International audienceDeep reinforcement learning (DRL) is applied to control a nonlinear, chaotic system governed by the one-dimensional KuramotoâSivashinsky (KS) equation. DRL uses reinforcement learning principles for the determination of optimal control solutions and deep neural networks for approximating the value function and the control policy. Recent applications have shown that DRL may achieve superhuman performance in complex cognitive tasks. In this work, we show that using restricted localized actuation, partial knowledge of the state based on limited sensor measurements and model-free DRL controllers, it is possible to stabilize the dynamics of the KS system around its unstable fixed solutions, here considered as target state...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
Controlling nonlinear dynamics is a long-standing problem in engineering. Harnessing known physical ...
International audiencenstabilities arise in a number of flow configurations. One such manifestation ...
Deep Reinforcement Learning (DRL) is applied to control a nonlinear, chaotic system governed by the ...
Abstract Controlling nonlinear dynamical systems is a central task in many different areas of scienc...
We explore combining reinforcement learning with a hand-crafted local controller in a manner suggest...
We explore combining reinforcement learning with a hand-crafted local controller in a man-ner sugges...
Reinforcement learning (RL) offers powerful algorithms to search for optimal controllers of systems ...
We apply deep reinforcement learning (DRL) to reduce and increase the drag of a 2-dimensional wake f...
We explore combining reinforcement learning with a hand-crafted local controller in a manner suggest...
Controlling nonlinear dynamical systems is a central task in many different areas of science and en...
With precise knowledge of the rules which govern a deterministic chaotic system, it is possible to i...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
Controlling nonlinear dynamics is a long-standing problem in engineering. Harnessing known physical ...
International audiencenstabilities arise in a number of flow configurations. One such manifestation ...
Deep Reinforcement Learning (DRL) is applied to control a nonlinear, chaotic system governed by the ...
Abstract Controlling nonlinear dynamical systems is a central task in many different areas of scienc...
We explore combining reinforcement learning with a hand-crafted local controller in a manner suggest...
We explore combining reinforcement learning with a hand-crafted local controller in a man-ner sugges...
Reinforcement learning (RL) offers powerful algorithms to search for optimal controllers of systems ...
We apply deep reinforcement learning (DRL) to reduce and increase the drag of a 2-dimensional wake f...
We explore combining reinforcement learning with a hand-crafted local controller in a manner suggest...
Controlling nonlinear dynamical systems is a central task in many different areas of science and en...
With precise knowledge of the rules which govern a deterministic chaotic system, it is possible to i...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
Controlling nonlinear dynamics is a long-standing problem in engineering. Harnessing known physical ...
International audiencenstabilities arise in a number of flow configurations. One such manifestation ...