Robust and efficient terrain navigation of underwater vehicles

I. Nygren
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引用次数: 34

Abstract

For terrain navigation to be a serious navigation tool in underwater navigation it must be robust and work well in flat bottomed areas. Furthermore it should be easy to incorporate with the vehicle's inertial navigation system (INS) so a bound can be placed on the system's position error. This paper describes the terrain navigation system developed for the Swedish Defence Materiel Administration's autonomous vehicles AUV62F and Sapphires. Both vehicles are battery powered and torpedo shaped with a diameter of 21". From the outset, the terrain navigation system was designed to work in flat bottomed areas; it uses many simultaneous sonar beams (400+) to measure the bottom topography, producing a unique underwater map position for the vehicle. When terrain navigating in flat bottomed areas, bottom topography measurement often gives many possible vehicle positions, i.e., the probability density function of the vehicle position is multimodal, so efficient and robust nonlinear Kalman filtering must be used. The terrain navigation module uses an optimal nonlinear Kalman filter called the FD filter. The FD filter numerically solves the stochastic differential equation that guides the vehicle positioning. The measurement updating is Bayesian. The filtering procedure is characterized by robustness, simplicity, and accuracy. It is also simple to incorporate independent measurements other than the terrain topography into the filter.
水下航行器鲁棒高效地形导航
地形导航要成为水下导航中的重要导航工具,就必须具有鲁棒性,并能在平坦的海底区域正常工作。此外,它应该易于与车辆的惯性导航系统(INS)结合,从而可以对系统的位置误差设置一个界限。本文描述了为瑞典国防物资管理局的自动驾驶车辆AUV62F和蓝宝石开发的地形导航系统。两辆车都是电池供电和直径为21英寸的鱼雷形状。从一开始,地形导航系统就被设计为在平坦的底部工作;它使用许多同时声纳波束(400+)来测量底部地形,为车辆产生独特的水下地图位置。在平坦地形导航时,底部地形测量通常会给出多个可能的车辆位置,即车辆位置的概率密度函数是多模态的,因此必须采用高效、鲁棒的非线性卡尔曼滤波。地形导航模块使用一种称为FD滤波器的最优非线性卡尔曼滤波器。FD滤波器对引导车辆定位的随机微分方程进行数值求解。度量更新是贝叶斯的。该滤波过程具有鲁棒性、简单性和准确性等特点。将地形地形以外的独立测量并入滤波器也很简单。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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