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Recent advances in applying deep reinforcement learning for flow control: Perspectives and future directions
Deep reinforcement learning (DRL) has been applied to a variety of problems during the
past decade and has provided effective control strategies in high-dimensional and non …
past decade and has provided effective control strategies in high-dimensional and non …
Closed-loop turbulence control: Progress and challenges
Closed-loop turbulence control is a critical enabler of aerodynamic drag reduction, lift
increase, mixing enhancement, and noise reduction. Current and future applications have …
increase, mixing enhancement, and noise reduction. Current and future applications have …
[KNJIGA][B] Data-driven science and engineering: Machine learning, dynamical systems, and control
SL Brunton, JN Kutz - 2022 - books.google.com
Data-driven discovery is revolutionizing how we model, predict, and control complex
systems. Now with Python and MATLAB®, this textbook trains mathematical scientists and …
systems. Now with Python and MATLAB®, this textbook trains mathematical scientists and …
Artificial neural networks trained through deep reinforcement learning discover control strategies for active flow control
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 …
reinforcement learning agent to perform active flow control. It is shown that, in a two …
Robust active flow control over a range of Reynolds numbers using an artificial neural network trained through deep reinforcement learning
This paper focuses on the active flow control of a computational fluid dynamics simulation
over a range of Reynolds numbers using deep reinforcement learning (DRL). More …
over a range of Reynolds numbers using deep reinforcement learning (DRL). More …
Predictions of turbulent shear flows using deep neural networks
In the present work, we assess the capabilities of neural networks to predict temporally
evolving turbulent flows. In particular, we use the nine-equation shear flow model by Moehlis …
evolving turbulent flows. In particular, we use the nine-equation shear flow model by Moehlis …
[KNJIGA][B] Machine learning control-taming nonlinear dynamics and turbulence
This book is an introduction to machine learning control (MLC), a surprisingly simple model-
free methodology to tame complex nonlinear systems. These systems are assumed to be …
free methodology to tame complex nonlinear systems. These systems are assumed to be …
Application of convolutional neural network to predict airfoil lift coefficient
I. Nomenclature α, AoA= angle of attack ρ= raw pixel density ρ= pixel density c= chord length
Cl= sectional lift coefficient CFD= computational fluid dynamics CNN= convolutinal neural …
Cl= sectional lift coefficient CFD= computational fluid dynamics CNN= convolutinal neural …
Applying deep reinforcement learning to active flow control in weakly turbulent conditions
Machine learning has recently become a promising technique in fluid mechanics, especially
for active flow control (AFC) applications. A recent work [Rabault et al., J. Fluid Mech. 865 …
for active flow control (AFC) applications. A recent work [Rabault et al., J. Fluid Mech. 865 …
Accelerating deep reinforcement learning strategies of flow control through a multi-environment approach
Deep Reinforcement Learning (DRL) has recently been proposed as a methodology to
discover complex active flow control strategies [Rabault et al.,“Artificial neural networks …
discover complex active flow control strategies [Rabault et al.,“Artificial neural networks …