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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Neural network-based radar signal classification system using probability moment and ApEn
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Neural network-based radar signal classification system using probability moment and ApEn

机译:基于神经网络的雷达信号分类系统使用概率力矩和APEN

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摘要

Most of the existing electronic warfare systems use a threat library to identify radar signals. In this paper, new feature parameters for classifying various types of radar signals are introduced. The conventional method uses frequency, pulse repetition interval and pulse width sampled from the pulse description word column as characteristics of a signal. Such sampling technique cannot effectively model each radar signal when dealing with a complex signal array. This paper proposes probability moment and ApEn as an effective feature for the development of high-performance radar signal classifier. As shown in results, the proposed method can effectively classify ambiguous radar signals in the existing system because the signal values are similar but the order is different. In order to verify the performance of the proposed system, 100 types of radar signals in various bands were simulated, and the performance yielded 99% positive classification rate of the 100 radar signals.
机译:大多数现有的电子战系统使用威胁库来识别雷达信号。 本文介绍了用于分类各种类型雷达信号的新特征参数。 传统方法使用从脉冲描述字列中采样的频率,脉冲重复间隔和脉冲宽度作为信号的特性。 在处理复杂信号阵列时,这种采样技术不能有效地模拟每个雷达信号。 本文提出了概率时刻,并成为高性能雷达信号分类器开发的有效特征。 如结果所示,所提出的方法可以有效地对现有系统中的模糊雷达信号进行分类,因为信号值是相似的,但顺序是不同的。 为了验证所提出的系统的性能,模拟了100种类型的磁带中的100种雷达信号,并且性能产生了100个雷达信号的99%的阳性分类率。

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