具有快速训练提示的BFSK神经网络解调器

M. Amini, Mohammad Moghadasi, Iman Fatehi
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引用次数: 6

摘要

本文提出了一种人工神经网络解调器,用于解调二进制移频键控信号。与传统的相干解调和非相干解调方法以及其他神经网络解调方法相比,该解调方法具有一些重要的特点。与传统解调器相比,这种解调器(在其两层中使用抽头延迟线)不需要任何带通滤波器(选择所需的频带),任何脉冲整形滤波器(担心其输出清晰度)和任何同步本地振荡器和其他通常的解调器组件。它只是一个神经网络实现解调器,应该被称为软解调器,因为一旦它被适当地训练用于一种特殊的调制,它就能很好地适应这种调制,并且很容易训练它用于另一种调制方案,而不需要改变硬件,即训练它然后使用它!与之前提出的其他人工神经网络解调器相比,它可以更快地训练(或使用更少的训练数据位),具有更有效的误码率曲线,并且具有更好的性能(MSE或SSE)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A BFSK Neural Network Demodulator with Fast Training Hints
In this paper an artificial neural network demodulator to demodulate binary frequency shift keying signal is proposed. This demodulator has some important features compared with conventional method such as coherent and non-coherent demodulator and also other proposed neural network demodulators. In contrast with conventional demodulator, this demodulator (which uses a tapped delayed line in its two layers) does not need any band pass filter (to select the desired frequency band), any pulse shaping filter (to worry about its output sharpness) and any synchronous local oscillator and the other usual demodulator components. it is just a neural network implementation demodulator, that should be called soft demodulator, because once it is trained properly for a special kind of modulation, it works well for that kind of modulation and it is easy to train it for another modulation scheme without changing hardware, i.e., train it and then use it ! Compared with the other ANN demodulators proposed before it can be trained faster (or with less training data bits), it has more efficient BER curve and also has a better performance (MSE or SSE).
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