Artificial Lateral Line Based Relative State Estimation for Two Adjacent Robotic Fish
Xingwen Zheng, Wei Wang, Liang Li, and Guangming Xie

TL;DR
This paper develops a regression-based method using artificial lateral line sensors to accurately estimate the relative states between two underwater robotic fish, enhancing local group navigation capabilities.
Contribution
It introduces a sensor selection criteria and compares multiple regression models, identifying the random forest approach as most effective for relative state estimation.
Findings
Random forest regression achieved the best estimation accuracy.
The method accurately estimates yaw angle and oscillating amplitude.
Sensor selection criteria improve regression performance.
Abstract
The lateral line enables fish to efficiently sense the surrounding environment, thus assisting flow-related fish behaviours. Inspired by this phenomenon, varieties of artificial lateral line systems (ALLSs) have been developed and applied to underwater robots. This article focuses on using the pressure sensor arrays based on ALLS-measured hydrodynamic pressure variations (HPVs) for estimating the relative state between two adjacent robotic fish with leader-follower formation. The relative states include the relative oscillating frequency, amplitude, and offset of the upstream robotic fish to the downstream robotic fish, the relative vertical distance, the relative yaw angle, the relative pitch angle, and the relative roll angle between the two adjacent robotic fish. Regression model between the ALLS-measured and the mentioned relative states is investigated, and regression model-based…
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Taxonomy
MethodsLinear Regression
