Abstract Background and problem statement Model-free or learning-based control, in particular, reinforcement learning (RL), is expected to be applied for complex robotic tasks. Traditional RL requires that a policy to be optimized is state-dependent, that means, the policy is a kind of feedback (FB) controllers. Due to the necessity of correct state observation in such a FB controller, it is sensitive to sensing failures. To alleviate this drawback of the FB controllers, feedback error learning integrates one of them with a feedforward (FF) controller. RL can be improved by dealing with the FB/FF policies, but to the best of our knowledge, a methodology for learning them in a unified manner has not been developed. Contribution In this paper...
Decision making under uncertainty is an important problem in engineering that is traditionally appro...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
Abstract | Many control problems in the robotics eld can be cast as Partially Observed Markovian Dec...
Reinforcement learning (RL) is promising for complicated stochastic nonlinear control problems. With...
Reinforcement learning (RL) and trajectory optimization (TO) present strong complementary advantages...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
Data-driven approaches to the design of control policies for robotic systems have the potential to r...
In robotics, elementary behaviour patterns often tackle control theoretic problems. Because of incom...
In this thesis we deal with the problem of using deep reinforcement learning to generate robust poli...
While operational space control is of essential importance for robotics and well-understood from an ...
We consider the problem of optimization in policy space for reinforcement learning. While a plethora...
Abstract — For controlling high-dimensional robots, most stochastic optimal control algorithms use a...
Abstract | Many control problems in the robotics eld can be cast as Partially Observed Markovian Dec...
Trajectory-Centric Reinforcement Learning and Trajectory Optimization methods optimize a sequence of...
Reinforcement learning (RL) and trajectory optimization (TO) present strong complementary advantages...
Decision making under uncertainty is an important problem in engineering that is traditionally appro...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
Abstract | Many control problems in the robotics eld can be cast as Partially Observed Markovian Dec...
Reinforcement learning (RL) is promising for complicated stochastic nonlinear control problems. With...
Reinforcement learning (RL) and trajectory optimization (TO) present strong complementary advantages...
Recent advances in machine learning, simulation, algorithm design, and computer hardware have allowe...
Data-driven approaches to the design of control policies for robotic systems have the potential to r...
In robotics, elementary behaviour patterns often tackle control theoretic problems. Because of incom...
In this thesis we deal with the problem of using deep reinforcement learning to generate robust poli...
While operational space control is of essential importance for robotics and well-understood from an ...
We consider the problem of optimization in policy space for reinforcement learning. While a plethora...
Abstract — For controlling high-dimensional robots, most stochastic optimal control algorithms use a...
Abstract | Many control problems in the robotics eld can be cast as Partially Observed Markovian Dec...
Trajectory-Centric Reinforcement Learning and Trajectory Optimization methods optimize a sequence of...
Reinforcement learning (RL) and trajectory optimization (TO) present strong complementary advantages...
Decision making under uncertainty is an important problem in engineering that is traditionally appro...
An adaptive learning control scheme is presented for uncertain robotic systems that is capable of tr...
Abstract | Many control problems in the robotics eld can be cast as Partially Observed Markovian Dec...