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Toward Convolutional Neural Networks on Pulse Repetition Interval Modulation Recognition

机译:面向卷积神经网络的脉冲重复间隔调制识别

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摘要

In modern electronic warfare environments, there are multiple-radar transmitting signals. For an electronic support system, it is essential to recognize the modulation of pulse repetition intervals (PRIs), since it is directly related to the indication of radar emitters. However, PRI modulations are more difficult to recognize in modern electronical environments due to the high ratio of lost and spurious pulses. Therefore, a fully automatic approach for recognizing seven PRI modulation types using a convolutional neural network (CNN) is proposed in this letter. Simulation results show that our CNN-based recognition method not only promotes performance but is also robust to the environment with lost and spurious pulses. The recognition accuracy is 96.1% with 50% lost pulses and 20% spurious pulses in simulation scenario.
机译:在现代电子战环境中,存在多雷达发射信号。对于电子支持系统,必须识别脉冲重复间隔(PRIs)的调制,因为它与雷达发射器的指示直接相关。但是,由于丢失和杂散脉冲的比例很高,在现代电子环境中更难以识别PRI调制。因此,本文提出了一种使用卷积神经网络(CNN)识别7种PRI调制类型的全自动方法。仿真结果表明,我们基于CNN的识别方法不仅可以提高性能,而且对于丢失和伪造脉冲的环境也具有鲁棒性。在仿真情况下,识别精度为96.1%,其中丢失脉冲为50%,杂散脉冲为20%。

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