrees of freedom and pronounced anharmonicity, theoretical simulations of the CDW phase diagram at the density-functional-theory level are often numerically demanding. To reduce the computational cost of first-principles modeling by orders of magnitude, we have developed an electronic free-energy machine learning model for monolayer NbSe2that allows us to control the electronic temperature as a parameter of the model. The ionic temperature is modeled via the stochastic self-consistent harmonic approximation. Our approach relies on a machine learning model of the electronic density of states and zero-temperature interatomic potential. This allows us to explore the CDW phase diagram of monolayer NbSe2both under thermal and laser-induced nonthermal conditions. Our study provides an accurate estimate of the CDW transition temperature at low cost and can disentangle the role of hot electrons and phonons in the nonthermal ultrafast melting process of the CDW phase in NbSe2.
Tipologia CRIS:
Articolo su rivista
Elenco autori:
Benic, L.; Grasselli, F.; Ben Mahmoud, C.; Novko, D.; Loncaric, I.
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