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Predicting Melt Properties Using Atomistic Simulations With A Highly Accurate Physically Informed Neural Network Interatomic PotentialThe use of a recently developed machine learning (ML) interatomic potential for molecular dynamics simulations of aluminum melt properties will be presented. Such properties are critical for process modeling in additive manufacturing, including the melt pool size, solidification, and formation of solidification microstructures. Direct first-principles modeling of these processes is computationally prohibitive whereas simulations employing ML potentials combine the high accuracy of quantum-mechanical methods with high computational speeds. The physically-informed neural network (PINN) method used herein, integrates a high-dimensional regression implemented by an artificial neural network with a physics-based bond-order interatomic potential. PINN potentials can accurately reproduce many properties of aluminum in both crystalline-solid and liquid phases. We examine the accuracy of a PINN Al potential in predicting the density, self-diffusivity, viscosity, and the tension of the liquid surface and liquid-solid interfaces. Comparison with experimental data and ab initio molecular dynamics calculations shows very good agreement for all properties tested.
Document ID
20230011347
Acquisition Source
Langley Research Center
Document Type
Presentation
Authors
V I Yamakov
(Analytical Mechanics Associates (United States) Hampton, Virginia, United States)
E H Glaessgen
(Langley Research Center Hampton, Virginia, United States)
Y Mishin
(George Mason University Fairfax, Virginia, United States)
Date Acquired
August 1, 2023
Subject Category
Atomic and Molecular Physics
Meeting Information
Meeting: Inaugural Summit on Integrated Computational Materials Engineering (ICME) for Defense
Location: Bethesda, MD
Country: US
Start Date: August 21, 2023
End Date: August 23, 2023
Sponsors: United States Naval Research Laboratory
Funding Number(s)
WBS: 698259.02.07.07.03.01
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
NASA Technical Management
Keywords
molecular dynamics
interatomic potentials
aluminum
artificial neural networks
machine learning
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