斯特劳哈尔数
中心图形发生器
机器人
电动机控制
具身认知
鱼类运动
计算机科学
运动学
控制理论(社会学)
人工智能
物理
生物
雷诺数
神经科学
声学
控制(管理)
机械
节奏
经典力学
湍流
作者
Hankun Deng,Donghao Li,Colin Nitroy,Anthony Wertz,Shashank Priya,Bo Cheng
标识
DOI:10.1098/rsif.2024.0036
摘要
Fish locomotion emerges from diverse interactions among deformable structures, surrounding fluids and neuromuscular activations, i.e. fluid-structure interactions (FSI) controlled by fish's motor systems. Previous studies suggested that such motor-controlled FSI may possess embodied traits. However, their implications in motor learning, neuromuscular control, gait generation, and swimming performance remain to be uncovered. Using robot models, we studied the embodied traits in fish-inspired swimming. We developed modular robots with various designs and used central pattern generators (CPGs) to control the torque acting on robot body. We used reinforcement learning to learn CPG parameters for maximizing the swimming speed. The results showed that motor frequency converged faster than other parameters, and the emergent swimming gaits were robust against disruptions applied to motor control. For all robots and frequencies tested, swimming speed was proportional to the mean undulation velocity of body and caudal-fin combined, yielding an invariant, undulation-based Strouhal number. The Strouhal number also revealed two fundamental classes of undulatory swimming in both biological and robotic fishes. The robot actuators were also demonstrated to function as motors, virtual springs and virtual masses. These results provide novel insights in understanding fish-inspired locomotion.
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