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On AUV Control with the Aid of Position Estimation Algorithms Based on Acoustic Seabed Sensing and DOA Measurements

机译:基于声学海底传感和DOA测量的位置估计算法借助于AUV控制

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摘要

This article discusses various approaches to the control of autonomous underwater vehicles (AUVs) with the aid of different velocity-position estimation algorithms. Traditionally this field is considered as the area of the extended Kalman filter (EKF) application: It became a universal tool for nonlinear observation models and its use is ubiquitous. Meanwhile, the specific characteristics of underwater navigation, such as an incomplete sets of measurements, constraints on the range metering or even impossibility of range measurements, observations provided by rather specific acoustic beacons, sonar observations, and other features seriously narrow the applicability of common instruments due to a high level of uncertainty and nonlinearity. The AUV navigation system, not being able to rely on a single source of position estimation, has to take into account all available information. This leads to the necessity of various complex estimation and data fusion algorithms, which are the matter of the present article. Here we discuss some approaches to the AUV position estimation such as conditionally minimax nonlinear filtering (CMNF) and unbiased pseudo-measurement filters (UPMFs) in conjunction with velocity estimation based on the seabed profile acoustic sensing. The presented estimation algorithms serve as a basis for a locally optimal AUV motion control algorithm, which is also presented.
机译:本文借助于不同的速度位置估计算法讨论了控制自主水下车辆(AUV)的各种方法。传统上,该领域被认为是扩展卡尔曼滤波器(EKF)应用的区域:它成为非线性观察模型的通用工具,其使用是普遍存在的。同时,水下导航的具体特点,如不完整的测量集,对范围计量的限制甚至不可能的范围测量,由相当特定的声学信标,声纳观察和其他特征提供的观察结果严重缩小了普通仪器的适用性由于高水平的不确定性和非线性。 AUV导航系统,不能依赖于单一的位置估计来源,必须考虑所有可用信息。这导致各种复杂估计和数据融合算法的必要性,这是本文的问题。这里,我们讨论了与基于海底轮廓声学感测的速度估计结合有条件最小的位置估计的一些方法,例如可理由的最低限度非线性滤波(CMNF)和非偏叠的伪测量滤波器(UPMF)。所提出的估计算法作为局部最佳AUV运动控制算法的基础,该算法也被呈现。

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