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首页> 外文期刊>IEEE Transactions on Robotics >Fast Dynamics of an Eel-Like Robot—Comparisons With Navier–Stokes Simulations
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Fast Dynamics of an Eel-Like Robot—Comparisons With Navier–Stokes Simulations

机译:像鳗鱼一样的机器人的快速动力学与Navier-Stokes仿真的比较

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摘要

This paper proposes a dynamic model of the swim of elongated fish suited to the online control of biomimetic eel-like robots. The approach can be considered as an extension of the original reactive “large elongated body theory” of Lighthill to the 3-D self-propulsion to which a resistive empirical model has been added. While all the mathematical fundamentals have been detailed by Boyer . (http://www.irccyn.ec-nantes.fr/hebergement/Publications/2007/3721.pdf, 2007), this paper essentially focuses on the numerical validation and calibration of the model and the study of swimming gaits. The proposed model is coupled to an algorithm allowing us to compute the motion of the fish head and the field of internal control torque from the knowledge of the imposed internal strain fields. Based on the Newton–Euler formalism of robot dynamics, this algorithm works faster than real time. As far as precision is concerned, many tests obtained with several planar and 3-D gaits are reported and compared (in the planar case) with a Navier–Stokes solver, which, until today have been devoted to the planar swim. The comparisons obtained are very encouraging since in all the cases we tested, the differences between our simplified and reference simulations do not exceed 10%.
机译:本文提出了一种适用于仿生鳗鱼状机器人在线控制的细长鱼游动动力学模型。该方法可以被认为是Lighthill最初的反应性“大型细长体理论”对3-D自推进的扩展,在该模型中已添加了电阻性经验模型。虽然所有数学基础都已由博耶(Boyer)详细介绍。 (http://www.irccyn.ec-nantes.fr/hebergement/Publications/2007/3721.pdf,2007年),本文主要侧重于模型的数值验证和校准以及游泳步态的研究。所提出的模型与一种算法耦合,该算法使我们能够根据施加的内部应变场的知识来计算鱼头的运动和内部控制转矩的场。基于机器人动力学的牛顿-欧拉形式主义,该算法比实时算法运行更快。就精度而言,报告了许多使用几种平面和3-D步态获得的测试,并将其与Navier-Stokes求解器进行了比较(在平面情况下),该求解器直到今天仍致力于平面游泳。获得的比较非常令人鼓舞,因为在我们测试的所有情况下,我们的简化仿真与参考仿真之间的差异均不超过10%。

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