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Published in: Neural Computing and Applications 18/2020

18-09-2019 | Extreme Learning Machine and Deep Learning Networks

A machine-learning-enhanced hierarchical multiscale method for bridging from molecular dynamics to continua

Authors: Shaoping Xiao, Renjie Hu, Zhen Li, Siamak Attarian, Kaj-Mikael Björk, Amaury Lendasse

Published in: Neural Computing and Applications | Issue 18/2020

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Abstract

In the community of computational materials science, one of the challenges in hierarchical multiscale modeling is information-passing from one scale to another, especially from the molecular model to the continuum model. A machine-learning-enhanced approach, proposed in this paper, provides an alternative solution. In the developed hierarchical multiscale method, molecular dynamics simulations in the molecular model are conducted first to generate a dataset, which represents physical phenomena at the nanoscale. The dataset is then used to train a material failure/defect classification model and stress regression models. Finally, the well-trained models are implemented in the continuum model to study the mechanical behaviors of materials at the macroscale. Multiscale modeling and simulation of a molecule chain and an aluminum crystalline solid are presented as the applications of the proposed method. In addition to support vector machines, extreme learning machines with single-layer neural networks are employed due to their computational efficiency.

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Metadata
Title
A machine-learning-enhanced hierarchical multiscale method for bridging from molecular dynamics to continua
Authors
Shaoping Xiao
Renjie Hu
Zhen Li
Siamak Attarian
Kaj-Mikael Björk
Amaury Lendasse
Publication date
18-09-2019
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 18/2020
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-019-04480-7

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