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Evolving a Single Scalable Controller for an Octopus Arm with a Variable Number of Segments

机译:为具有可变段数的章鱼手​​臂开发单个可伸缩控制器

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While traditional approaches to machine learning are sensitive to high-dimensional state and action spaces, this paper demonstrates how an indirectly encoded neurocontroller for a simulated octopus arm leverages regularities and domain geometry to capture underlying motion principles and sidestep the superficial trap of dimensionality. In particular, controllers are evolved for arms with 8, 10, 12, 14, and 16 segments in equivalent time. Furthermore, when transferred without further training, solutions evolved on smaller arms retain the fundamental motion model because they simply extend the general kinematic concepts discovered at the original size. Thus this work demonstrates that dimensionality can be a false measure of domain complexity and that indirect encoding makes it possible to shift the focus to the underlying conceptual challenge.
机译:尽管传统的机器学习方法对高维状态和动作空间敏感,但本文演示了用于模拟章鱼臂的间接编码神经控制器如何利用规律性和域几何形状捕获基本运动原理并避开维数的表面陷阱。特别是,控制器在等效时间内针对具有8、10、12、14和16段的机械臂而发展。此外,在未经进一步培训的情况下转移时,在较小的手臂上演化的解决方案保留了基本运动模型,因为它们仅扩展了原始尺寸下发现的一般运动学概念。因此,这项工作证明了维数可能是域复杂性的错误度量,间接编码使将焦点转移到潜在的概念性挑战成为可能。

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