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Improving ANN BFSK Demodulator Performance with Training Data Sequence Sent by Transmitter

机译:通过发射机发送的培训数据序列,改进ANN BFSK解调器性能

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In this paper the effect of training neural network BFSK demodulator with noisy data (sent by transmitter and affected by channel) is discussed and the results is compared with predefined noiseless data bits. Distributed time-delay neural network is selected and get trained by both noisy and noiseless data bits. Simulations show that training a neural network demodulator by predetermined data bits sent by transmitter (noisy data) helps demodulator detect data bits with less error. That is because noisy data can give the neural network demodulator some information about channel behavior and environmental noise and consequently it can help receiver to detect data bits intelligently. Matlab simulations in an AWGN channel prove the idea.
机译:在本文中,讨论了训练神经网络BFSK解调器与嘈杂数据(由发射机发送并受通道的影响)的影响,并将结果与预定义无噪声数据位进行比较。 选择分布的时间延迟神经网络并通过噪声和无噪声数据位进行培训。 模拟表明,通过发射机发送的预定数据比特(噪声数据)训练神经网络解调器有助于解调器检测数据位,以较少的错误。 这是因为嘈杂的数据可以给出神经网络解调器一些关于信道行为和环境噪声的信息,因此它可以帮助接收器智能地检测数据比特。 在AWGN频道中的Matlab模拟证明了这个想法。

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