Multi-Robot Task Allocation Framework with Integrated Risk-Aware 3D Path Planning

Yifan Bai, B. Lindqvist, Stefan Karlsson, C. Kanellakis, G. Nikolakopoulos
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Abstract

This article presents an overall system architecture for multi-robot coordination in a known environment. The proposed framework is structured around a task allocation mechanism that performs unlabeled multi-robot path assignment informed by 3D path planning, while using a nonlinear model predictive control(NMPC) for each unmanned aerial vehicle (UAV) to navigate along its assigned path. More specifically, at first a risk aware 3D path planner $D_ + ^{\ast}$ is applied to calculate cost between each UAV agent and each target point. Then the cost matrix related to the computed trajectories to each goal is fed into the Hungarian Algorithm that solves the assignment problem and generates the minimum total cost. NMPC is implemented to control the UAV while satisfying path following and input constraints. We evaluate the proposed architecture in Gazebo simulation framework and the result indicates UAVs are capable of approaching their assigned target whilst avoiding collisions.
集成风险感知三维路径规划的多机器人任务分配框架
本文提出了一个在已知环境下多机器人协调的整体系统架构。所提出的框架围绕任务分配机制构建,该机制根据3D路径规划执行未标记的多机器人路径分配,同时使用非线性模型预测控制(NMPC)让每个无人机(UAV)沿着指定的路径导航。具体而言,首先使用具有风险意识的3D路径规划器$D_ + ^{\ast}$计算每个无人机agent与每个目标点之间的成本。然后将计算得到的到每个目标的轨迹的代价矩阵输入匈牙利算法,求解分配问题并生成最小的总代价。在满足路径跟踪和输入约束的情况下,实现了NMPC对无人机的控制。我们在Gazebo仿真框架中评估了所提出的架构,结果表明无人机能够在避免碰撞的同时接近指定目标。
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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