Adaptive Kalman filtering algorithms for integrating GPS and low cost INS

C. Hide, T. Moore, M. Smith
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引用次数: 162

Abstract

GPS and Inertial Navigation Systems are used for positioning and attitude determination in a wide range of applications. Over the last few years, a number of low cost inertial sensors have become available. Although they exhibit large errors, GPS measurements can be used correct the INS and sensor errors to provide high accuracy real-time navigation. The integration of GPS and INS measurements is usually achieved using a Kalman filter. The measurement and process noise matrices used in the Kalman filter represent the stochastic properties of the GPS and INS systems respectively. Traditionally they are defined a priori and remain constant throughout a processing run. In reality, the stochastic properties of the system vary depending on factors such as vehicle dynamics and environmental conditions. This is particularly an issue for low cost inertial sensors where the initial sensor errors can be large, and experience significant temporal variation. This paper investigates three adaptive Kalman filtering algorithms that can be used to improve the estimation of the stochastic properties of a low cost INS. The algorithms are tested using a low cost Crossbow MEMS IMU integrated with carrier phase GPS for a marine application. The adaptive Kalman filtering algorithms are shown to reduce the dependence on the a priori information used in the filter. This results in a reduction in the time required to initialise the sensor errors and align the INS, and results in an improvement in navigation performance.
集成GPS和低成本INS的自适应卡尔曼滤波算法
GPS和惯性导航系统在广泛的应用中用于定位和姿态确定。在过去的几年中,一些低成本的惯性传感器已经可用。虽然它们显示出很大的误差,但GPS测量可以用来纠正惯导系统和传感器的误差,以提供高精度的实时导航。GPS和INS测量的集成通常使用卡尔曼滤波来实现。卡尔曼滤波中使用的测量噪声矩阵和过程噪声矩阵分别代表了GPS和INS系统的随机特性。传统上,它们是先验定义的,并在整个处理运行过程中保持不变。在现实中,系统的随机特性取决于车辆动力学和环境条件等因素。对于低成本惯性传感器来说,这是一个特别的问题,因为初始传感器误差可能很大,并且经历了显著的时间变化。本文研究了三种自适应卡尔曼滤波算法,可用于改进低成本惯性导航系统随机特性的估计。这些算法在低成本的Crossbow MEMS IMU上进行了测试,该IMU集成了载波相位GPS,用于船舶应用。自适应卡尔曼滤波算法减少了对滤波中先验信息的依赖。这减少了初始化传感器误差和对准惯导系统所需的时间,从而提高了导航性能。
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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