Supervised and Unsupervised Machine Learning of Structural Phases of Polymers Adsorbed to Nanowires
ORAL
Abstract
We present our work and findings on identifying configurational phases and structural transitions in a polymer-nanotube composite using a variety of machine learning methods. We employ dimensionality reduction, conventional neural networks, and the confusion method, a more recent neural-network-based approach. We find neural networks are able to reliably recognize all polymer structures that have previously been found in experiment and simulation. Furthermore, we are able to locate boundaries between configurational phases in a way that does not rely on preconceived, ad-hoc order parameters.
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Publication: Supervised and unsupervised machine learning of structural phases of polymers adsorbed to nanowires<br>Quinn Parker, Dilina Perera, Ying Wai Li, and Thomas Vogel<br>Phys. Rev. E 105, 035304 – Published 24 March 2022<br>https://doi.org/10.1103/PhysRevE.105.035304
Presenters
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Thomas Vogel
University of North Georgia
Authors
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Thomas Vogel
University of North Georgia
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Quinn Parker
Georgia Institute of Technology
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Dilina Perera
University of North Georgia
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Ying-Wai Li
Los Alamos National Laboratory