The Process Noise Model of Kalman Filter for Chirp Radar

M. A. Murzova
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引用次数: 1

Abstract

This paper provides a process noise model of a two-state Kalman filter for tracking with linear frequency modulated (LFM) waveforms. The steady-state gains and error covariance of this Kalman filter with process noise model are derived. The derived steady-state gains are such that sensor-noise only (SNO) covariance matrix of $\alpha\beta$-filter with these steady-state gains equals an estimate covariance matrix of a first-degree fixed-memory smoothing algorithm. Thus, the Kalman filter with proposed process noise model approximates the fixed-memory polynomial filter in terms of tracking accuracies. The first-degree fixed-memory smoothing algorithm is a first-degree fixedmemory polynomial filter based on least-squares estimation. Also the range and range rate lag error expressions are derived for the fixed-memory polynomial filter.
啁啾雷达卡尔曼滤波过程噪声模型
本文给出了一种用于线性调频(LFM)波形跟踪的双态卡尔曼滤波器的过程噪声模型。推导了该滤波器在过程噪声模型下的稳态增益和误差协方差。导出的稳态增益使得具有这些稳态增益的$\alpha\beta$滤波器的仅传感器噪声(SNO)协方差矩阵等于一级固定记忆平滑算法的估计协方差矩阵。因此,基于过程噪声模型的卡尔曼滤波器在跟踪精度方面接近固定记忆多项式滤波器。一阶固定记忆平滑算法是一种基于最小二乘估计的一阶固定记忆多项式滤波器。并推导了固定记忆多项式滤波器的距离和距离速率滞后误差表达式。
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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