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An Application of Self-Organizing Map for Multirobot Multigoal Path Planning with Minmax Objective

机译:自组织映射在具有Minmax目标的多机器人多目标路径规划中的应用

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摘要

In this paper, Self-Organizing Map (SOM) for the Multiple Traveling Salesman Problem (MTSP) with minmax objective is applied to the robotic problem of multigoal path planning in the polygonal domain. The main difficulty of such SOM deployment is determination of collision-free paths among obstacles that is required to evaluate the neuron-city distances in the winner selection phase of unsupervised learning. Moreover, a collision-free path is also needed in the adaptation phase, where neurons are adapted towards the presented input signal (city) to the network. Simple approximations of the shortest path are utilized to address this issue and solve the robotic MTSP by SOM. Suitability of the proposed approximations is verified in the context of cooperative inspection, where cities represent sensing locations that guarantee to “see” the whole robots' workspace. The inspection task formulated as the MTSP-Minmax is solved by the proposed SOM approach and compared with the combinatorial heuristic GENIUS. The results indicate that the proposed approach provides competitive results to GENIUS and support applicability of SOM for robotic multigoal path planning with a group of cooperating mobile robots. The proposed combination of approximate shortest paths with unsupervised learning opens further applications of SOM in the field of robotic planning.
机译:本文将具有最小最大目标的多重旅行商问题(MTSP)的自组织图(SOM)应用于多边形域中多目标路径规划的机器人问题。这种SOM部署的主要困难是确定障碍物之间的无碰撞路径,这是在无监督学习的获胜者选择阶段评估神经元城市距离所需的。此外,在适应阶段还需要无冲突的路径,在该阶段,神经元将适应网络的输入信号(城市)。利用最短路径的简单近似来解决此问题,并通过SOM解决机器人MTSP。在合作检查的背景下验证了所提议近似值的适用性,在该检查中,城市代表传感位置,可以保证“看到”整个机器人的工作空间。通过提出的SOM方法解决了制定为MTSP-Minmax的检查任务,并将其与组合启发式GENIUS进行了比较。结果表明,所提出的方法为GENIUS提供了竞争性结果,并支持SOM与一组协作的移动机器人进行机器人多目标路径规划。拟议的近似最短路径与无监督学习的结合打开了SOM在机器人规划领域的进一步应用。

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