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基于数据场联合决策图改进的GMM聚类

An improved GMM clustering based on data field and decision graph
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摘要 针对传统聚类方法在处理复杂电磁环境下的雷达信号时存在的聚类质量低、参数需要人为设置、易受孤立噪声脉冲干扰等问题,提出一种基于数据场联合决策图改进的高斯混合模型(Gaussian mixture model,GMM)聚类算法。将数据场理论应用于数据对象密集程度的表征,生成势能距离决策图,进而自动实现聚类数目和中心点的选择,最后结合GMM聚类实现对数据对象的聚类划分。仿真实验结果表明,在脉冲到达角、脉宽、载频等参数存在较大抖动,测量误差以及存在孤立噪声脉冲干扰和脉冲丢失时,本文方法相较于现有典型分类方法具有更好的分选效果。 Aiming at the problems of traditional clustering methods in processing radar signals in complex electromagnetic environment,such as low clustering quality,manual parameter setting and poor tolerance to isolated noise pulses,an improved Gaussian mixture model(GMM)clustering algorithm based on data field and decision graph is proposed.The data field theory is applied to the representation of the density of data objects,the potential energy distance decision graph is generated,and then the selection of cluster number and center point is realized automatically.Finally,the clustering division of data objects is realized combined with GMM.The simulation results show that this method has better sorting effect than the existing typical classification methods when there are significant jitter and measurement error in direction of arrival,pulse width and radio frequency,with the isolated noise pulses interference and pulse loss in the meantime.
作者 王磊 张志勇 曾维贵 曹司磊 张天赫 WANG Lei;ZHANG Zhiyong;ZENG Weigui;CAO Silei;ZHANG Tianhe(Coastal Defense College,Naval Aviation University,Yantai 264001,China;Unit 91827 of the PLA,Weihai 264000,China)
出处 《系统工程与电子技术》 EI CSCD 北大核心 2022年第9期2743-2751,共9页 Systems Engineering and Electronics
基金 装备预研领域基金(6140247030216JB14004)资助课题。
关键词 雷达信号分选 数据场 决策图 高斯混合模型聚类 radar signal classification data field decision diagram Gaussian mixture model(GMM)clustering
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