Artificial neural networks trained through deep reinforcement learning discover control strategies for active flow control
University of Oslo · Centre de Mise en Forme des Matériaux · +1 more institution
Abstract
We present the first application of an artificial neural network trained through a deep reinforcement learning agent to perform active flow control. It is shown that, in a two-dimensional simulation of the Kármán vortex street at moderate Reynolds number ( $Re=100$ ), our artificial neural network is able to learn an active control strategy from experimenting with the mass flow rates of two jets on the sides of a cylinder. By interacting with the unsteady wake, the artificial neural network successfully stabilizes the vortex alley and reduces drag by approximately 8 %. This is performed while using small mass flow rates for the actuation, of the order of 0.5 % of the mass flow rate intersecting the cylinder…
Citation impact
- FWCI
- 24.93
- Percentile
- 100%
- References
- 52
Authors
5- JRJean RabaultCorresponding
University of Oslo
- MKMiroslav Kuchta
University of Oslo
- AJAtle Jensen
University of Oslo
- URUlysse Réglade
University of Oslo, Centre de Mise en Forme des Matériaux, École Nationale Supérieure des Mines de Paris
- NCNicolas Cerardi
University of Oslo, Centre de Mise en Forme des Matériaux, École Nationale Supérieure des Mines de Paris
Topics & keywords
- Artificial neural network
- Reynolds number
- Vortex shedding
- Flow control (data)
- Reinforcement learning
- Vortex
- Drag
- Flow (mathematics)
- Sustainable cities and communities