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Predicting nonlinear network traffic using fuzzy neural network

机译:使用模糊神经网络预测非线性网络流量

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Network traffic is a complex and nonlinear process significantly affected by immeasurable parameters and variables. This paper addresses the use of the five-layer fuzzy neural network (FNN) for predicting the nonlinear network traffic. The structure of this system is introduced in detail. Through training the FNN using back-propagation algorithm with inertial terms the traffic series can be well predicted by this FNN system. We analyze the performance of the FNN in terms of prediction ability as compared with solely neural network. The simulation demonstrates that the proposed FNN is superior to the solely neural network systems. In addition, FNN with different fuzzy reasoning approaches is discussed.
机译:网络流量是一个复杂且非线性的过程,它受到不可估量的参数和变量的显着影响。本文介绍了使用五层模糊神经网络(FNN)预测非线性网络流量的方法。详细介绍了该系统的结构。通过使用带有惯性项的反向传播算法训练FNN,可以通过此FNN系统很好地预测交通量。与单独的神经网络相比,我们根据预测能力来分析FNN的性能。仿真表明,所提出的FNN优于单纯的神经网络系统。此外,还讨论了具有不同模糊推理方法的FNN。

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