雷达发射机分类采用非平稳信号分类器

Marthinus C. du Plessis, J. Olivier
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引用次数: 6

摘要

本文提出了一种基于接收脉冲对两台雷达发射机进行区分的分类方法。提出了一种应用非平稳信号分类器的简单雷达发射机模型。该分类器是一种应用于雷达脉冲时频表示的支持向量机。采用粒子群算法对时频表示进行细化,提高了分类精度。在加性高斯白噪声信道中测试了分类精度。据报道,在发射机调制器上,元件公差小至2%,分类精度可接受。
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Radar transmitter classification using a non-stationary signal classifier
This paper presents a classification method which discriminates between two radar transmitters based on the received pulses. A simple radar transmitter model is presented to which a non-stationary signal classifier is applied. The classifier is a support vector machine which is applied to the radar pulse's time-frequency representation. The time-frequency representation is refined using particle swarm optimization to increase the classification accuracy. The classification accuracy is tested in an additive white Gaussian noise channel. An acceptable classification accuracy is reported for component tolerances as small as 2% on the transmitter's modulator.
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