| Literature DB >> 33220675 |
Zhengyang Zhou1, Chaitanya Joshi2, Ruoshi Liu2, Michael M Norton2, Linnea Lemma2, Zvonimir Dogic3, Michael F Hagan2, Seth Fraden2, Pengyu Hong1.
Abstract
Active nematics are a class of far-from-equilibrium materials characterized by local orientational order of force-generating, anisotropic constitutes. Traditional methods for predicting the dynamics of active nematics rely on hydrodynamic models, which accurately describe idealized flows and many of the steady-state properties, but do not capture certain detailed dynamics of experimental active nematics. We have developed a deep learning approach that uses a Convolutional Long-Short-Term-Memory (ConvLSTM) algorithm to automatically learn and forecast the dynamics of active nematics. We demonstrate our purely data-driven approach on experiments of 2D unconfined active nematics of extensile microtubule bundles, as well as on data from numerical simulations of active nematics.Year: 2020 PMID: 33220675 DOI: 10.1039/d0sm01316a
Source DB: PubMed Journal: Soft Matter ISSN: 1744-683X Impact factor: 3.679