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Integration of GPS Precise Point Positioning and MEMS-Based INS Using Unscented Particle Filter

机译:使用无味粒子滤波器将GPS精确点定位与基于MEMS的INS集成

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摘要

Integration of Global Positioning System (GPS) and Inertial Navigation System (INS) integrated system involves nonlinear motion state and measurement models. However, the extended Kalman filter (EKF) is commonly used as the estimation filter, which might lead to solution divergence. This is usually encountered during GPS outages, when low-cost micro-electro-mechanical sensors (MEMS) inertial sensors are used. To enhance the navigation system performance, alternatives to the standard EKF should be considered. Particle filtering (PF) is commonly considered as a nonlinear estimation technique to accommodate severe MEMS inertial sensor biases and noise behavior. However, the computation burden of PF limits its use. In this study, an improved version of PF, the unscented particle filter (UPF), is utilized, which combines the unscented Kalman filter (UKF) and PF for the integration of GPS precise point positioning and MEMS-based inertial systems. The proposed filter is examined and compared with traditional estimation filters, namely EKF, UKF and PF. Tightly coupled mechanization is adopted, which is developed in the raw GPS and INS measurement domain. Un-differenced ionosphere-free linear combinations of pseudorange and carrier-phase measurements are used for PPP. The performance of the UPF is analyzed using a real test scenario in downtown Kingston, Ontario. It is shown that the use of UPF reduces the number of samples needed to produce an accurate solution, in comparison with the traditional PF, which in turn reduces the processing time. In addition, UPF enhances the positioning accuracy by up to 15% during GPS outages, in comparison with EKF. However, all filters produce comparable results when the GPS measurement updates are available.
机译:全球定位系统(GPS)和惯性导航系统(INS)的集成系统涉及非线性运动状态和测量模型。但是,扩展卡尔曼滤波器(EKF)通常用作估计滤波器,这可能导致解散。当使用低成本的微机电传感器(MEMS)惯性传感器时,在GPS中断期间通常会遇到这种情况。为了提高导航系统的性能,应考虑使用标准EKF的替代产品。粒子滤波(PF)通常被认为是一种非线性估计技术,可以适应严重的MEMS惯性传感器偏置和噪声行为。但是,PF的计算负担限制了它的使用。在这项研究中,使用了PF的改进版本,即无味粒子滤波器(UPF),它结合了无味卡尔曼滤波器(UKF)和PF,用于集成GPS精确点定位和基于MEMS的惯性系统。对提出的滤波器进行了检查,并与传统的估计滤波器(EKF,UKF和PF)进行了比较。采用紧密耦合机械化,这是在原始GPS和INS测量领域开发的。 PPP使用伪距离和载波相位测量值的无差异无电离层线性组合。 UPF的性能是使用安大略省金斯顿市中心的真实测试场景进行分析的。结果表明,与传统的PF相比,使用UPF减少了产生准确解决方案所需的样本数量,从而减少了处理时间。此外,与EKF相比,UPF在GPS中断期间将定位精度提高了15%。但是,当GPS测量更新可用时,所有过滤器都会产生可比较的结果。

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