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首页> 外文期刊>Frontiers in Robotics and AI >Evolutionary Policy Transfer and Search Methods for Boosting Behavior Quality: RoboCup Keep-Away Case Study
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Evolutionary Policy Transfer and Search Methods for Boosting Behavior Quality: RoboCup Keep-Away Case Study

机译:提升行为质量的进化策略转移和搜索方法:RoboCup Keep-Away案例研究

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摘要

This study evaluates various evolutionary search methods to direct neural controller evolution in company with policy (behavior) transfer across increasingly complex collective robotic (RoboCup keep-away) tasks. That is, where robot behaviors are first evolved in a source task and then transferred for further evolution to more complex target tasks. Evolutionary search methods tested include objective-based search (fitness function), behavioral and genotypic diversity maintenance and hybrids of such diversity maintenance and objective-based search. Evolved behavior quality is evaluated according to effectiveness and efficiency. Effectiveness is the average task performance of transferred and evolved behaviors, where task performance is the average time the ball is controlled by a keeper team. Efficiency is the average number of generations taken for the fittest evolved behaviors to reach a minimum task performance threshold given policy transfer. Results indicate that policy transfer coupled with evolutionary search directed by hybridized behavioral diversity maintenance and objective-based search addresses the bootstrapping problem for increasingly complex keep-away tasks, in that this method evolves collective behaviors that could not be evolved by comparative evolutionary methods (with and without policy transfer).
机译:这项研究评估了各种进化搜索方法,以指导公司的神经控制器进化,并通过越来越复杂的集体机器人任务(RoboCup避开)进行政策(行为)转移。也就是说,首先在源任务中发展机器人行为,然后将其转移到更复杂的目标任务中,以进一步发展。测试的进化搜索方法包括基于目标的搜索(适应度函数),行为和基因型多样性维护以及此类多样性维护和基于目标的搜索的混合。根据有效性和效率评估进化的行为质量。有效性是转移和发展的行为的平均任务绩效,其中任务绩效是守门员团队控制球的平均时间。效率是在给定策略转移的情况下,最适度的进化行为达到最低任务性能阈值所需的平均世代数。结果表明,政策转移加上由混合行为多样性维护和基于目标的搜索指导的进化搜索解决了日益复杂的遗留任务的自举问题,因为该方法会演化出集体行为,而集体行为是比较进化方法无法演化的(具有并且没有政策转移)。

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