Workspace Allocation for Team of Robots with Different Actuation Capabilities

Mert Turanli, H. Temeltas
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引用次数: 2

Abstract

In this paper, the adaptation of multiple agents to actuation performance variations under localization uncertainty is investigated. The agents are modeled as nonholonomic wheeled mobile vehicles and Guaranteed Power Diagrams (GPD or GPVD) are used in order the robots to partition the workspace under the assumption that the locations of the agents are known within uncertainty circles. An online adaptive estimation algorithm is used for each agent to calculate the weight of its GPV-cell. So, the robots accomplish the coverage control to perform a collaborative task by giving larger portions of the workspace to the agents that have better actuation performances and smaller regions to the ones whose performances are worse than the other agents. Simulation results and ROS implementation show the effectiveness of the algorithm.
不同驱动能力机器人团队的工作空间分配
研究了定位不确定条件下多智能体对驱动性能变化的自适应问题。将智能体建模为非完整轮式移动车辆,并采用保证功率图(GPD或GPVD)来实现机器人在不确定圈内已知智能体位置的情况下对工作空间的划分。对每个agent使用在线自适应估计算法来计算其gpv单元的权重。因此,机器人通过将较大的工作空间分配给执行性能较好的智能体,将较小的工作空间分配给执行性能较差的智能体来完成协作任务的覆盖控制。仿真结果和ROS实现验证了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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