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Combined UKF/KF for Fast In-Motion Attitude Determination of SINS

机译:UKF / KF组合用于SINS快速运动姿态确定

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In this paper, we propose a combined Unscented Kalman Filter and Kalman Filter (UKF/KF) structured attitude determination method that aims to handle large initial attitude errors on a moving base at much lower computational cost. The proposed algorithm includes modified UKF that reduces initial attitude errors to a small range during coarse alignment and KF to proceed fine alignment that further diminish attitude errors. A Measurement- based Feedback algorithm is proposed to accelerate the convergent speed of UKF. Handover strategy for stable transition from UKF to KF is investigated. Moreover, block matrix multiplication is adopted, which reduces about 10.4% of the computation burden of KF. To improve system observability, position and velocity information from Global Positioning System (GPS), together with magnetic measurements are utilized. Numerical results of real-world simulated trajectory show that the proposed UKF/KF structure outperforms alternative UKF method in convergent speed as well estimation accuracy for both tactical- grade SINS and low-cost MEMS-based SINS.
机译:在本文中,我们提出了一种无味卡尔曼滤波器和卡尔曼滤波器(UKF / KF)结合的结构化姿态确定方法,该方法旨在以较低的计算成本处理运动基础上的较大初始姿态误差。所提出的算法包括经过改进的UKF,该UKF在粗对准期间将初始姿态误差减小到很小的范围,而KF进行精细对准则进一步减小了姿态误差。提出了一种基于测量的反馈算法,以加快UKF的收敛速度。研究了从UKF到KF稳定过渡的切换策略。此外,采用块矩阵乘法,减少了KF的计算负担约10.4%。为了提高系统的可观察性,利用了来自全球定位系统(GPS)的位置和速度信息以及磁测量值。实际仿真轨迹的数值结果表明,对于战术级SINS和低成本MEMS SINS而言,拟议的UKF / KF结构在收敛速度以及估计精度方面均优于替代UKF方法。

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