Entropy feature extraction approach for radar emitter signals

Gexiang Zhang, Haina Rong, L. Hu, Wei-dong Jin
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引用次数: 22

Abstract

Radar emitter signal recognition is an important and diffrcult issue in electronic intelligence, electronic Support measure and radar warning receiver systems and is always Traditional methods cannot recognize advanced radar emitters in modern electronic warfare. So aiming at the Characteristics of approach (EFEA) is proposed in this paper. The main points of [3i and non-ambiflity phase EFEA are that an improved approximate entropy (ApEn) restoral approach [41, were Presented to analyze different method and norm entropy (NE) method are presented to extract radar emitter signals. The methods have some drawbacks in features from radar emitter signals. ApEn can measure engineering applications because quantitative analysis is not quantitatively the complexity and irregularity of radar emitter made and varying signal-to-noise rate (SNR) is not signals from a relatively small amount Of data. NE iS a measure considered. Therefore, the methods cannot be applied to of uncertainty, imbalance and disorderliness of signals. EFEA has good characteristics of easy implementation and short computation time. In the experiment, 9 typical radar emitter signals are chosen to make an experiment of feature extraction main'y in and signal recognition. Experimental results demonstrate that processing. Entropy-based describe average accurate recognition rate amounts to 98.28% in a large information-related properties for an accurate representation range of signal-to-noise rate because ApEn feature and NE of a given signal. [51 Approximate entropy (ApEn) is a feature have good characteristics of clustering the same signals statistic that can be used as a measure to quantify the and separating the different signals and have strong stability, complexity and irregularity of both deterministic and which indicates EFEA is effective and practical. stochastic signals. ApEn is firstly presented by Pincus [6] to evaluate the complexity and irregularity of complex systems. short computation time and ApEn can discem changing complexity and irregularity from a relatively small amount of
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雷达发射机信号的熵特征提取方法
雷达辐射源信号识别是电子情报、电子保障措施和雷达告警接收系统中的一个重要问题,传统方法在现代电子战中已无法识别先进的雷达辐射源。因此,本文针对该方法的特点提出了EFEA方法。[3i]和非双相相位EFEA的主要特点是提出了改进的近似熵(ApEn)恢复方法[41]来分析不同的方法,并提出了范数熵(NE)方法来提取雷达辐射源信号。这些方法在雷达辐射源信号特征方面存在一定的缺陷。ApEn之所以能够测量工程应用,是因为定量分析并不是对雷达辐射源的复杂性和不规则性进行定量分析,而变化的信噪比(SNR)并不是来自相对少量的数据的信号。NE是考虑的一个度量。因此,该方法不适用于信号的不确定性、不平衡性和无序性。EFEA具有易于实现、计算时间短的特点。在实验中,选取了9个典型的雷达发射机信号,进行了特征提取和信号识别实验。实验结果证明了该处理方法。基于熵的描述平均准确识别率达98.28%,在一个大的信息相关属性的准确表示范围内,由于ApEn特征和NE对给定信号的信噪比。[51]近似熵(Approximate entropy, ApEn)是一种对相同信号具有良好聚类特性的统计量,可以作为对不同信号进行量化和分离的度量,具有较强的稳定性、复杂性和非规定性,这表明EFEA是有效和实用的。随机信号。ApEn最早由Pincus[6]提出,用于评价复杂系统的复杂性和不规则性。计算时间短,ApEn可以从相对少量的数据中发现变化的复杂性和不规则性
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