Mendoza Leonardo Forero, Vellasco Marley, Figueiredo Karla
Electrical Engineering Department, Pontifical Catholic University of Rio de Janeiro (PUC-Rio), Rua Marquês de São Vicente, 225, Gávea, Rio de Janeiro - RJ, Brazil.
Int J Neural Syst. 2014 Dec;24(8):1450031. doi: 10.1142/S0129065714500312. Epub 2014 Nov 18.
This paper presents the research and development of two hybrid neuro-fuzzy models for the hierarchical coordination of multiple intelligent agents. The main objective of the models is to have multiple agents interact intelligently with each other in complex systems. We developed two new models of coordination for intelligent multiagent systems, which integrates the Reinforcement Learning Hierarchical Neuro-Fuzzy model with two proposed coordination mechanisms: the MultiAgent Reinforcement Learning Hierarchical Neuro-Fuzzy with a market-driven coordination mechanism (MA-RL-HNFP-MD) and the MultiAgent Reinforcement Learning Hierarchical Neuro-Fuzzy with graph coordination (MA-RL-HNFP-CG). In order to evaluate the proposed models and verify the contribution of the proposed coordination mechanisms, two multiagent benchmark applications were developed: the pursuit game and the robot soccer simulation. The results obtained demonstrated that the proposed coordination mechanisms greatly improve the performance of the multiagent system when compared with other strategies.
本文介绍了用于多个智能体分层协调的两种混合神经模糊模型的研究与开发。这些模型的主要目标是使多个智能体在复杂系统中相互进行智能交互。我们为智能多智能体系统开发了两种新的协调模型,它们将强化学习分层神经模糊模型与两种提出的协调机制相结合:具有市场驱动协调机制的多智能体强化学习分层神经模糊模型(MA-RL-HNFP-MD)和具有图形协调的多智能体强化学习分层神经模糊模型(MA-RL-HNFP-CG)。为了评估所提出的模型并验证所提出的协调机制的作用,开发了两个多智能体基准应用:追逐游戏和机器人足球模拟。所获得的结果表明,与其他策略相比,所提出的协调机制极大地提高了多智能体系统的性能。