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Comparison of Nonlinear Filtering Methods for Terrain Referenced Aircraft Navigation

机译:地形参考飞机导航非线性滤波方法的比较

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Inertial Navigation Systems (INS) are the main part of the integrated navigation for most of the aerial vehicles. However, the accuracy of an inertial navigation solution decreases with time as the inertial instrument (e.g., gyroscope and accelerometer) errors are integrated through the navigation equations. Therefore, different aiding techniques are used to bound the drift in these systems. One of the commonly used techniques is the integration of INS with Global Navigation Satellite System (GNSS) signals. By means of this integration, the advantages of both technologies are combined to give a complete navigation solution. The need for Terrain Referenced Navigation (TRN) arises when these satellite based radio signals are unavailable. In recent years, research on the application of TRN to aerial vehicles has been increased rapidly with the developments in the accuracy of digital terrain elevation database (DTED). Since the land profile is inherently nonlinear, TRN becomes a nonlinear estimation problem. Because of the highly nonlinear problem, linear or linearized estimation techniques such as Kalman or Extended Kalman Filter (EKF) do not work properly for many terrain profiles. Hence, this paper focuses on nonlinear filtering techniques and presents the main principles of two different TRN methods. These methods will be compared and advantages of both methods will be presented. The first method is the Sequential Monte Carlo (SMC) technique namely the particle filter (PF) for dealing with nonlinearities and different types of probability distributions even multi-modal. PF is an approximate optimal filter on correct model and based on particle representation of probability density function. The second method is the Unscented Kalman Filter (UKF) based on the Unscented Transform (UT) of sigma points. The basic idea is to approximate the probability density function with deterministically selected and weighted small number of sigma points. Simulations with different inertial measurement units (IMUs), with different initial errors, over maps with various resolutions are performed and investigated. The performance of both nonlinear filtering algorithms will be presented through Monte Carlo simulations.
机译:惯性导航系统(INS)是大多数飞机的集成导航的主要部分。然而,由于惯性仪器(例如,陀螺仪和加速度计)的误差通过导航方程式积分,惯性导航解决方案的精度随着时间而降低。因此,在这些系统中使用了不同的辅助技术来限制漂移。惯用技术之一是INS与全球导航卫星系统(GNSS)信号的集成。通过这种集成,两种技术的优点结合在一起,从而提供了一个完整的导航解决方案。当这些基于卫星的无线电信号不可用时,就需要地形参考导航(TRN)。近年来,随着数字地形高程数据库(DTED)准确性的发展,对TRN在飞机上的应用的研究迅速增加。由于陆地轮廓固有地是非线性的,因此TRN成为非线性估计问题。由于存在高度的非线性问题,线性或线性化的估算技术(例如卡尔曼或扩展卡尔曼滤波器(EKF))不适用于许多地形剖面。因此,本文重点介绍非线性滤波技术,并介绍了两种不同的TRN方法的主要原理。将比较这些方法,并介绍两种方法的优点。第一种方法是顺序蒙特卡洛(SMC)技术,即用于处理非线性和不同类型的概率分布甚至多模式的粒子滤波(PF)。 PF是在正确模型上并且基于概率密度函数的粒子表示的近似最佳滤波器。第二种方法是基于σ点的无味变换(UT)的无味卡尔曼滤波器(UKF)。基本思想是使用确定性选择并加权的少量sigma点来近似概率密度函数。在具有各种分辨率的地图上执行具有不同惯性测量单位(IMU),具有不同初始误差的仿真。两种非线性滤波算法的性能都将通过蒙特卡洛模拟进行介绍。

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