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Central pattern generators evolved for real-time adaptation to rhythmic stimuli

Alex Szorkovszky, Frank Veenstra, Kyrre Glette

发表年份
2023
引用次数
4
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摘要

For a robot to be both autonomous and collaborative requires the ability to adapt its movement to a variety of external stimuli, whether these come from humans or other robots. Typically, legged robots have oscillation periods explicitly defined as a control parameter, limiting the adaptability of walking gaits. Here we demonstrate a virtual quadruped robot employing a bio-inspired central pattern generator (CPG) that can spontaneously synchronize its movement to a range of rhythmic stimuli. Multi-objective evolutionary algorithms were used to optimize the variation of movement speed and direction as a function of the brain stem drive and the centre of mass control respectively. This was followed by optimization of an additional layer of neurons that filters fluctuating inputs. As a result, a range of CPGs were able to adjust their gait pattern and/or frequency to match the input period. We show how this can be used to facilitate coordinated movement despite differences in morphology, as well as to learn new movement patterns.

关键词

Central pattern generatorRhythmDigital pattern generatorRobotMovement (music)GaitComputer scienceAdaptation (eye)Generator (circuit theory)Control theory (sociology)

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