On Optimal Energy Consumption Control Method for Tail Fin Bionic Robotic Fish

Guihai Li, Gang Liu, Yu-Xuan Li, Song-Lin Chen
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引用次数: 1

Abstract

The endurance ability is an important factor to be considered in the practical application of bionic robotic fish. By designing an optimal energy consumption control method, the energy consumption of robotic fish can be effectively reduced. In this paper, the structural characteristics of the tail fin bionic robotic fish are abstracted through the motion analysis of the tail fin fish. On this basis, a simplified dynamic and kinematic model of the robotic fish and a calculation method of energy consumption are established. Then, by changing the oscillation amplitude and frequency of the tail, the change law of the swimming speed is obtained. It is also found that the energy consumption is positively correlated with the swimming speed in general. In order to get the lowest energy consumption swimming mode of robotic fish at different swimming speeds, a series of optimal energy consumption points are obtained at the interval of 0.05m/s. The control method of optimal energy consumption of robotic fish is designed by analyzing its distribution law.
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尾鳍仿生机器鱼最优能量消耗控制方法研究
在仿生机器鱼的实际应用中,耐力是一个需要考虑的重要因素。通过设计最优的能耗控制方法,可以有效降低机器鱼的能耗。本文通过对尾鳍鱼的运动分析,抽象出了尾鳍仿生机器鱼的结构特点。在此基础上,建立了机器鱼的简化动力学和运动学模型以及能量消耗的计算方法。然后,通过改变尾鳍的振荡幅度和频率,得到游动速度的变化规律。总体上,能量消耗与游泳速度呈正相关。为了得到机器鱼在不同游泳速度下的最低能耗游泳模式,以0.05m/s为间隔获得一系列最优能耗点。通过分析机器鱼的能量分配规律,设计了机器鱼的最优能量消耗控制方法。
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