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A concurrent approach to robot team learning

机译:机器人团队学习的并发方法

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摘要

Despite the advancement of research and development on multi-robot teams, a key challenge still remains as to how to develop effective mechanisms that enable the robots to autonomously generate, adapt, and enhance team behaviours while improving their individual performance simultaneously. To address this issue, a cooperative learning algorithm is modified in this paper to accommodate for the individualistic Q-Learning as well as the collaborative advice sharing. The developed methods are examined in relation to the performance characteristics of single-robot learning to ascertain if they retain viable learning characteristics despite the integration of individual learning into team behaviour. Further, a modification to the individual learning method was implemented into the proposed multi-robot learning approach to examine the performance improvements gained by the multi-robot learning algorithms.
机译:尽管对多机器人团队的研究与开发取得了进步,但如何开发有效的机制使机器人能够自主生成,适应和增强团队行为,同时改善其个人绩效的关键挑战仍然存在。为了解决这个问题,本文对协作学习算法进行了修改,以适应个性化的Q学习以及协作建议共享。相对于单机器人学习的性能特征,研究了开发的方法,以确定它们是否保留了可行的学习特征,即使个人学习已整合到团队行为中。此外,在建议的多机器人学习方法中对个人学习方法进行了修改,以检查由多机器人学习算法获得的性能改进。

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