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DSSS Signal Parameter Detection and PN Sequence Estimation Based on SOFM Neural Network

机译:基于SOFM神经网络的DSSS信号参数检测和PN序列估计

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摘要

Having not the apriority knowledge about the DSSS signal in the non-cooperation condition, we utilize a self-organizing feature map (SOFM) neural network algorithm to detection and identify the PN sequence. A new method that is suit DSSS signal is proposed according the Kohonen rule in SOFM theory. Utilizing the characteristic based on non-supervised learning rule, the blind algorithm can estimation the PN sequence in low SNR. The computer simulation and experiment test demonstrated that the algorithm is effective. Comparing the traditional slip-correlation method, the SOFM algorithm's BER and implementation complexity is lower.
机译:由于没有非合作条件下有关DSSS信号的先验知识,我们利用自组织特征图(SOFM)神经网络算法来检测和识别PN序列。根据SOFM理论中的Kohonen法则,提出了一种适合DSSS信号的新方法。利用基于非监督学习规则的特征,盲算法可以估计低信噪比的PN序列。计算机仿真和实验测试表明该算法是有效的。与传统的滑动相关方法相比,SOFM算法的BER和实现复杂度较低。

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