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Multi-Agent Reinforcement Learning Using Linear Fuzzy Model Applied to Cooperative Mobile Robots

David Luviano‐Cruz, Francesco Luna, Luis Asunción Pérez-Domínguez, Suresh Kumar Gadi

Year
2018
Citations
13
Access
Open access

Abstract

A multi-agent system (MAS) is suitable for addressing tasks in a variety of domains without any programmed behaviors, which makes it ideal for the problems associated with the mobile robots. Reinforcement learning (RL) is a successful approach used in the MASs to acquire new behaviors; most of these select exact Q-values in small discrete state space and action space. This article presents a joint Q-function linearly fuzzified for a MAS’ continuous state space, which overcomes the dimensionality problem. Also, this article gives a proof for the convergence and existence of the solution proposed by the algorithm presented. This article also discusses the numerical simulations and experimental results that were carried out to validate the proposed algorithm.

Keywords

Reinforcement learningConvergence (economics)Computer scienceCurse of dimensionalityIdeal (ethics)Variety (cybernetics)Mobile robotRobotState spaceSpace (punctuation)

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