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Multiple Task Assignment and Path Planning of a Multiple Unmanned Surface Vehicles System Based on Improved Self-Organizing Mapping and Improved Genetic Algorithm

机译:基于改进的自组织映射和改进的遗传算法的多无人面车辆系统多任务分配和路径规划

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摘要

This paper addresses multiple task assignment and path-planning problems for a multiple unmanned surface vehicle (USVs) system. Since it is difficult to solve multi-task allocation and path planning together, we divide them into two sub-problems, multiple task allocation and path planning, and study them separately. First, to resolve the multi-task assignment problem, an improved self-organizing mapping (ISOM) is proposed. The method can allocate all tasks in the mission area, and obtain the set of task nodes that each USV needs to access. Second, aiming at the path planning of the USV accessing the task nodes, an improved genetic algorithm (IGA) with the shortest path is proposed. To avoid USV collision during navigation, an artificial potential field function (APFF) is proposed. A multiple USV system with multi-task allocation and path planning is simulated. Simulation results verify the effectiveness of the proposed algorithms.
机译:本文为多个无人曲面车辆(USV)系统提供了多个任务分配和路径规划问题。由于很难解决多任务分配和路径规划,我们将它们分为两个子问题,多个任务分配和路径规划,并单独研究它们。首先,要解决多任务分配问题,提出了改进的自组织映射(ISOM)。该方法可以分配任务区域中的所有任务,并获取每个USV需要访问的一组任务节点。其次,针对USV的路径规划访问任务节点,提出了一种改进具有最短路径的遗传算法(IGA)。为了避免导航期间的USV碰撞,提出了一种人工潜在的潜在场功能(APFF)。模拟具有多任务分配和路径规划的多USV系统。仿真结果验证了所提出的算法的有效性。

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