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Traffic Enforcement Mechanism in ATM using Neural Network

机译:使用神经网络的ATM中的流量执行机制

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摘要

In our paper, a novel policing mechanism using neural networks (NNs) is proposed. The mechanism is based upon an accurate estimation of the probability density function (pdf) of the traffic via its count process and implemention using NNs. The pdf based policing requires complex calculations in real time, at very high speeds, which is not feasible via conventional mathematical approaches. The proposed traffic enforcement model is elaborate and more accurate method, which exploits the effectiveness of neural network in learning and predicting non-linear complex functions at high speed. It is a suitable tool to be employed for variable bit rate policing of real time traffic in ATM networks.
机译:在本文中,提出了一种使用神经网络(NNs)的新型管制机制。该机制基于通过流量计数过程以及使用NN的实现对流量的概率密度函数(pdf)的准确估计。基于pdf的管制要求以非常高的速度实时进行复杂的计算,而这是常规数学方法所无法实现的。所提出的交通执法模型是精心设计和更准确的方法,它利用神经网络在高速学习和预测非线性复杂功能中的有效性。它是用于ATM网络中实时流量的可变比特率管制的合适工具。

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