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A Neural Network Control for Effective Admission Control in ATM Networks

机译:在ATM网络中实现有效准入控制的神经网络控制

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We propose and analyze a new call admission controller for ATM networks using neural networks(NN).The proposed model is based upon real time measurements of the traffic via a simple parameter,which is the number of cells arriving during the measurement interval.The length of the measurement interval and the number of traffic samples within,are selected to capture the variability properties of the traffic.A neural network controller is then trained to learn the long term correlation properties of the traffic which is essential for effective statistical multiplexing and bandwidth allocation.A large set of training data representing multi service traffic patterns with multiple QOS requirements is used to ensure that the controller can generalize and produce accurate results when confronted with new test data.The reported results prove that the neural network approach is effective in estimating the bandwidth requirements,when compared to other traditional methods that are based upon algorithmatic approach.This isprimarily,due to the unique learning and adaptive capabilities of neural networks enable them to approximate any non-linear function from previous experience.Evidently,such unique capabilities poise neural networks to solve many of the problems encountered in the design of ATM networks.
机译:我们提出并分析了一种新的使用神经网络(NN)的ATM网络呼叫接纳控制器。该模型基于通过一个简单参数(即在测量间隔内到达的信元数)对流量进行实时测量的模型。选择测量间隔和其中的流量样本数量以捕获流量的可变性。然后训练神经网络控制器以学习流量的长期相关性,这对于有效的统计复用和带宽分配必不可少大量的训练数据代表了具有多个QOS要求的多业务流量模式,用于确保控制器在面对新的测试数据时可以泛化并产生准确的结果。与基于algori的其他传统方法相比的带宽需求首先,这是因为神经网络的独特学习和自适应能力使他们能够从以前的经验中近似任何非线性函数。很明显,这种独特能力使神经网络保持了解决ATM设计中遇到的许多问题的能力。网络。

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