High-dimensional potential energy surfaces for molecular simulations: from empiricism to machine learning

Unke, Oliver T and Koner, Debasish and Patra, Sarbani and Käser, Silvan and Meuwly, Markus (2020) High-dimensional potential energy surfaces for molecular simulations: from empiricism to machine learning. Machine Learning: Science and Technology, 1 (1). 013001. ISSN 2632-2153

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Abstract

An overview of computational methods to describe high-dimensional potential energy surfaces suitable for atomistic simulations is given. Particular emphasis is put on accuracy, computability, transferability and extensibility of the methods discussed. They include empirical force fields, representations based on reproducing kernels, using permutationally invariant polynomials, neural network-learned representations and combinations thereof. Future directions and potential improvements are discussed primarily from a practical, application-oriented perspective.

Item Type: Article
Subjects: STM Library Press > Multidisciplinary
Depositing User: Unnamed user with email support@stmlibrarypress.com
Date Deposited: 29 Jun 2023 04:20
Last Modified: 04 Jun 2024 11:12
URI: http://journal.scienceopenlibraries.com/id/eprint/1682

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