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Locating Odour Sources with Geometric Syntactic Genetic Programming

机译:用几何句法遗传编程定位气味来源

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Using robots to locate odour sources is an interesting problem with important applications. Many researchers have drawn inspiration from nature to produce robotic methods, whilst others have attempted to automatically create search strategies with Artificial Intelligence techniques. This paper extends Geometric Syntactic Genetic Programming and applies it to automatically produce robotic controllers in the form of behaviour trees. The modification proposed enables Geometric Syntactic Genetic Programming to evolve trees containing multiple symbols per node. The behaviour trees produced by this algorithm are compared to those evolved by a standard Genetic Programming algorithm and to two bio-inspired strategies from the literature, both in simulation and in the real world. The statistically validated results show that the Geometric Syntactic Genetic Programming algorithm is able to produce behaviour trees that outperform the bio-inspired strategies, while being significantly smaller than those evolved by the standard Genetic Programming algorithm. Moreover, that reduction in size does not imply statistically significant differences in the performance of the strategies.
机译:使用机器人定位气味来源是一个有趣的问题,重要的应用程序。许多研究人员从大自然中吸引了灵感,以产生机器人方法,而其他研究则尝试使用人工智能技术自动创建搜索策略。本文扩展了几何句法遗传编程,并将其应用于以行为树的形式自动生产机器人控制器。提出的修改使得几何句法遗传编程能够在每个节点上扩张包含多个符号的树木。将该算法产生的行为树与标准遗传编程算法的演变和来自文献中的两个生物启发策略进行了比较,两者在模拟和现实世界中。统计上验证的结果表明,几何句法遗传编程算法能够产生优于生物启发策略的行为树,同时显着小于由标准遗传编程算法演变的行为树。此外,尺寸的降低并不意味着统计学上的策略表现差异。

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