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Congestion control in ATM networks using learning algorithms

机译:ATM网络中的拥塞控制使用学习算法

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This paper describes a 'real time' solution to the link-by-link call admission control (AC) problem in ATM networks for bursty and variable bit rate video traffic and for mixes of them. The proposed method employs SELA, a novel Stochastic Estimator Learning Algorithm, for predicting whether a new call should be accepted or not. Call acceptance decision is derived from the independent two-call and cell-level execution of two distinct learning automata whose selected actions are combined via an AND function. The feedback which the algorithms receive has been drawn from efficient 'equivalent bandwidth' approximations and accurate cell loss probability estimations. This AC mechanism exhibits a remarkable gain obtained from statistical multiplexing, compared with other schemes reported in the literature.
机译:本文介绍了ATM网络中链接链路呼叫准入控制(AC)问题的“实时”解决方案,用于突发和可变比特率视频流量以及它们的混合。所提出的方法采用Sela,一种新型随机估计器学习算法,用于预测应接受是否应接受新呼叫。呼叫验收决策源自独立的双呼叫和单元级执行两个不同的学习自动机,其所选操作通过AND功能组合。算法接收的反馈从高效的“等效带宽”近似和准确的单元丢失概率估计。与文献中报道的其他方案相比,该AC机构表现出从统计复用获得的显着增益。

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