This paper considers the issues of efficiency and autonomy that are required to make reinforcement learning suitable for real-life control tasks. A real-time reinforcement learning algorithm is presented that repeatedly adjusts the control policy with the use of previously collected samples, and autonomously estimates the appropriate step-sizes for the learning updates. The algorithm is based on the actor-critic with experience replay whose step-sizes are determined on-line by an enhanced fixed point algorithm for on-line neural network training. An experimental study with simulated octopus arm and half-cheetah demonstrates the feasibility of the proposed algorithm to solve difficult learning control problems in an autonomous way within rea...
We propose a learning architecture, that is able to do reinforcement learning based on raw visual in...
The traditional robotic arm control methods are often based on artificially preset fixed trajectorie...
Following the principle of human skill learning, robot acquiring skill is a process similar to human...
AbstractThis paper demonstrates application of Reinforcement Learning to optimization of control of ...
Classical control theory requires a model to be derived for a system, before any control design can ...
Learning control involves modifying a controller\u27s behavior to improve its performance as measure...
Reinforcement learning has been used widely for autonomous longitudinal control algorithms. However,...
This paper describes work in progress on a neural-based reinforcement learning architecture for the ...
In the ¯eld of machine learning, reinforcement learning constitutes the idea of enabling machines to...
In this work, a novel reinforcement learning algorithm, Stimulus Action Reward Network (SARN), is de...
Behavioral control has been an effective method for controlling low-level motion for autonomous agen...
Temporal difference reinforcement learning algorithms are perfectly suited to autonomous agents beca...
Reinforcement Learning (RL) based control algorithms can learn the control strategies for nonlinear ...
This is the author accepted manuscript. The final version is available from the Institute of Electri...
Using reinforcement learning as a part of a Guidance, Navigation and Control (GNC) system is a relat...
We propose a learning architecture, that is able to do reinforcement learning based on raw visual in...
The traditional robotic arm control methods are often based on artificially preset fixed trajectorie...
Following the principle of human skill learning, robot acquiring skill is a process similar to human...
AbstractThis paper demonstrates application of Reinforcement Learning to optimization of control of ...
Classical control theory requires a model to be derived for a system, before any control design can ...
Learning control involves modifying a controller\u27s behavior to improve its performance as measure...
Reinforcement learning has been used widely for autonomous longitudinal control algorithms. However,...
This paper describes work in progress on a neural-based reinforcement learning architecture for the ...
In the ¯eld of machine learning, reinforcement learning constitutes the idea of enabling machines to...
In this work, a novel reinforcement learning algorithm, Stimulus Action Reward Network (SARN), is de...
Behavioral control has been an effective method for controlling low-level motion for autonomous agen...
Temporal difference reinforcement learning algorithms are perfectly suited to autonomous agents beca...
Reinforcement Learning (RL) based control algorithms can learn the control strategies for nonlinear ...
This is the author accepted manuscript. The final version is available from the Institute of Electri...
Using reinforcement learning as a part of a Guidance, Navigation and Control (GNC) system is a relat...
We propose a learning architecture, that is able to do reinforcement learning based on raw visual in...
The traditional robotic arm control methods are often based on artificially preset fixed trajectorie...
Following the principle of human skill learning, robot acquiring skill is a process similar to human...