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Software Demodulation of Weak Radio Signals using Convolutional Neural Network

机译:利用卷积神经网络对弱无线电信号进行软件解调

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In this paper we proposed the use of JT65A radio communication protocol for data exchange in wide-area monitoring systems in electric power systems. We investigated the software demodulation of the multiple frequency shift keying weak signals transmitted with JT65A communication protocol using deep convolutional neural network. We presented the demodulation performance in form of symbol and bit error rates. We focused on the interference immunity of the protocol over an additive white Gaussian noise with average signal-to-noise ratios in the range from −30 dB to 0 dB, which was obtained for the first time. We proved that the interference immunity is about 1.5 dB less than the theoretical limit of non-coherent demodulation of orthogonal MFSK signals.
机译:在本文中,我们提出了在电力系统中的广域监测系统中使用JT65A无线电通信协议进行数据交换。我们调查了使用深卷积神经网络与JT65A通信协议发送的多频移键控弱信号的软件解调。我们以符号和误码率的形式提出了解调性能。我们专注于在附加白色高斯噪声上的方案的干扰免疫力,其具有-30dB至0 dB的平均信噪比,这是第一次获得的。我们证明了干扰免疫比正交MFSK信号的非相干解调的理论极限小约1.5 dB。

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