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Data-Assisted Dynamic Modeling of Bionic Robotic Fish and Its Precise Speed Control

Jiarong Han, Shun Hsien Huang, Yingyu Yao, Zhongjing Ma, Yu Liu, Suli Zou, Bo Yin

Year
2024
Citations
4

Abstract

Dynamic modeling is essential for comprehending physical mechanisms and devising control strategies in bionic robot research. This letter introduces a novel dynamic modeling method that combines Lagrangian dynamics and data-assisted techniques for robotic fish with bionic morphology, multi-joint structures, and a flexible caudal fin. Firstly, a nonlinear continuous hydrodynamic model has been developed using extensive data derived from computational fluid dynamics (CFD), thereby capturing the high-fidelity locomotion of robotic fish. Secondly, based on mathematical derivation, a stability analysis method and controller design approach for biomimetic systems with periodic behaviors have been proposed. Furthermore, to demonstrate the model's efficacy, we designed a model reference adaptive controller for speed control. Both simulation and experimental results validate the model's accuracy, effectiveness, and potential for improving control consistency in tracking time-varying speeds of robotic fish.

Keywords

Fish <Actinopterygii>Computer scienceElectronic speed controlControl engineeringEngineeringBiologyFishery

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