Bulletin of the American Physical Society
71st Annual Meeting of the APS Division of Fluid Dynamics
Volume 63, Number 13
Sunday–Tuesday, November 18–20, 2018; Atlanta, Georgia
Session F39: Turbulence: General I
8:00 AM–10:10 AM,
Monday, November 19, 2018
Georgia World Congress Center
Room: Ballroom 3/4
Chair: Gregory Bewley, Cornell University
Abstract ID: BAPS.2018.DFD.F39.6
Abstract: F39.00006 : Deep learning of turbulent velocity signals
9:05 AM–9:18 AM
Presenter:
Alessandro Corbetta
(Eindhoven Univ of Tech)
Authors:
Alessandro Corbetta
(Eindhoven Univ of Tech)
Roberto Benzi
(Univ of Rome Tor Vergata)
Vlado Menkovski
(Eindhoven Univ of Tech)
Federico Toschi
(Eindhoven Univ of Tech)
We consider turbulent velocity signals, spanning decades in Reynolds numbers, which have been generated via shell models for the turbulent energy cascade. Given the multi-scale nature of the turbulent signals, we focus on the fundamental question of whether a deep neural network (DNN) is capable of learning, after supervised training with very high statistics, feature extractors to address and distinguish intermittent and multi-scale signals. Can the DNN measure the Reynolds number of the signals? Which feature is the DNN learning?
To cite this abstract, use the following reference: http://meetings.aps.org/link/BAPS.2018.DFD.F39.6
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