基于脉冲内多维特征融合的雷达信号分选算法

IF 3.2 3区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Yaqin Zhao , Yuchen Liu , Qi Wang , Rongqian Yang , Longwen Wu
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引用次数: 0

摘要

在现代电子战中,不断增加的雷达信号密度和复杂性揭示了传统的基于脉冲间参数的分类方法的关键局限性,包括批次重叠、脉冲泄漏和对参数公差的高灵敏度。提出了一种利用脉冲内多维特征融合的雷达信号分选算法。利用变分模态分解提取信号能量熵和模态系数,利用相空间重构计算相关维数和李雅普诺夫指数,利用固有时间尺度分解导出带有相关系数的样本熵。这些六维特征被融合成一个判别特征矩阵,以增强类间的可分性。提出了一种改进的密度峰聚类模糊c均值算法,通过密度峰聚类自适应确定聚类数和初始中心,并通过模糊c均值优化隶属度迭代,解决了传统聚类算法依赖先验参数和误差累积的局限性。硬件在环实验表明,该算法在广泛的评估指标上优于大多数基线方法。在低信噪比(SNR)条件下,它表现出优异的噪声鲁棒性。它在5 dB及以上的高信噪比条件下实现了近乎最佳的性能,所有指标均超过96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A radar signal sorting algorithm based on intra-pulse multidimensional feature fusion
In modern electronic warfare, the increasing density and complexity of radar signals reveal critical limitations in traditional inter-pulse parameter-based sorting methods, including batch overlap, pulse leakage, and heightened sensitivity to parameter tolerances. This paper presents a radar signal sorting algorithm leveraging intra-pulse multidimensional feature fusion. We utilize variational mode decomposition to extract signal energy entropy and mode coefficients, apply phase space reconstruction for computing correlation dimension and Lyapunov exponent, and employ intrinsic time-scale decomposition to derive sample entropy with correlation coefficients. These six-dimensional features are fused into a discriminative feature matrix to enhance inter-class separability. An improved density-peak clustering fuzzy C-means algorithm is proposed, which adaptively determines the cluster number and initial centers via density-peak clustering and optimizes membership iteration through fuzzy C-means to address the limitations of traditional clustering algorithms, such as dependency on prior parameters and error accumulation. Hardware-in-the-loop experiments demonstrate that the proposed algorithm outperforms most baseline methods across a wide range of evaluation metrics. It exhibits superior noise robustness under low signal-to-noise ratio (SNR) conditions. It achieves near-optimal performance under high SNR conditions at 5 dB and above, with all metrics exceeding 96 %.
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来源期刊
CiteScore
6.90
自引率
18.80%
发文量
292
审稿时长
4.9 months
期刊介绍: AEÜ is an international scientific journal which publishes both original works and invited tutorials. The journal''s scope covers all aspects of theory and design of circuits, systems and devices for electronics, signal processing, and communication, including: signal and system theory, digital signal processing network theory and circuit design information theory, communication theory and techniques, modulation, source and channel coding switching theory and techniques, communication protocols optical communications microwave theory and techniques, radar, sonar antennas, wave propagation AEÜ publishes full papers and letters with very short turn around time but a high standard review process. Review cycles are typically finished within twelve weeks by application of modern electronic communication facilities.
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