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arxiv: 2505.00789 · v1 · pith:FQ5Q3ZOHnew · submitted 2025-05-01 · ❄️ cond-mat.mtrl-sci

Free-energy perturbation in the exchange-correlation space accelerated by machine learning: Application to silica polymorphs

classification ❄️ cond-mat.mtrl-sci
keywords transitionacceleratedaccurateapproachentropiesfunctionalsrungsapplication
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We propose a free-energy-perturbation approach accelerated by machine-learning potentials to efficiently compute transition temperatures and entropies for all rungs of Jacob's ladder. We apply the approach to the dynamically stabilized phases of SiO$_2$, which are characterized by challengingly small transition entropies. All investigated functionals from rungs 1-4 fail to predict an accurate transition temperature by 25-200%. Only by ascending to the fifth rung, within the random phase approximation, an accurate prediction is possible, giving a relative error of 5%. We provide a clear-cut procedure and relevant data to the community for, e.g., developing and evaluating new functionals.

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  1. An experimentally validated end-to-end framework for operando modeling of intrinsically complex metallosilicates

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    An end-to-end framework combining domain separation, lightweight ML potentials, and de novo in silico synthesis enables quantitative atomistic modeling of mesoporous metallosilicates that matches experimental densitie...