机器人路由采用基于聚类的并行遗传算法进行迁移

Ko-Ming Chiu, Jing-Sin Liu
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引用次数: 16

摘要

无线传感器网络(WSN)技术广泛应用于环境监测、卫生保健、监视系统和无人空间或行星探测等领域。本文主要研究无线传感器网络中移动机器人收集数据的路由问题,也称为带邻域的旅行推销员问题(TSPN)或np困难问题。本文提出了一种基于聚类的并行迁移遗传算法(CBPGA),使移动机器人能够收集所有传感器的所有数据,从而明显降低了移动机器人的出行成本。首先,采用聚类算法有效地减少了访问节点的数量,特别是在传感器分布密集或传感半径较大的情况下。其次,利用染色体生成算法(CGA)将访问节点集编码为染色体,并采用带迁移的主从并行遗传算法更有效地生成近最优路径。最后,采用减少差旅费用的办法来消除多余的差旅费用。仿真结果表明,基于聚类的带迁移的并行遗传算法在具有WSN的机器人路由问题中能够更有效地生成接近最优的路径,从而降低了移动机器人的出行成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robot routing using clustering-based parallel genetic algorithm with migration
Wireless sensor network (WSN) technology is widely used in environment monitoring, health care, surveillance systems and unmanned space or planet exploration. This paper focuses on routing problems with data gathering by a mobile robot in a WSN, also referred to as a Traveling Salesman Problem with Neighborhoods (TSPN) or NP-hard problem. In this paper, we propose a clustering-based parallel genetic algorithm with migration (CBPGA), so that the mobile robot can gather all data from all sensors and the travel costs of the mobile robot clearly decrease. First, a clustering algorithm is used to effectively reduce the number of visited nodes, especially in situations with dense sensor distributions or large sensing radii. Next, the set of visited nodes is encoded as chromosomes by a chromosome generation algorithm (CGA), and the master-slave parallel genetic algorithm with migration is performed to more efficiently generate the near-optimal route. Lastly, a travel cost-reduction scheme is used to remove redundant travel costs. Simulation results confirm that the clustering-based parallel genetic algorithm with migration more efficiently generates a near-optimal route that reduces the travel costs of a mobile robot in robot routing problems with WSN.
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