Artículo de revista
Decentralized reinforcement learning applied to mobile robots
Fecha
2017Registro en:
Lecture Notes in Computer Science (LNCS, volume 9776), 2017
16113349
03029743
10.1007/978-3-319-68792-6_31
Autor
Leottau, David L.
Vatsyayan, Aashish
Ruiz del Solar, Javier
Babuška, Robert
Institución
Resumen
In this paper, decentralized reinforcement learning is applied to a control problem with a multidimensional action space. We propose a decentralized reinforcement learning architecture for a mobile robot, where the individual components of the commanded velocity vector are learned in parallel by separate agents. We empirically demonstrate that the decentralized architecture outperforms its centralized counterpart in terms of the learning time, while using less computational resources. The method is validated on two problems: an extended version of the 3-dimensional mountain car, and a ball-pushing behavior performed with a differential-drive robot, which is also tested on a physical setup.