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Online State Estimation of a Fin-Actuated Underwater Robot Using Artificial Lateral Line System

机译:使用人工横向线系统在线状态估计Fin驱动水下机器人

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摘要

A lateral line system is a flow-responsive organ system, with which fish can effectively sense the surrounding flow field, thus serving functions in flow-aided fish behaviors. Inspired by such a biological characteristic, artificial lateral line systems (ALLSs) have been developed for promoting technological innovations of underwater robots. In this article, we focus on investigating state estimation of a freely swimming robotic fish in multiple motions, including rectilinear motion, turning motion, gliding motion, and spiral motion. The state refers to motion parameters, including linear velocity, angular velocity, motion radius, etc., and trajectory of the robotic fish. Specifically, for each motion, a pressure variation (PV) model that links motion parameters to PVs surrounding the robotic fish is first bui then, a linear regression analysis method is used for determining the model parameters. Based on the acquired PV model, motion parameters can be estimated by solving the PV model inversely using the PVs measured by the ALLS. Finally, a trajectory estimation method is proposed for estimating trajectory of the robotic fish based on the ALLS-estimated motion parameters. The experimental results show that the robotic fish is able to estimate its trajectory in the aforementioned multiple motions with the aid of ALLS, with small estimation errors.
机译:横向线系统是流动响应器官系统,其中鱼可以有效地感测周围的流场,从而在流动辅助鱼类行为中提供功能。由这种生物学特征的启发,已经开发了用于促进水下机器人的技术创新的人工横向系统(Allss)。在本文中,我们专注于调查多种运动中自由游泳机器人鱼的状态估计,包括直线运动,转动运动,滑动运动和螺旋运动。该状态指的是运动参数,包括线性速度,角速度,运动半径等和机器人鱼的轨迹。具体地,对于每个运动,首先构建将运动参数链接到机器人鱼的PVS的压力变化(PV)模型是首先构建的;然后,使用线性回归分析方法来确定模型参数。基于所获取的PV模型,可以通过求解由所有物体测量的PV来求解PV模型来估计运动参数。最后,提出了一种基于所有估计的运动参数估计机器人鱼的轨迹的轨迹估计方法。实验结果表明,机器人鱼能够借助于所有估计误差估算上述多个动作中的轨迹。

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