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基于稀疏度自适应和迭代加权的捷变频雷达目标高精度参数估计

张亚男 张劲东 王行舒 张欣媛

信号处理2025,Vol.41Issue(3):437-447,11.
信号处理2025,Vol.41Issue(3):437-447,11.DOI:10.12466/xhcl.2025.03.003

基于稀疏度自适应和迭代加权的捷变频雷达目标高精度参数估计

High-Precision Target Parameter Estimation for Frequency-Agile Radars Based on Sparse Adaptive and Iterative Weighted Reconstruction

张亚男 1张劲东 1王行舒 1张欣媛1

作者信息

  • 1. 南京航空航天大学电子信息工程学院,江苏 南京 211106
  • 折叠

摘要

Abstract

Frequency-agile radars are known for their low probability of interception and strong anti-interference capa-bilities.However,the rapid frequency hopping between pulses leads to non-uniform phase variations in the signal,which renders conventional detection methods of moving targets inapplicable.To address the estimation of range-velocity parameters for targets in frequency-agile radars as well as issues such as false target detection and true target am-plitude loss,this study established a sparse signal processing model based on range-Doppler,transforming the param-eter estimation problem into a sparse reconstruction issue.This study proposes a sparse adaptive and iterative weighted reconstruction(SAIWR)algorithm.Initially,the algorithm selects atoms based on their correlation with the dictionary matrix and performs a secondary screening through regularization conditions.Then,in each iteration,the extended step size is adaptively matched to the sparsity of the signal,continuing the search for the optimal set of atoms.Finally,the weight matrix is adjusted during the iteration according to the correlation between the atoms and dictionary matrix,en-hancing the role of target atoms in the signal reconstruction process.This achieves radar target scene reconstruction and false target suppression when the number of targets is unknown.When adaptively inverting diagonal loading matrices,the algorithm utilizes the matrix inversion lemma,reducing the computational load.Computer simulation experiments demonstrate that the proposed algorithm accurately estimates the target parameters of frequency-agile radars in scenarios with adjacent and small targets.Compared with the existing regularized adaptive matching pursuit(RAMP)and sparse Bayesian learning(SBL)algorithms,the SAIWR algorithm offers higher reconstruction accuracy and a lower false alarm rate.

关键词

目标参数估计/捷变频/稀疏重构/稀疏度自适应和迭代加权

Key words

target parameter estimation/frequency agility/sparse reconstruction/sparse adaptive and iterative weighted reconstruction

分类

信息技术与安全科学

引用本文复制引用

张亚男,张劲东,王行舒,张欣媛..基于稀疏度自适应和迭代加权的捷变频雷达目标高精度参数估计[J].信号处理,2025,41(3):437-447,11.

基金项目

国家自然科学基金(62171220) The National Natural Science Foundation of China(62171220) (62171220)

信号处理

OA北大核心

1003-0530

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