KARA Lab at OSU
KARA Lab at OSU
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Investigation of Airflow around Buildings using Large Eddy Simulations for Unmanned Air Systems Applications
We use Large-Eddy Simulation to understand the unsteady and highly coherent turbulent flow structures produced by buildings in neutral atmospheric boundary layer flow. Furthermore, we demonstrate a non-intrusive machine learning methodology to predict flow fields to augment safe wind-aware navigation systems for Unmanned Aerial Vehicles as a first step toward safely integrating UAS into existing aerial infrastructure.
Tyler Landua
,
Rohit Vuppala
,
Kursat Kara
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Realistic Wind Data Generation for Small Unmanned Air Systems in Urban Environment using Convolutional Autoencoders
We attempt to create accurate wind data for an urban environment using high-fidelity CFD data from Large Eddy Simulations (LES) and Convolutional Auto-Encoders (CAE) for non-linear surrogate modeling. The non-linear surrogate model extracts underlying non-linear modes from the high-resolution data snapshots, and the LSTM network trains on these specific modes.
Rohit Vuppala
,
Kursat Kara
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A Novel Approach in Realistic Wind Data Generation for The Safe Operation of Small Unmanned Aerial Systems in Urban Environment
A single building setup in neutral atmospheric conditions is considered a test case to demonstrate the method. The method relies on using Large Eddy Simulation data from a computational fluid dynamics simulation and a non-intrusive Reduced Order Modeling approach (ROM) coupled with Recurrent Neural Networks like Long Short Term Memory (LSTM).
Rohit Vuppala
,
Kursat Kara
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Hover Predictions Using a High-Order Discontinuous Galerkin Off-Body Discretization
The hover performance of a four-bladed Sikorsky S-76 rotor is studied using a high-order discontinuous Galerkin (DG) off-body discretization.
Kursat Kara
,
Andrew C. Kirby
,
Dimitri J. Mavriplis
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