Neural network training using genetic algorithms in ATM traffic control

Xuanzhao Lu, N. Bourbakis
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引用次数: 2

Abstract

There are various traditional mathematical approaches used in ATM traffic control to maintain the QoS. However, most of these approaches are not suitable for handling the wide variety of ATM services and diversity of their combinations. Building an efficient network controller which can control the network traffic is a difficult task. The advantage of using neural nets in ATM is that the QoS can be accurately estimated without detailed user action models or knowledge about the switching system architecture. The disadvantage is that it will take longer time to train with ATM network changes. In this paper, we use genetic algorithms in neural network weights training for ATM call admission control and usage parameter control. The simulation results have shown not only a guarantee for the QoS of all the services, but also a saving of the system bandwidth and an improvement of the throughput.
基于遗传算法的ATM交通控制神经网络训练
在ATM流量控制中,有各种传统的数学方法来维持QoS。然而,这些方法中的大多数都不适合处理各种各样的ATM服务及其组合。构建一个高效的网络控制器来控制网络流量是一项艰巨的任务。在ATM中使用神经网络的优点是可以在不需要详细的用户行为模型或不了解交换系统体系结构的情况下准确地估计QoS。缺点是随着ATM网络的变化需要较长的训练时间。本文将遗传算法应用于ATM呼叫准入控制和使用参数控制的神经网络权值训练中。仿真结果表明,该方法不仅保证了所有业务的QoS,而且节省了系统带宽,提高了吞吐量。
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