会议专题

Hybrid Q-learning Algorithm About Cooperation in MAS

In most cases, agent learning tends to be a good method for solving challenging problems in multi-agent System (MAS). Since the learning efficiency is significantly different according to the actions taken by each specific agent, suitable algorithms will play important roles in the answer of the mentioned problems in multi-agent system. Although many related work are addressed to different algorithms of agent learning, few of them could balance efficiency and accuracy. In this paper, a hybrid Q-learning algorithm named CE-NNR which is springed form the CE-Q learning and NNR Q-learning is presented. The algorithm is then well extended to RoboCup soccer simulation system and is proved to be reasonable with the experimental results arranged at the end of this paper.

CE-NNR Q-Learning MAS RoboCup 2D Soccer Simulation

Wei Chen Jing Guo Xiong Li Jie Wang

Automation Faculty,GuangDong University of Technology,GuangZhou,GuangDong510006.China.

国际会议

2009年中国控制与决策会议(2009 Chinese Control and Decision Conference)

广西桂林

英文

3943-3947

2009-06-17(万方平台首次上网日期,不代表论文的发表时间)