Empirical Data-Driven Linear Model of a Swimming Robot Using the Complex Delay-Embedding DMD Technique.

IF 3.9 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY Biomimetics Pub Date : 2025-01-16 DOI:10.3390/biomimetics10010060
Mostafa Sayahkarajy, Hartmut Witte
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Abstract

Anguilliform locomotion, an efficient aquatic locomotion mode where the whole body is engaged in fluid-body interaction, contains sophisticated physics. We hypothesized that data-driven modeling techniques may extract models or patterns of the swimmers' dynamics without implicitly measuring the hydrodynamic variables. This work proposes empirical kinematic control and data-driven modeling of a soft swimming robot. The robot comprises six serially connected segments that can individually bend with the segmental pneumatic artificial muscles. Kinematic equations and relations are proposed to measure the desired actuation to mimic anguilliform locomotion kinematics. The robot was tested experimentally and the position and velocities of spatially digitized points were collected using QualiSys® Tracking Manager (QTM) 1.6.0.1. The collected data were analyzed offline, proposing a new complex variable delay-embedding dynamic mode decomposition (CDE DMD) algorithm that combines complex state filtering and time embedding to extract a linear approximate model. While the experimental results exhibited exotic curves in phase plane and time series, the analysis results showed that the proposed algorithm extracts linear and chaotic modes contributing to the data. It is concluded that the robot dynamics can be described by the linearized model interrupted by chaotic modes. The technique successfully extracts coherent modes from limited measurements and linearizes the system dynamics.

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基于复杂延迟嵌入DMD技术的经验数据驱动的游泳机器人线性模型。
Anguilliform运动是一种全身参与流体-体相互作用的高效水生运动模式,它包含着复杂的物理特性。我们假设数据驱动的建模技术可以在不隐含地测量水动力变量的情况下提取游泳者动力学的模型或模式。本文提出了软泳机器人的经验运动学控制和数据驱动建模。该机器人包括六个连续连接的部分,这些部分可以通过分段气动人造肌肉单独弯曲。为了模拟鳗形运动运动学,提出了测量所需驱动的运动学方程和关系式。对机器人进行实验测试,使用QualiSys®Tracking Manager (QTM) 1.6.0.1采集空间数字化点的位置和速度。对采集到的数据进行离线分析,提出了一种将复杂状态滤波和时间嵌入相结合的复杂可变时延嵌入动态模态分解(CDE DMD)算法,提取线性近似模型。虽然实验结果在相平面和时间序列上呈现奇异曲线,但分析结果表明,该算法提取了对数据有贡献的线性和混沌模式。结果表明,机器人动力学可以用被混沌模式打断的线性化模型来描述。该技术成功地从有限的测量中提取出相干模式,并使系统动力学线性化。
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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
期刊最新文献
Correction: Parra et al. Experimental and Spectral Analysis of the Wake Velocity Effect in a 3D Falcon Prototype with Oscillating Feathers and Its Application in HAWT with Biomimetic Vortex Generators Using CFD. Biomimetics 2025, 10, 622. Advances in Brain-Computer Interfaces (BCI): Challenges and Opportunities. Yaw Control Strategies Through Flow Structuring in Carangid C-Type Maneuvers. Biomimetic Surface Modification of Dental Zirconia via UV Irradiation for Enhanced Aesthetics and Wettability. HCHS-Net: A Multimodal Handcrafted Feature and Metadata Framework for Interpretable Skin Lesion Classification.
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