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Improving Evolvability of Morphologies and Controllers of Developmental Soft-Bodied Robots with Novelty Search

机译:通过新颖性搜索提高发展中的软壳机器人的形态和控制器的可进化性

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Novelty search is an evolutionary search algorithm based on the superficially contradictory idea that abandoning goal focused fitness function altogether can lead to the discovery of higher fitness solutions. In the course of our work, we have created a biologically inspired artificial development system with the purpose of automatically designing complex morphologies and controllers of multicellular, soft-bodied robots. Our goal is to harness the creative potential of in silico evolution so that it can provide us with novel and efficient designs that are free of any preconceived notions a human designer would have. In order to do so, we strive to allow for the evolution of arbitrary morphologies. Using a fitness-driven search algorithm, the system has been shown to be capable of evolving complex multicellular solutions consisting of hundreds of cells that can walk, run and swim, yet the large space of possible designs makes the search expensive and prone to getting stuck in local minima. In this work, we investigate how a developmental approach to the evolution of robotic designs benefits from abandoning objective fitness function. We discover that novelty search produced significantly better performing solutions. We then discuss the key factors of the success in terms of the phenotypic representation for the novelty search, the deceptive landscape for co-designing morphology/brain, and the complex development-based phenotypic encoding.
机译:新颖性搜索是一种基于表面矛盾思想的进化搜索算法,该思想完全放弃了以目标为中心的适应度函数,可以导致发现更高适应性的解决方案。在我们的工作过程中,我们创建了一个具有生物启发性的人工开发系统,旨在自动设计复杂形态和多细胞软体机器人的控制器。我们的目标是利用计算机技术发展的创新潜力,从而为我们提供新颖高效的设计,而这些设计都不会像人类设计师会想到的那样。为此,我们努力允许任意形态的演变。使用适应性驱动的搜索算法,该系统已显示出能够进化复杂的多细胞解决方案的能力,该解决方案由数百个可以行走,奔跑和游泳的细胞组成,但是可能的设计空间很大,使得搜索昂贵且容易卡住在当地的最低要求。在这项工作中,我们研究了机器人设计进化的一种开发方法如何从放弃客观适应性功能中受益。我们发现,新颖性搜索产生了性能明显更好的解决方案。然后,我们将在新颖性搜索的表型表示,共同设计形态/大脑的欺骗前景以及基于复杂开发的表型编码方面讨论成功的关键因素。

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