Comparison of nonlinear filtering approach in tightly-coupled GPS/INS navigation system

Qi Nie, Xiaoying Gao
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引用次数: 2

Abstract

This paper proposes the fusion of GPS measurements and inertial sensor data from gyroscopes and accelerometers in tightly-coupled GPS/INS navigation systems. Usually, an extended Kalman filter (EKF) is applied for this task. However, as system dynamic model as well as the pseudorange and pseudorange rate measurement models are nonlinear, the EKF is sub-optimal choice from theoretical point of view, as it approximates the propagation of mean an covariance of Gaussian random vectors through these nonlinear models by a linear transformation, which is accurate to first-order only. The sigma-point Kalman filter (SPKF) family of algorithms use a carefully selected set of sample points to more accurately map the probability distribution than linearization of the standard EKF, leading to faster convergence from inaccurate initial conditions in position and attitude estimation problems, which achieves an accurate approximation to at least second-order. Therefore, the performance of EKF and SPKF applied to tightly-coupled GPS/INS integration is compared in numerical simulations. It is found that the SPKF approach offers better performances over standard EKF.
非线性滤波方法在紧密耦合GPS/INS导航系统中的比较
提出了GPS/INS紧密耦合导航系统中GPS测量数据与陀螺仪和加速度计惯性传感器数据的融合。通常,扩展卡尔曼滤波(EKF)用于该任务。然而,由于系统动力学模型以及伪橙和伪橙速率测量模型都是非线性的,从理论上讲,EKF是次优选择,因为它通过线性变换逼近高斯随机向量的均值和协方差通过这些非线性模型的传播,并且只精确到一阶。与标准EKF的线性化相比,sigma-point Kalman filter (SPKF)系列算法使用一组精心挑选的样本点来更准确地映射概率分布,从而在位置和姿态估计问题中从不准确的初始条件更快地收敛,从而达到至少二阶的精确近似。因此,在数值模拟中比较了EKF和SPKF在GPS/INS紧密耦合集成中的性能。发现SPKF方法比标准EKF方法具有更好的性能。
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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