论文标题
人造侧线基于两个相邻机器人鱼的相对状态估计
Artificial Lateral Line Based Relative State Estimation for Two Adjacent Robotic Fish
论文作者
论文摘要
横向线使鱼能够有效地感知周围环境,从而有助于流动相关的鱼类行为。受这种现象的启发,已开发并应用于水下机器人的各种人造侧线系统(ALLS)。本文着重于使用基于所有测量的流体动力压力变化(HPV)的压力传感器阵列来估计两种与领导者追随者形成的相邻机器人鱼之间的相对状态。相对状态包括上游机器人鱼对下游机器人鱼的相对振荡频率,振幅和偏移,相对垂直距离,相对偏航角,相对螺距角以及两个相邻机器人鱼之间的相对滚动角。研究了ALLS测量和上述相对状态之间的回归模型,并进行了基于回归模型的相对状态估计。具体而言,首先提出了两个标准,不仅要研究每个压力传感器对相对状态变化的敏感性,还要研究压力传感器的不足和冗余性。因此,确定用于回归分析的压力传感器。然后使用四种典型的回归方法,包括随机森林算法,支持矢量回归,背部传播神经网络和多个线性回归方法,用于在Alls测量的HPV和相对状态之间建立回归模型。然后比较和讨论这四种方法的回归效应。最后,具有最佳回归效果的随机基于森林的方法用于使用Alls测量的HPV估计相对偏航角和振幅振幅,并具有出色的估计性能。这项工作有助于一组水下机器人的本地相对估计,这一直是一个挑战。
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 relative state estimation is conducted. Specifically, two criteria are proposed firstly to investigate not only the sensitivity of each pressure sensor to the variations of relative state but also the insufficiency and redundancy of the pressure sensors. And thus the pressure sensors used for regression analysis are determined. Then four typical regression methods, including random forest algorithm, support vector regression, back propagation neural network, and multiple linear regression method are used for establishing regression models between the ALLS-measured HPVs and the relative states. Then regression effects of the four methods are compared and discussed. Finally, random forest-based method, which has the best regression effect, is used to estimate relative yaw angle and oscillating amplitude using the ALLS-measured HPVs and exhibits excellent estimation performance. This work contributes to local relative estimation for a group of underwater robots, which has always been a challenge.