IQ-ASyMTRe:紧密耦合多机器人任务的综合联盟形成与执行

Yu Zhang, L. Parker
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引用次数: 26

摘要

本文提出了IQ-ASyMTRe架构,该架构旨在解决在单一框架中紧密耦合的多机器人任务的联盟形成和执行。以前提出的许多任务分配算法没有明确启用机器人功能共享。受信息不变量理论的启发,引入了ASyMTRe,通过允许信息通过通信在不同的机器人之间流动,实现了感官和计算能力的共享。然而,ASyMTRe并没有提供一个解决方案来解决联盟在执行指定任务时如何满足由共享能力引入的传感器约束。此外,不同信息类型之间的转换是硬编码的,这限制了ASyMTRe的灵活性。此外,实体(例如机器人)和信息类型之间的关系没有被明确捕获,这可能从一开始就产生不可行的解决方案,因为定义的信息类型可能与当前环境设置不太一致。新架构引入了完整的信息类型定义,以保证解决方案的可行性;它还显式地为信息转换建模。受我们之前工作的启发,IQ-ASyMTRe使用信息质量度量来指导机器人联盟在执行任务时满足传感器约束(由能力共享引入),从而提供完整和通用的解决方案。我们展示了该方法在模拟和物理机器人上形成和执行共享感官信息的联盟以实现紧密耦合任务的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IQ-ASyMTRe: Synthesizing coalition formation and execution for tightly-coupled multirobot tasks
This paper presents the IQ-ASyMTRe architecture, which is aimed to address both coalition formation and execution for tightly-coupled multirobot tasks in a single framework. Many task allocation algorithms have been previously proposed without explicitly enabling the sharing of robot capabilities. Inspired by information invariant theory, ASyMTRe was introduced which enables the sharing of sensory and computational capabilities by allowing information to flow among different robots via communication. However, ASyMTRe does not provide a solution for how a coalition should satisfy sensor constraints introduced by the sharing of capabilities while executing the assigned task. Furthermore, conversions among different information types1 are hardcoded, which limits the flexibility of ASyMTRe. Moreover, relationships between entities (e.g., robots) and information types are not explicitly captured, which may produce infeasible solutions from the start, as the defined information type may not correspond well to the current environment settings. The new architecture introduces a complete definition of information type to guarantee the feasibility of solutions; it also explicitly models information conversions. Inspired by our previous work, IQ-ASyMTRe uses measures of information quality to guide robot coalitions to satisfy sensor constraints (introduced by capability sharing) while executing tasks, thus providing a complete and general solution. We demonstrate the capability of the approach both in simulation and on physical robots to form and execute coalitions that share sensory information to achieve tightly-coupled tasks.
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