Spread spectrum digital signal synchronization using neural networks

P. de Bruyne, O. Kjelsen, O. Sacroug
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引用次数: 3

Abstract

The authors investigate whether an artificial neural network (ANN) can be trained to estimate the phase of the signal carrier frequency and acquire the timing of the spreading code sequence, only from samples of the received signal. They present an overview of the current work, the results obtained, and the future developments expected in this area. Very secure digital radio communication can be obtained. The frequency diversity inherent in the large bandwidth virtually eliminates the effect of drop-out due to multipath signal cancellation. A two or three-layer perceptron artificial neural network was used for synchronizing both the phase of the carrier frequency and the spreading code sequence. The network was trained with random samples of the code where the known phase was used to correct the network parameters. It was shown that the network could be trained to recognize the phase of a test sample after training with about 10000 presentations of the code. Results are given showing the performance of the system when presented with random samples of noisy signals.<>
利用神经网络实现扩频数字信号同步
作者研究了人工神经网络能否仅从接收信号的样本中估计信号载波频率的相位并获得扩频码序列的时序。他们概述了目前的工作,取得的成果,并在这一领域的未来发展预期。可以获得非常安全的数字无线电通信。大带宽固有的频率分集几乎消除了由于多径信号抵消而产生的丢包效应。采用两层或三层感知器人工神经网络实现载波频率相位和扩频码序列的同步。该网络使用代码的随机样本进行训练,其中已知的相位用于校正网络参数。结果表明,在训练了大约10000次代码后,该网络可以被训练来识别测试样本的阶段。实验结果显示了该系统在随机噪声信号下的性能
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