International audienceIn the context of developing safe air transportation, our work is focused on understanding how Reinforcement Learning methods can improve the state of the art in traditional control, in nominal as well as non-nominal cases. The end goal is to train provably safe controllers, by improving both training and verification methods. In this paper, we explore this path for controlling the attitude of a quadcopter: we discuss theoretical as well as practical aspects of training neural nets for controlling a crazyflie 2.0 drone. In particular we describe thoroughly the choices in training algorithms, neural net architecture, hyperparameters, observation space etc. We also discuss the robustness of the obtained controllers, both...
This paper proposes a multipurpose reinforcement learning based low-level multirotor unmanned aerial...
This letter studies aerobatic tic-toc control of quadcopters. Tic-toc control enables rotorcraft to ...
Reinforcement Learning is being increasingly applied to flight control tasks, with the objective of ...
International audienceIn the context of developing safe air transportation, our work is focused on u...
International audienceWe explore the reinforcement learning approach to designing controllers by ext...
Reinforcement Learning (RL) is a learning paradigm where an agent learns a task by trial and error. ...
We present a deep neural net-based controller trained by a model-free reinforcement learning (RL) al...
Machine learning is an ever-expanding field of research with a wide range of potential applications....
Tracking a reference trajectory with a small quadrocopter is a very challenging task. Nowadays the s...
This thesis investigates the possibility of using reinforcement learning (RL) techniques to create a...
The demand of adding fault tolerance to quadcopter control systems has significantly increased with ...
A novel intelligent controller selection method for quadrotor attitude and altitude control is prese...
This research investigates and proposes a new method for obstacle detection and avoidance on quadrot...
Reinforcement learning (RL) enables the autonomous formation of optimal, adaptive control laws for s...
In this paper we apply deep reinforcement learning techniques on a multicopter for learning a stable...
This paper proposes a multipurpose reinforcement learning based low-level multirotor unmanned aerial...
This letter studies aerobatic tic-toc control of quadcopters. Tic-toc control enables rotorcraft to ...
Reinforcement Learning is being increasingly applied to flight control tasks, with the objective of ...
International audienceIn the context of developing safe air transportation, our work is focused on u...
International audienceWe explore the reinforcement learning approach to designing controllers by ext...
Reinforcement Learning (RL) is a learning paradigm where an agent learns a task by trial and error. ...
We present a deep neural net-based controller trained by a model-free reinforcement learning (RL) al...
Machine learning is an ever-expanding field of research with a wide range of potential applications....
Tracking a reference trajectory with a small quadrocopter is a very challenging task. Nowadays the s...
This thesis investigates the possibility of using reinforcement learning (RL) techniques to create a...
The demand of adding fault tolerance to quadcopter control systems has significantly increased with ...
A novel intelligent controller selection method for quadrotor attitude and altitude control is prese...
This research investigates and proposes a new method for obstacle detection and avoidance on quadrot...
Reinforcement learning (RL) enables the autonomous formation of optimal, adaptive control laws for s...
In this paper we apply deep reinforcement learning techniques on a multicopter for learning a stable...
This paper proposes a multipurpose reinforcement learning based low-level multirotor unmanned aerial...
This letter studies aerobatic tic-toc control of quadcopters. Tic-toc control enables rotorcraft to ...
Reinforcement Learning is being increasingly applied to flight control tasks, with the objective of ...