Simulation of atmospheric turbulence with generative machine learning models
ORAL
Abstract
The Large Eddy Simulation (LES) modeling of turbulence effects are computationally expensive even when not all scales are resolved, especially in the presence of deep turbulence effects in the atmosphere. Machine learning techniques provide a novel way to propagate the effects from inner- to outer-scale in atmospheric turbulence spectrum and to accelerate its characterization on long-distance laser propagation. We simulated the turbulent flow of atmospheric air in an idealized box with a temperature difference between the lower and upper surfaces of 10 degrees Celsius with the LES method. The volume was voxelized and several quantities such as the velocity and the pressure were obtained at regularly-spaced grid points. These values were binned and converted into symbols that were concatenated along the length of the box to create a ‘text’ that was used to train a long short-term memory (LSTM) neural network and a naïve Bayes model. LSTMs are used in speech recognition and handwriting recognition tasks and naïve Bayes is used extensively in text categorization. The trained LSTM and the naïve Bayes models were used to generate instances of turbulent-like flows.
–
Presenters
-
Arturo Rodriguez
University of Texas, El Paso
Authors
-
Arturo Rodriguez
University of Texas, El Paso
-
Carlos R Cuellar
University of Texas, El Paso
-
Luis Fernando Rodriguez
University of Texas, El Paso
-
Armando Garcia
University of Texas, El Paso
-
Jose Terrazas
University of Texas, El Paso
-
VM Krushnarao Kotteda
The University of Wyoming
-
Rao Gudimetla
Air Force Research Laboratory, Air Force Research Lab
-
Vinod Kumar
University of Texas, El Paso
-
Jorge Munoz
University of Texas, El Paso