高速飞行器导航应用中集成导航系统的增强

Ahmed W. Ebrahim, I. Arafa, H. Hendy, Y. Elhalwagy
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引用次数: 0

摘要

惯性导航系统(INS)与全球卫星导航系统(GNSS)的集成作为一种导航解决方案,对高速飞行器来说变得非常重要。本文给出了一个27态卡尔曼滤波器集成系统的系统模型的推导和建模。传感器(陀螺仪和加速度计)误差和GNSS误差也进行了表征和建模。结果表明,陀螺(陀螺)误差估计的一些参数如陀螺垂直漂移和陀螺向东漂移以及加速度计向东偏移估计是不可观测的。仿真结果表明,在综合系统中,惯性导航系统和全球导航系统的导航误差都能得到较高的估计。分析结果表明,惯性测量单元(IMU)状态估计的发展可以有效地提供当前运动信息(位置和姿态状态)。这种有效的信息可以用于对这种高速飞行器进行精确的制导和控制策略。
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Enhancement of Integrated Navigation System for high-speed flying vehicles' Navigation Applications
The Inertial Navigation Systems (INS), Global Navigation Satellite System (GNSS) integration becomes very important for high speed flying vehicles as a navigation solution. In this paper, a derivation and modeling of a system model of the integrated system for a 27-states Kalman filter is presented. Sensors (gyroscopes and accelerometers) errors, and GNSS errors are characterized and modeled as well. Results show that some parameters of estimated gyroscopes (gyros) errors such as vertical and east gyro drifts and the estimated east accelerometer bias are not observables. The simulation shows that in the integrated system and the navigation errors in both the INS and GNSS can be estimated with high accuracy. Results analysis proves that the development of state estimation for an Inertial Measuring Unit (IMU) can efficiently supply current motion information (position and attitude states). This efficient information can be used to carry out accurate guidance and control strategies for such a hi-speed flight bodies.
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