Neural-Network-Based Path Planning for a Multirobot System With Moving Obstacles

Howard Li, Simon X. Yang, M. Seto
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引用次数: 91

Abstract

Recently, a coordinated hybrid agent (CHA) framework was proposed for the control of multiagent systems (MASs). It was demonstrated that an intelligent planner can be designed for the CHA framework to automatically generate desired actions for multiple robots in an MAS. However, in previous studies, only static obstacles in the workspace were considered. In this paper, a neural-network-based approach is proposed for a multirobot system with moving obstacles. A biologically inspired neural-network-based intelligent planner is designed for the coordination of MASs. A landscape of the neural activities for all neurons of a CHA agent contains information about the agent's local goal and moving obstacles. The proposed approach is able to plan the paths for multiple robots while avoiding moving obstacles. The proposed approach is simulated using both Matlab and Vortex. The Vortex module executes control commands from the control system module, and provides the outputs describing the vehicle state and terrain information, which are, in turn, used in the control module to produce the control commands. Simulation results show that the developed intelligent planner of the CHA framework can control a large complex system so that coordination among agents can be achieved.
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基于神经网络的移动障碍物多机器人系统路径规划
近年来,针对多智能体系统的控制问题,提出了一种协调混合智能体(CHA)框架。结果表明,可以为CHA框架设计智能规划器,以自动生成MAS中多个机器人所需的动作。然而,在以往的研究中,只考虑了工作空间中的静态障碍物。针对具有移动障碍物的多机器人系统,提出了一种基于神经网络的方法。设计了一种受生物学启发的基于神经网络的智能规划器,用于MASs的协调。CHA代理的所有神经元的神经活动的全景图包含代理的局部目标和移动障碍物的信息。该方法能够在避开移动障碍物的同时为多个机器人规划路径。利用Matlab和Vortex对该方法进行了仿真。Vortex模块执行来自控制系统模块的控制命令,并提供描述车辆状态和地形信息的输出,这些输出又被控制模块用于生成控制命令。仿真结果表明,所开发的CHA框架智能规划器能够控制大型复杂系统,实现智能体之间的协调。
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审稿时长
3 months
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