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Research on fuzzy neural network algorithms for nonlinear network traffic predicting

机译:非线性网络流量预测的模糊神经网络算法研究

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This paper addresses the use of fuzzy neural networks (FNN) for predicting the nonlinear network traffic. Through training the fuzzy neural networks with momentum back-propagation algorithm (MOBP) and choosing the appropriate activation function of output node, the traffic series can be well predicted by these structures. From the effective forecasting results obtained, it can be concluded that fuzzy neural networks can be well applicable for the traffic series prediction. In addition,the performance of the FNN was particularly discussed and analyzed in terms of prediction ability compared with solely neural networks. The effectiveness of the proposed FNN is demonstrated through the simulation.
机译:本文介绍了使用模糊神经网络(FNN)预测非线性网络流量。通过用动量反向传播算法(MOBP)训练模糊神经网络并选择适当的输出节点激活函数,可以用这些结构很好地预测交通量。从获得的有效预测结果可以得出结论,模糊神经网络可以很好地适用于交通量序列预测。此外,与单独的神经网络相比,在预测能力方面对FNN的性能进行了特别的讨论和分析。通过仿真证明了所提出的神经网络的有效性。

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