Learning Locomotion Skills in Evolvable Robots
Lan, Gongjin, van Hooft, Maarten, De Carlo, Matteo, Tomczak, Jakub M., Eiben, A. E.
–arXiv.org Artificial Intelligence
The challenge of robotic reproduction -- making of new robots by recombining two existing ones -- has been recently cracked and physically evolving robot systems have come within reach. Here we address the next big hurdle: producing an adequate brain for a newborn robot. In particular, we address the task of targeted locomotion which is arguably a fundamental skill in any practical implementation. We introduce a controller architecture and a generic learning method to allow a modular robot with an arbitrary shape to learn to walk towards a target and follow this target if it moves. Our approach is validated on three robots, a spider, a gecko, and their offspring, in three real-world scenarios.
arXiv.org Artificial Intelligence
Oct-19-2020
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