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Extracting functional subgroups from an evolutionary robotic swarm by identifying the community structure

机译:通过识别社区结构从进化机器人群中提取功能子组

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Robotic swarms solve a given task by developing highly complex adaptive behaviors that exploit their extremely large redundancy. Although a robotic swarm is homogeneous and has the same control architecture, it is not so easy to develop an appropriate collective behavior that poses several challenges. Even when a robotic swarm succeeds in developing a meaningful collective behavior, it still faces difficulty in explaining why it succeeds in performing a given task. In this paper, we aim in providing an explanation of this highly redundant but meaningful behavior by visualizing the emerged autonomous task allocation. We propose a method for analyzing their complex collective behavior that utilizes techniques adopted from the domain of complex networks. First, a robotic swarm is translated into a directed weighted complex network. Next, we define modularity and divide the robotic swarm into subgroups with maximal values. Finally, we demonstrate the emerged allocation of tasks to each subgroup from a macroscopic viewpoint.
机译:机器人群通过开发高度复杂的自适应行为来解决剥削其极大冗余的高度复杂的自适应行为。虽然机器人群是均匀的并且具有相同的控制架构,但制定适当的集体行为并不是那么容易造成几个挑战的挑战。即使机器人群成功开发有意义的集体行为,它仍然面临难以解释它在执行给定任务时成功的原因。在本文中,我们目的是通过可视化出现的自主任务分配来提供对这种高度冗余但有意义的行为的解释。我们提出了一种用于分析其复杂集体行为的方法,该行为利用复杂网络领域采用的技术。首先,机器人群被翻译成定向加权复杂网络。接下来,我们定义模块化,并将机器人群划分为具有最大值的子组。最后,我们展示了从宏观角度来看出现给每个子组的任务分配。

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