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首页> 外文期刊>Proceedings of the IEEE >Applications of neurocomputing in traffic management of ATM networks
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Applications of neurocomputing in traffic management of ATM networks

机译:神经计算在ATM网络流量管理中的应用

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摘要

In the near future, high speed integrated networks, employing asynchronous transfer mode (ATM) cell switching and multiplexing technique, will be used to provide new and diverse mixture of services and applications. Multimedia teleconferencing, video-on-demand, television broadcasting, and distant learning are some examples of these emerging services. The ATM technique is based on the principle of statistical multiplexing, which is flexible enough to support different types of traffic while providing efficient utilization of the network's resources. New classes of techniques such as neural networks and fuzzy logic have many adaptive, learning and computational capabilities that can be utilized to design effective traffic management algorithms. The subject of this paper is to demonstrate how such neurocomputing techniques can be used to address ATM traffic management issues such as traffic characterization, call admission control, usage parameters control and feedback congestion control.
机译:在不久的将来,采用异步传输模式(ATM)信元交换和多路复用技术的高速集成网络将用于提供服务和应用程序的新的多样化组合。多媒体电话会议,视频点播,电视广播和远程学习是这些新兴服务的一些示例。 ATM技术基于统计复用的原理,该原理足够灵活以支持不同类型的流量,同时提供对网络资源的有效利用。诸如神经网络和模糊逻辑之类的新型技术具有许多自适应,学习和计算能力,可用于设计有效的交通管理算法。本文的主题是演示如何将这种神经计算技术用于解决ATM流量管理问题,例如流量表征,呼叫接纳控制,使用参数控制和反馈拥塞控制。

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