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Sage windowing and random weighting adaptive filtering method for kinematic model error

机译:运动模型误差的鼠尾窗加随机加权自适应滤波方法

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摘要

This paper presents a new method for adaptive estimation of kinematic model error in dynamic aircraft navigation. This method combines the concepts of random weighting and Sage windowing to online monitor predicted and observation residuals to control the influence of the kinematic model???s systematic error on system state estimation. Based on the Sage windowing, random weighting estimations are constructed within a moving time window for the systematic error of the kinematic model as well as the covariance matrices of the observation noise vector, the predicted residual vector, and the predicted state vector. Experimental results and comparison analysis demonstrate that the proposed method not only adjusts the covariance matrices of the observation noise vector and the predicted residual vector, but also effectively controls the influence of the kinematic model error on state parameter estimation, thus improving the navigation accuracy.
机译:本文提出了一种动态估计飞机动态运动模型误差的新方法。该方法结合了随机加权和Sage窗口化的概念,可以在线监视预测残差和观测残差,以控制运动学模型的系统误差对系统状态估计的影响。基于Sage窗,针对运动模型的系统误差以及观测噪声向量,预测残差向量和预测状态向量的协方差矩阵,在移动时间窗内构造了随机加权估计。实验结果和比较分析表明,该方法不仅可以调整观测噪声矢量和预测残差矢量的协方差矩阵,而且可以有效地控制运动学模型误差对状态参数估计的影响,从而提高了导航精度。

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