Exploring the necessary complexity of interatomic potentials

Volume: 200, Pages: 110752 - 110752
Published: Dec 1, 2021
Abstract
The application of machine learning models and algorithms towards describing atomic interactions has been a major area of interest in materials simulations in recent years, as machine learning interatomic potentials (MLIPs) are seen as being more flexible and accurate than their classical potential counterparts. This increase in accuracy of MLIPs over classical potentials has come at the cost of significantly increased complexity, leading to...
Paper Details
Title
Exploring the necessary complexity of interatomic potentials
Published Date
Dec 1, 2021
Volume
200
Pages
110752 - 110752
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