执行机构
控制器(灌溉)
粒子群优化
机器人
控制理论(社会学)
计算机科学
控制工程
模拟
工程类
人工智能
算法
控制(管理)
生物
农学
作者
Sijia Liu,Chunbao Liu,Guowu Wei,Luquan Ren,Lei Ren
标识
DOI:10.1109/tro.2025.3526087
摘要
This paper explores a hydraulically powered double-joint soft robotic fish called HyperTuna and a set of locomotion optimization methods. HyperTuna has an innovative, highly efficient actuation structure that includes a four-cylinder piston pump and a double-joint soft actuator with self-sensing. We conducted deformation analysis on the actuator and established a finite element model to predict its performance. A closed-loop strategy combining a central pattern generator controller and a proportional–integral– derivative controller was developed to control the swimming posture accurately. Next, a dynamic model for the robotic fish was established considering the soft actuator, and the model parameters were identified via data-driven methods. Then, a particle swarm optimization algorithm was adopted to optimize the control parameters and improve the locomotion performance. Experimental results showed that the maximum speed increased by 3.6% and the cost of transport ( COT ) decreased by up to 13.9% at 0.4 m/s after optimization. The proposed robotic fish achieved a maximum speed of 1.12 BL/s and a minimum COT of 12.1 J/(kg·m), which are outstanding relative to those of similar soft robotic fish. Lastly, HyperTuna completed turning and diving–floating movements and long-distance continuous swimming in open water, which confirmed its potential for practical application
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