Learning control for body caudal undulation with soft sensory feedback

Fabian Schwab, Mohamed El Arayshi, Seyedreza Rezaei, Hadrien Sprumont, Federico Allione, Claudio Mucignat, Ivan Lunati, C. M. Verrelli, A. Jusufi
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Abstract

Soft bio-mimetic robotics is a growing field of research that seeks to close the gap with animal robustness and adaptability where conventional robots fall short. The embedding of sensors with the capability to discriminate between different body deformation modes is a key technological challenge in soft robotics to enhance robot control–a difficult task for this type of systems with high degrees of freedom. The recently conceived Linear Repetitive Learning Estimation Scheme (LRLES)–to be included in the traditional Proportional–integral–derivative (PID) control–is proposed here as a way to compensate for uncertain dynamics on a soft swimming robot, which is actuated with soft pneumatic actuators and equipped with soft sensors providing proprioceptive information pertaining to lateral body caudal bending akin to a goniometer. The proposed controller is derived in detail and experimentally validated, with the experiment consisting of tracking a desired trajectory for the bending angle envelope while continuously oscillating with a constant frequency. The results are compared vis a vis those achieved with the traditional PID controller, finding that the PID endowed with the LRLES outperforms the PID controller (though the latter has been separately tuned) and experimentally validating the novel controller’s effectiveness, accuracy, and matching speed.
利用软感觉反馈学习控制身体尾部起伏
软体仿生机器人技术是一个不断发展的研究领域,旨在弥补传统机器人在动物鲁棒性和适应性方面的不足。嵌入能够区分不同身体变形模式的传感器是软体机器人学的一项关键技术挑战,以增强机器人的控制能力--这对于这类高自由度系统来说是一项艰巨的任务。本文提出了最近构想的线性重复学习估计方案(LRLES)--将其纳入传统的比例-积分-派生(PID)控制--作为一种补偿软体游泳机器人不确定动态的方法,该机器人由软体气动致动器驱动,并配备了软体传感器,可提供类似于动态关节角度计的有关身体尾部侧弯的本体感觉信息。实验包括跟踪弯曲角包络的理想轨迹,同时以恒定频率持续摆动。实验结果与传统的 PID 控制器进行了比较,发现带有 LRLES 的 PID 控制器优于 PID 控制器(尽管后者已单独进行了调整),并通过实验验证了新型控制器的有效性、准确性和匹配速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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