一种基于聚类的蚁群移动机器人目标搜索方法

V. Sahare, N. Sahare, N. Sahare
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引用次数: 6

摘要

本文提出了移动机器人的聚类算法和蚁群优化算法。本文介绍了一种新型移动机器人的分析与设计。这些小型机器人的目的是简单和廉价,并且所有的机器人在物理上都是相同的,从而构成一个同质的机器人团队。他们从他们的团队行动、执行物理任务和作为一个协调的团队做出合作决策中获得有用性。为了提高聚类的性能,采用基于启发式概念的方法进行全局搜索。聚类算法的主要优点在于不需要额外的信息,例如数据的初始分区或聚类的数量。由于所提出的方法非常高效,因此可以非常快速地使用聚类进行对象查找。在此过程中,我们首先利用蚁群算法求出最短的障碍物距离,这是一种处理任意形状障碍物的有效方法
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An Approach Based on Clustering Method for Object Finding Mobile Robots Using ACO
In this paper, we propose Clustering method and Ant Colony Optimization (ACO) for mobile robot. This paper describes the analysis and design of a new class of mobile robots. These small robots are intended to be simple and inexpensive, and will all be physically identical, thus constituting a homogeneous team of robots. They derive their usefulness from their group actions, performing physical tasks and making cooperative decisions as a Coordinated Team. To improve the performance of clustering, the method based on heuristic concept is used to obtain global search. The main advantage of clustering algorithm lies in the fact that no additional information, such as an initial partitioning of the data or the number of clusters, is needed. Since the proposed method is very efficient, thus it can perform object finding using clustering very quickly. In the process of doing so, we first use ACO to obtain the shortest obstructed distance, which is an effective method for arbitrary shape obstacles
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