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Coevolution of Heterogeneous Multi-Robot Teams

机译:异构多机器人团队的共同进化

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Evolving multiple robots so that each robot acting independently can contribute to the maximization of a system level objective presents significant scientific challenges. For example, evolving multiple robots to maximize aggregate information in exploration domains (e.g., planetary exploration, search and rescue) requires coordination, which in turn requires the careful design of the evaluation functions. Additionally, where communication among robots is expensive (e.g., limited power or computation), the coordination must be achieved passively, without robots explicitly informing others of their states/intended actions. Coevolving robots in these situations is a potential solution to producing coordinated behavior, where the robots are coupled through their evaluation functions. In this work, we investigate coevolution in three types of domains: (i) where precisely n homogeneous robots need to perform a task; (ii) where n is the optimal number of homogeneous robots for the task; and (iii) where n is the optimal number of heterogeneous robots for the task. Our results show that coevolving robots with evaluation functions that are locally aligned with the system evaluation significantly improve performance over robots evolving using the system evaluation function directly, particularly in dynamic environments.
机译:不断发展的多个机器人,使每个独立行动的机器人都可以为最大化系统级目标做出贡献,这对科学提出了严峻的挑战。例如,进化多个机器人以最大化探索领域(例如,行星探索,搜索和救援)中的综合信息需要协调,这反过来又需要仔细设计评估功能。另外,在机器人之间的通信昂贵(例如,有限的功率或计算)的情况下,必须被动地实现协调,而无需机器人明确地告知其他人其状态/预期动作。在这些情况下,协同进化的机器人是产生协调行为的潜在解决方案,在这种情况下,机器人可以通过其评估功能进行耦合。在这项工作中,我们研究了三种类型领域中的协同进化:(i)恰好需要n个同类机器人执行任务的区域; (ii)其中n是完成任务的同类机器人的最佳数量; (iii)其中n是完成任务的最佳异构机器人数量。我们的结果表明,与直接与系统评估功能一起进化的机器人相比,具有与系统评估局部对齐的评估功能的协同进化机器人显着提高了性能,尤其是在动态环境中。

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