首页> 美国卫生研究院文献>Frontiers in Neurorobotics >Solving Gravity Anomaly Matching Problem Under Large Initial Errors in Gravity Aided Navigation by Using an Affine Transformation Based Artificial Bee Colony Algorithm
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Solving Gravity Anomaly Matching Problem Under Large Initial Errors in Gravity Aided Navigation by Using an Affine Transformation Based Artificial Bee Colony Algorithm

机译:基于仿射变换的人工蜂群算法解决重力辅助导航大初始误差下的重力异常匹配问题

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摘要

Gravity aided inertial navigation system (GAINS), which uses earth gravitational anomaly field for navigation, holds strong potential as an underwater navigation system. The gravity matching algorithm is one of the key factors in GAINS. Existing matching algorithms cannot guarantee the matching accuracy in the matching algorithms based gravity aided navigation when the initial errors are large. Evolutionary algorithms, which are mostly have the ability of global optimality and fast convergence, can be used to solve the gravity matching problem under large initial errors. However, simply applying evolutionary algorithms to GAINS may lead to false matching. Therefore, in order to deal with the underwater gravity matching problem, it is necessary to improve the traditional evolutionary algorithms. In this paper, an affine transformation based artificial bee colony (ABC) algorithm, which can greatly improve the positioning precision under large initial errors condition, is developed. The proposed algorithm introduces affine transformation to both initialization process and evolutionary process of ABC algorithm. The single-point matching strategy is replaced by the strategy of matching a sequence of several consecutive position vectors. In addition, several constraints are introduced to the process of evolution by using the output characteristics of the inertial navigation system (INS). Simulations based on the actual gravity anomaly base map have been performed for the validation of the proposed algorithm.
机译:重力辅助惯性导航系统(GAINS)使用地球重力异常场进行导航,具有作为水下导航系统的强大潜力。重力匹配算法是GAINS的关键因素之一。当初始误差较大时,现有的匹配算法不能保证基于重力辅助导航的匹配算法的匹配精度。进化算法主要具有全局最优性和快速收敛性,可以用来解决初始误差较大时的重力匹配问题。但是,仅将进化算法应用于GAINS可能会导致错误匹配。因此,为了解决水下重力匹配问题,有必要对传统的进化算法进行改进。本文提出了一种基于仿射变换的人工蜂群算法,可以在较大初始误差条件下极大地提高定位精度。该算法将仿射变换引入了ABC算法的初始化过程和演化过程。单点匹配策略被匹配几个连续位置矢量序列的策略所取代。另外,通过使用惯性导航系统(INS)的输出特性,在进化过程中引入了一些约束。为了验证所提出的算法,已经进行了基于实际重力异常底图的仿真。

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