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Two-Stage Neural Network Based Combined Interference Classification and Recognition for a GNSS Receiver

机译:基于两阶段神经网络的GNSS接收机组合干扰分类与识别

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Under the complex war environment based on Global Navigation Satellite Systems (GNSS), suppression interference and spoofing interference would be used in combination by enemy. Thus, the difficulty of interference detection and recognition in the receiver could increase significantly due to the uncertain appearance of these two categories of attacking signals. Aiming to this issue, a BP (Back Propagation) neural network based two-stage interference classification and recognition scheme is proposed towards the combined interference scenario with suppression interference and spoofing. Both networks utilize a three-layer fully connected neural network to realize classifying decisions. The first-stage recognition module adopt nine characteristic parameters extracted from time, frequency and power domains of the digital intermediate frequency (IF) signals, which are fed into a BP neural network, to recognize six typical suppression interferences, such as Single Tone Interference (STI), Multi-Tone Interference (MTI), Linear Frequency Modulation Interference (LFM1), Pulse Interference (PI), BPSK Narrowband Interference (BPSKNBI) and BPSK Wideband Interference (BPSK WBI). However, since spoofing interference has the similar structure as the true satellite signal, the second-stage recognition module is introduced to distinguish the spoofing signal from the true satellite signal by using eleven new characteristic parameters extracted from the two-dimensional array output by the acquisition processing of a receiver. The test results show that the proposed scheme can recognize a kind of suppression interference or a spoofing signal appeared randomly more quickly and accurately.
机译:在基于全球导航卫星系统(GNSS)的复杂战争环境下,敌人将结合使用抑制干扰和欺骗干扰。因此,由于这两类攻击信号的不确定出现,接收机中干扰检测和识别的难度可能会大大增加。针对该问题,针对具有抑制干扰和欺骗的组合干扰场景,提出了一种基于BP神经网络的两阶段干扰分类识别方案。这两个网络都使用三层完全连接的神经网络来实现分类决策。第一阶段识别模块采用从数字中频(IF)信号的时域,频域和功率域中提取的九个特征参数,这些特征参数被馈送到BP神经网络,以识别六种典型的抑制干扰,例如单音干扰( STI),多音干扰(MTI),线性调频干扰(LFM1),脉冲干扰(PI),BPSK窄带干扰(BPSKNBI)和BPSK宽带干扰(BPSK WBI)。但是,由于欺骗干扰具有与真实卫星信号相似的结构,因此引入了第二级识别模块,通过使用从采集输出的二维阵列中提取的十一个新特征参数,将欺骗信号与真实卫星信号区分开来。接收器的处理。测试结果表明,该方案能够更快,更准确地识别出一种抑制干扰或欺骗信号。

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