中国人民解放军92728部队,上海 200436
[ "丁宸聪(1981- ),男,中国人民解放军92728部队高级工程师,主要研究方向为航空电子与信息对抗。" ]
收稿:2025-01-14,
修回:2025-06-11,
录用:2025-07-16,
纸质出版:2025-09-15
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丁宸聪.基于选择性深度嵌入聚类的复杂未知雷达信号分选方法[J].智能科学与技术学报,2025,07(03):329-337.
DING Chencong.A complex unknown radar signal deinterleaving method based on selective deep embedding clustering[J].Chinese Journal of Intelligent Science and Technology,2025,07(03):329-337.
丁宸聪.基于选择性深度嵌入聚类的复杂未知雷达信号分选方法[J].智能科学与技术学报,2025,07(03):329-337. DOI: 10.11959/j.issn.2096-6652.202529.
DING Chencong.A complex unknown radar signal deinterleaving method based on selective deep embedding clustering[J].Chinese Journal of Intelligent Science and Technology,2025,07(03):329-337. DOI: 10.11959/j.issn.2096-6652.202529.
随着现代电子战与雷达技术的不断发展,战场环境中的雷达信号日趋复杂多样,这给信号分选带来了严峻挑战。传统分选方法通常依赖先验知识并预先设定类别数量,难以应对实际应用中可能出现的未知信号源与动态变化特征。针对这一问题,提出一种基于选择性深度嵌入聚类的复杂未知雷达信号分选方法。该方法结合深度学习在特征提取方面的优势与基于密度的聚类算法的灵活性,且无须依赖特定先验知识,实现对雷达信号参数的自适应嵌入与动态聚类;通过神经网络自动学习信号特征,并与基于密度的聚类算法相结合,有效克服了人工定义特征泛化能力不足的缺陷。实验结果表明,在复杂环境下的雷达信号数据集中,所提方法的聚类纯度达99.46%,具备良好的适应性与扩展性,能够准确识别未知或动态变化的信号特征。与传统方法相比,基于选择性深度嵌入聚类的复杂未知雷达信号分选方法不仅为海量复杂雷达信号处理提供了更具通用性与可靠性的解决方案,也为其他涉及未知信号的大规模数据挖掘任务提供了有益参考。
With the continuous advancement of electronic warfare and radar technologies
radar signal in battlefield environments has become increasingly complex and diverse
which poses severe challenges to signal deinterleaving. Traditional deinterleaving methods typically rely on prior knowledge and a preset number of categories
making them unsuitable for handling unknown signal sources and dynamically changing features that may arise in real-world applications. To address this issue
a complex unknown radar signal deinterleaving method based on selective deep embedding clustering was proposed. By integrating the feature extraction capabilities of deep learning with the flexibility of a density-based clustering algorithm
this method achieved adaptive embedding and clustering of radar signal parameters without relying on specific prior knowledge. Through automatic feature learning via neural networks coupled with a density-based clustering algorithm
the need for manually defined features with limited generalizability was avoided. Experimental results on radar signal datasets from complex environments indicate that the proposed method achieves a cluster purity of up to 99.46%
demonstrating robust adaptability and extensibility in identifying unknown or dynamically changing signal characteristics. Compared with traditional methods
selective deep embedding clustering provides a more universal and reliable solution for large-scale
complex radar signal processing and offers valuable references for other extensive data mining tasks involving unknown signals.
DIAO P S, ALVES T, POUSSOT B, et al. A review of radar detection fundamentals[J]. IEEE Aerospace and Electronic Systems Magazine, 2024, 39(9): 4-24.
隋金坪, 刘振, 刘丽, 等. 雷达辐射源信号分选研究进展[J]. 雷达学报, 2022, 11(3): 418-433.
SUI J P, LIU Z, LIU L, et al. Progress in radar emitter signal deinterleaving[J]. Journal of Radars, 2022, 11(3): 418-433.
贾金伟, 刘利民, 韩壮志, 等. 低截获雷达抗分选信号设计技术研究综述[J]. 电讯技术, 2023, 63(5): 748-756.
JIA J W, LIU L M, HAN Z Z, et al. Review on anti-sorting signal design technology of low probability intercept radar[J]. Telecommunication Engineering, 2023, 63(5): 748-756.
REDDY R, SINHA S. State-of-the-art review: electronic warfare against radar systems[J]. IEEE Access, 2025, 13: 57530-57567.
CHENG W H, ZHANG Q Y, DONG J M, et al. An enhanced algorithm for deinterleaving mixed radar signals[J]. IEEE Transactions on Aerospace and Electronic Systems, 2021, 57(6): 3927-3940.
FANG Y Y, ZHANG L, WEI S P, et al. Online frequency-agile strategy for radar detection based on constrained combinatorial nonstationary bandit[J]. IEEE Transactions on Aerospace and Electronic Systems, 2023, 59(2): 1693-1706.
ZHU M T, LI Y J, WANG S F. Model-based time series clustering and interpulse modulation parameter estimation of multifunction radar pulse sequences[J]. IEEE Transactions on Aerospace and Electronic Systems, 2021, 57(6): 3673-3690.
BLUNT S D, HARNETT L A, RAVENSCROFT B, et al. Implications of diversified Doppler for random PRI radar[J]. IEEE Transactions on Aerospace and Electronic Systems, 2023, 59(4): 3811-3834.
AKAN A, CURA O K. Time-frequency signal processing: today and future[J]. Digital Signal Processing, 2021, 119: 103216.
WAN M C, ZHANG Y, BAI Y C, et al. A real-time radar signal sorting method under Bayesian framework with dynamic cluster merging[J]. IEEE Sensors Journal, 2024, 24(17): 27859-27869.
AHMAD Z, CHOWDHURY R, DAS R, et al. A fast algorithm for aperiodic linear stencil computation using fast Fourier transforms[J]. ACM Transactions on Parallel Computing, 2023, 10(4): 1-34.
嘉娟. 脉间波形变换雷达信号分选理论研究[D]. 哈尔滨: 哈尔滨工程大学, 2024.
JIA J. Theory research on inter-pulse waveform transform-based radar signal sorting[D]. Harbin: Harbin Engineering University, 2024.
STEMMER U. Locally private K-means clustering[J]. The Journal of Machine Learning Research, 2021(22): 1-30.
王云, 王美蕴, 周健, 等. 基于改进层次聚类和GL-APSO算法的配电网动态重构[J]. 智能科学与技术学报, 2022, 4(3): 410-417.
WANG Y, WANG M Y, ZHOU J, et al. Dynamic configuration of distribution network based on improved hierarchical clustering and GL-APSO algorithm[J]. Chinese Journal of Intelligent Science and Technology, 2022, 4(3): 410-417.
NEHORAI A, PALDI E. Vector-sensor array processing for electromagnetic source localization[J]. IEEE Transactions on Signal Processing, 1994, 42(2): 376-398.
张旗, 董阳阳, 张立东, 等. 基于多帧多级处理的雷达信号分选方法[J]. 电讯技术, 2024, 64(11): 1836-1843.
ZHANG Q, DONG Y Y, ZHANG L D, et al. Radar signal sorting based on multi-frame and multi-stage processing[J]. Telecommunication Engineering, 2024, 64(11): 1836-1843.
王易丽, 杨宇明. 一种基于改进谱聚类的雷达信号分选算法[J]. 电讯技术, 2023, 63(9): 1348-1354.
WANG Y L, YANG Y M. A radar signal sorting algorithm based on improved spectral clustering[J]. Telecommunication Engineering, 2023, 63(9): 1348-1354.
CHOI K, YI J H, PARK C, et al. Deep learning for anomaly detection in time-series data: review, analysis, and guidelines[J]. IEEE Access, 2021, 9: 120043-120065.
张钹. 人工智能进入后深度学习时代[J]. 智能科学与技术学报, 2019, 1(1): 4-6.
ZHANG B. Artificial intelligence is entering the post deep-learning era[J]. Chinese Journal of Intelligent Science and Technology, 2019, 1(1): 4-6.
HE K M, ZHANG X Y, REN S Q, et al. Deep residual learning for image recognition[C]//Proceedings of the 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Piscataway: IEEE, 2016: 770-778.
GARDAZI N M, DAUD A, MALIK M K, et al. BERT applications in natural language processing: a review[J]. Artificial Intelligence Review, 2025, 58(6): 166.
黄峻, 林飞, 杨静, 等. 生成式AI的大模型提示工程: 方法、现状与展望[J]. 智能科学与技术学报, 2024, 6(2): 115-133.
HUANG J, LIN F, YANG J, et al. From prompt engineering to generative artificial intelligence for large models: the state of the art and perspective[J]. Chinese Journal of Intelligent Science and Technology, 2024, 6(2): 115-133.
施力泉, 张红梅. 基于弱化与增强网络的雷达信号识别[J]. 电讯技术, 2024, 64(11): 1844-1849.
SHI L Q, ZHANG H M. Radar signal recognition based on weakening and strengthening network[J]. Telecommunication Engineering, 2024, 64(11): 1844-1849.
尹春勇, 蒋奕阳. 基于个性化时空聚类的差分隐私轨迹保护模型[J]. 信息网络安全, 2024, 24(1): 80-92.
YIN C Y, JIANG Y Y. Differential privacy trajectory protection model based on personalized spatiotemporal clustering[J]. Netinfo Security, 2024, 24(1): 80-92.
SCHUBERT E, SANDER J, ESTER M, et al. DBSCAN revisited, revisited[J]. ACM Transactions on Database Systems, 2017, 42(3): 1-21.
KHADER M, AL-NAYMAT G. An overview of various enhancements of DENCLUE algorithm[C]//Proceedings of the Second International Conference on Data Science, E-Learning and Information Systems. New York: ACM, 2019: 1-7.
PASZKE A, GROSS S, MASSA F, et al. PyTorch: an imperative style, high-performance deep learning library[J]. arXiv preprint, 2019, arXiv:1912.01703.
PEDREGOSA F, VAROQUAUX G, GRAMFORT A, et al. Scikit-learn: machine learning in python[J]. Journal of Machine Learning Research, 2011, 12: 2825-2830.
LIU Y F. Improved top-k threshold estimation in information retrieval[D]. New York: New York University Tandon School of Engineering, 2024.
KINGMA D P, WELLING M. An introduction to variational autoencoders[J]. Foundations and Trends in Machine Learning, 2019, 12(4): 307-392.
李智冈, 吕莉, 谭德坤, 等. 基于加权核密度估计与微簇合并的密度峰值聚类算法[J]. 信息与控制, 2024, 53(3): 302-314.
LI Z G, LYU L, TAN D K, et al. Density peaks clustering algorithm based on weighted kernel density estimation and micro-cluster merging[J]. Information and Control, 2024, 53(3): 302-314.
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