Article ID Journal Published Year Pages File Type
413131 Robotics and Autonomous Systems 2012 8 Pages PDF
Abstract

Reinforcement learning (RL) is a biologically supported learning paradigm, which allows an agent to learn through experience acquired by interaction with its environment. Its potential to learn complex action sequences has been proven for a variety of problems, such as navigation tasks. However, the interactive randomized exploration of the state space, common in reinforcement learning, makes it difficult to be used in real-world scenarios. In this work we describe a novel real-world reinforcement learning method. It uses a supervised reinforcement learning approach combined with Gaussian distributed state activation. We successfully tested this method in two real scenarios of humanoid robot navigation: first, backward movements for docking at a charging station and second, forward movements to prepare grasping. Our approach reduces the required learning steps by more than an order of magnitude, and it is robust and easy to be integrated into conventional RL techniques.

► A real-world reinforcement algorithm based on SARSA is described. ► Supervised example trials are used for off-line reinforcement learning. ► Gaussian distributed state activation elicites a state space reduction effect. ► The approach reduces the required learning steps in an order of magnitude. ► It was successfully tested in two real scenarios of humanoid robot navigation.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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