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引用次数: 6
摘要
提出了一种支持移动机器人在未知动态环境下运动规划的智能混合系统。该系统称为fuzzy - marcoplan (fuzzy - multiagent Remote Control motion Planning),通过引入子目标和基于模糊推理的多智能体协作来优化路径。实际上,我们建议对机器人的周边区域进行代理;这些区域代理为吸引子目标而竞争。规划代理通过基于模糊规则的系统来决定要达到的最佳子目标。在多智能体平台MadKit下随机生成的几种导航环境中对Fuzzy-MARCoPlan进行了仿真和测试。这些测试证实了所提出系统在动态环境中路径最优性方面的鲁棒性。研究结果进一步证明了混合模糊推理的多智能体规划方法在移动机器人运动规划中的优越性。
Hybrid Fuzzy-MutiAgent planning for robust mobile robot motion
This paper presents an intelligent hybrid system to support the planning for a mobile robot motion in unknown and dynamic environment. Called Fuzzy-MARCoPlan (Fuzzy-MultiAgent Remote Control motion Planning), this system optimizes the path by the introduction of sub-goals and through a multiagent cooperation based on fuzzy reasoning. In fact, we propose to agentify the surrounding zones of the robot; these zone agents compete for attracting the sub-goal. A planning agent, fortified with a fuzzy rule based system, decides on the best sub-goal to reach. Fuzzy-MARCoPlan is simulated and tested on several navigation environments which are generated randomly under the multiagent platform MadKit. These tests confirm the robustness of the proposed system in terms of path optimality in a dynamic environment. Moreover, the obtained results reinforce the advantage of a multiagent planning hybridized with fuzzy reasoning for mobile robot motion planning.