Robotic agent control combining reactive and learning capabilities
暂无分享,去创建一个
This paper presents the concept of an autonomous robotic agent combining reactive and machine learning-based algorithms. The focus is on the machine learning-based part that we implement by neural networks. A method for reducing the environment state space to a smaller conceptual world space is given. We then show how the concept of "lifelong learning" can be implemented by neural networks in a robotic action planner.
[1] Sebastian Thrun,et al. A Lifelong Learning Perspective for Mobile Robot Control , 1994, IROS.
[2] Witold Jacak,et al. Hybrid Evolutionary Programming: the Tools for CAST , 1995, EUROCAST.
[3] Sebastian Thrun,et al. Integrating Inductive Neural Network Learning and Explanation-Based Learning , 1993, IJCAI.
[4] Bo Zhang,et al. Control of robotic manipulators using a CMAC-based reinforcement learning system , 1994, Proceedings of IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS'94).