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Access flow control scheme for ATM networks using neural-network-based traffic prediction

机译:使用基于神经网络的流量预测的ATM网络访问流控制方案

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摘要

The authors propose a new approach to the problem of congestion control arising at the user network interface (UNI) of ATM-based broadband networks. The access flow control mechanism operates on the principle of feedback control. It uses a finite impulse response (FIR) neural network to accurately predict the traffic arrival patterns. The predicted output in conjunction with the current queue information of the buffer can be used as a measure of congestion. When the congestion level is reached, a control signal is generated to throttle the input arrival rate. The FIR multilayer perceptron model and its training algorithm are discussed. Simulation results presented in the paper suggest that the scheme provides a simple and efficient traffic management for ATM networks.
机译:作者针对基于ATM的宽带网络的用户网络接口(UNI)出现的拥塞控制问题提出了一种新方法。访问流控制机制根据反馈控制原理进行操作。它使用有限脉冲响应(FIR)神经网络来准确预测交通到达模式。结合缓冲器的当前队列信息的预测输出可以用作拥塞的量度。当达到拥塞级别时,将生成控制信号以限制输入的到达速率。讨论了FIR多层感知器模型及其训练算法。本文给出的仿真结果表明,该方案为ATM网络提供了一种简单而有效的流量管理。

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