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Automated sequencing of swarm behaviors for supervisory control of robotic swarms

机译:群体行为的自动排序,用于机器人群体的监督控制

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Robotic swarms are distributed systems that exhibit global behaviors arising from local interactions between individual robots. Each robot can be programmed with several local control laws that can be activated depending on an operator's choice of global swarm behavior. While some simple behaviors (e.g. rendezvous) with guaranteed performance on known objectives under strict assumptions have been studied in the literature, real missions occur in uncontrolled environments with dynamically arising objectives and require combinations of behaviors. Given a library of swarm behaviors, a supervisory operator commanding the swarm must choose a sequence of behaviors to execute in order to accomplish a particular task during a mission composed of many dynamically arising tasks. In this paper, we formalize the problem of finding an optimal behavior sequence to maximize swarm performance on a complex task. Given the swarm behavior library, a set of decision time points and a performance criterion, we present an informed search algorithm that computes the maximum performance behavior sequence. The algorithm is proven to be optimal and complete. A relevant modification is presented that generates bounded suboptimal solutions more quickly. We apply the algorithm to a swarm navigation application and a dynamic area coverage application, demonstrating the utility of our algorithm even in situations where the behaviors in the library have not been designed for the task at hand.
机译:机器人群是分布式系统,其表现出由单个机器人之间的局部交互作用引起的全局行为。每个机器人都可以通过几个本地控制定律进行编程,这些定律可以根据操作员对全局群行为的选择来激活。虽然在文献中已经研究了一些在严格假设下能够保证已知目标性能的简单行为(例如集合点),但实际任务发生在不受控制的环境中,且目标动态产生并且需要行为的组合。给定一个群体行为库,命令群体的监督操作员必须选择要执行的一系列行为,以便在由许多动态产生的任务组成的任务中完成特定任务。在本文中,我们对寻找最佳行为序列以最大化复杂任务群性能的问题进行形式化。给定群体行为库,一组决策时间点和一个性能标准,我们提出了一种知情的搜索算法,该算法可以计算最大性能行为序列。该算法被证明是最优且完整的。提出了相关的修改,可以更快地生成有界的次优解。我们将该算法应用于群体导航应用程序和动态区域覆盖应用程序,即使在尚未针对当前任务设计库中行为的情况下,也证明了该算法的实用性。

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