集成INS/TAP系统的边缘粒子滤波方法

T. Hektor, H. Karlsson, P. Nordlund
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引用次数: 2

摘要

准确可靠的导航系统将在未来的飞机应用中变得越来越重要,特别是在无人机系统中。本文介绍了一种结合惯性导航系统(INS)和地形辅助定位系统(TAP)的粒子滤波方法。集成系统采用边缘粒子滤波器(MPF)实现,其中高度非线性的TAP与INS紧密结合,使用同一个滤波器。为了更好地估计高度测量中的多模态误差,采用了一阶广义伪贝叶斯(GPB1)滤波器。这也将减少MPF中的粒子数量,从而也减少了计算工作量。利用萨博“鹰狮”战斗机记录的飞行数据对算法的性能进行了评估。与现有的基于表示TAP的点质量滤波器和估计INS误差的单个扩展卡尔曼滤波器的次优集成的INS/TAP系统相比,MPF方法在性能上相似,但在数据丢失后恢复时显示出更好的收敛时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Marginalized Particle Filter approach to an integrated INS/TAP system
Accurate and reliable navigation systems will become increasingly important in future aircraft applications, in particular within unmanned aerial vehicle systems. This paper describes a particle filter approach of integrating an Inertial navigation system (INS) with a terrain-aided positioning system (TAP) to achieve such a system. The integrated system is realized applying a marginalized particle filter (MPF) where the highly nonlinear TAP is designed tightly with the INS using one and the same filter. In order to better estimate the multi-modal errors in the altitude measurements, a first order Generalized Pseudo-Bayesian (GPB1) filter is used for this purpose. This will also reduce the number of particles in the MPF and therefore also reduce the computational workload. The performance of the algorithm has been evaluated using recorded flight data from the Saab Gripen fighter aircraft. Compared to an existing INS/TAP system based on a suboptimal integration of a point mass filter representing TAP and a single extended Kalman filter estimating the INS errors, the MPF approach is similar in performance but shows better results on convergence times when recovering after loss of data.
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