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卷积神经网络STAP低空风切变风速估计 被引量:2

Convolutional Neural Network STAP Low Level Wind Shear Wind Speed Estimation
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摘要 由于机载气象雷达前视阵下存在非均匀性地杂波,导致难以获得足够的独立同分布样本,影响杂波协方差矩阵准确估计,进而影响风速估计。对此,该文提出一种基于卷积神经网络STAP的低空风切变风速估计方法,通过少量样本就能够实现高分辨杂波空时谱估计。首先,基于卷积神经网络模型训练好高分辨杂波空时谱卷积神经网络,接着计算杂波协方差矩阵,进而计算卷积神经网络STAP最优权矢量进行杂波抑制,达到对低空风切变风速精确估计。该文在小样本情况下,将稀疏恢复问题通过卷积神经网络实现,完成对高分辨杂波空时谱有效估计,仿真实验结果表明该方法可以有效估计空时谱,并完成风速估计。 Due to the non-uniform ground clutter in the forward array of airborne weather radar,it is difficult to obtain enough independent and equally distributed samples,which affects the accurate estimation of clutter covariance matrix and wind speed estimation.In this paper,a novel estimation method of low altitude wind shear speed based on convolutional neural network STAP is proposed,which can realize high resolution clutter space-time spectrum estimation with a small number of samples.First,the high-resolution clutter space-time spectrum convolutional neural network is trained based on the convolutional neural network model,and then the clutter covariance matrix is calculated,and then the optimal weight vector of the convolutional neural network STAP is calculated for clutter suppression,so as to accurately estimate the wind shear speed at low altitude.The sparse recovery problem is realized by convolutional neural network in the case of small samples,and the space-time spectrum of high-resolution clutter is effectively estimated.The simulation results show that the proposed method can effectively estimate the space-time spectrum and complete the wind speed estimation.
作者 李海 张强 周桉宇 熊玉 LI Hai;ZHANG Qiang;ZHOU AnYu;XIONG Yu(Tianjin Key Lab for Advanced Signal Processing,Civil Aviation University of China,Tianjin 300300,China)
出处 《电子与信息学报》 EI CAS CSCD 北大核心 2024年第8期3193-3201,共9页 Journal of Electronics & Information Technology
基金 国家重点研发计划项目(2021YFB1600600) 天津市自然基金重点项目(20JCZDJC00490)。
关键词 机载气象雷达 卷积神经网络 低空风切变 风速估计 Airborne weather radar CNN Low-altitude windshear Wind speed estimation
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  • 1沈震宇,范茵,陶俐君,胡磊.可视化技术在气象数据场分析中的运用[J].系统仿真学报,2006,18(z1):328-329. 被引量:14
  • 2刘青光,彭应宁,孙欣,马樟萼,陆大.机载雷达自适应杂波抑制的联合通道变换方法[J].电子学报,1994,22(6):1-9. 被引量:6
  • 3肖业伦 金长江.大气扰动中的飞行原理[M].北京:国防工业出版社,1993..
  • 4Carlo Jeffrey T, Sarkar Tapan K, Wicks Michael C. A least square multiple constraint direct data domain approach for STAP. Radar Conference,2003:431 - 438.
  • 5Sarkar T K, Koh J, Adve R, et al. A pragmatic approach to adaptive antennas. IEEE Antennas and Propagation,2000, 42(2) :39-55.
  • 6Sarkar T K, Wang H, Park S, et al. A deterministic least squares approach to space-time adaptive processing( STAP ). IEEE Trans. Antennas and Propagation,2001, 49: 91 - 103.
  • 7Todd Benjamin Hale. Airborne radar interference suppression using adaptive three-dimensional techniques. Air Force Research Laboratory, Tech. Report: AFIT/DS/ENG/02 - 02, 2002.
  • 8William Gardner A. Cyclostationarity in communications and signal processing. Piscataway, New Jersey, IEEEE Press, 1994.
  • 9Brown R, Sarkar T K. Real time deconvolution utilizing the fast transform and the conjugate gradient method.Proceedings of the Fifth Acoustic Speech and Signal Processing Workshop on Spectral Estimation and Modeling, Rochester, New York, 1990.
  • 10Wang Y L, Peng Y N. Space-time adaptive processing.Tsinghua Univ. Press, Beijing , 2000.

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