Attitude and Gyro bias estimation using range-difference and IMU measurements

E. K. Jørgensen, I. Schjølberg
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引用次数: 4

Abstract

This paper considers the problem of constructing an estimator for attitude and gyro bias with close-to-optimal noise properties and proven stability. The estimator is based on measuring difference in range from three or more known, fixed positions to two or more points on the vehicle. In addition, IMU measurements are also used, and a position estimate is needed. The vectors between points on the vehicle are known in the body frame and estimated in the inertial frame using the available measurements. A non-linear observer is used to create a linearization point for a Linearized Kalman Filter taking the full, non-linear system into account. Simulations suggest that the estimator has similar noise properties as an optimal, non-implementable linearized Kalman Filter using the exact state as linearization point.
使用距离差和IMU测量的姿态和陀螺偏差估计
本文考虑构造一个噪声性能接近最优且稳定的姿态和陀螺偏差估计器问题。估计器是基于测量从三个或更多已知的固定位置到车辆上两个或更多点的距离差。此外,还使用了IMU测量,并且需要位置估计。车辆上各点之间的矢量在车身框架中已知,并使用可用的测量在惯性框架中估计。非线性观测器用于创建线性化卡尔曼滤波器的线性化点,考虑到整个非线性系统。仿真表明,该估计器具有与使用精确状态作为线性化点的最佳、不可实现的线性化卡尔曼滤波器相似的噪声特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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