摘要: |
本文提出了一种新的混沌扩频序列产生方法。该方法基于神经网络的强大学习能力和副近非线性函数能力,应用具有全局最优的BP改进算法通过训练学习建立起具有混沌性态的优化神经网络模型,利用网络权值调整的灵活性来产生混沌扩频序列。计算机仿真结果表明,该模型产生的混沌扩频序列调整更容易,比基于单一混沌映射能产生更多符合扩频通信要求的扩频序列。 |
关键词: 扩频通信 混沌 神经网络 |
DOI:10.3969/j.issn.1001-893X. |
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基金项目: |
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A New Chaotic Spread-Spectrum Sequences Generation Method |
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Abstract: |
A new Chaotic Spread-Spectrum Sequence Generation method is proposed in this paper based on the strong learning ability and nonlinear function approximation capacity of Multi-Layer Perceptrons (MLPs). The chaos generation neural network model and synaptic weights database have been built to generate many chaotic spread-spectrum sequences trained by the modified Back-Propagation (BP) algorithm with various discrete chaotic time series. This model can very easily generate many chaotic spread-spectrum sequences by changing weights of this MLPs. Experimental results show that this scheme can generate much more spread-spectrum sequences than single chaotic map to satisfy the demand of spread-spectrum communication. |
Key words: spread-spectrum communication,chaos, neural networks, |