基于层次神经网络的自动调制识别

C. Louis, P. Sehier
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引用次数: 65

摘要

介绍了一种基于分层方法构建神经网络的方法,并引入了先验知识来加快学习阶段。在自动调制识别领域,证明了该方法优于单一、大型、全连接的神经网络分类器。这种方法降低了系统的复杂性,以提高泛化,降低了对初始条件的敏感性,也允许学习阶段的自动化。实验结果表明了分层方法的优越性。对于10种调制类型,将层次神经网络分类器与传统的反向传播学习、k近邻分类器和众所周知的二叉决策树进行了比较。识别率高达90%,信噪比(SNR)范围为0 ~ 50 dB。
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Automatic modulation recognition with a hierarchical neural network
Introduces a methodology for building neural networks based on a hierarchical approach, and a priori knowledge incorporation to speed up the learning phase. Superiority over a single, large, fully connected neural network classifier is demonstrated in the area of the automatic modulation recognition. This approach reduces the complexity of the system in order to improve generalization reduced sensitivity to initial conditions also allows the automation of the learning phase. Experimental results illustrate the superiority of the hierarchical approach. For 10 modulation types, the hierarchical neural network classifier is compared with the conventional backpropagation learning, the K-nearest-neighbour classifier and the well-known binary decision trees. Recognition rates are as high as 90% with a signal-to-noise ratio (SNR) ranging from 0 to 50 dB.<>
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