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首页> 外文期刊>Intelligent automation and soft computing >ADAPTIVE CONGESTION CONTROL FOR ATM UBR SERVICE USING NEURAL NETWORKS
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ADAPTIVE CONGESTION CONTROL FOR ATM UBR SERVICE USING NEURAL NETWORKS

机译:使用神经网络的ATM UBR服务的自适应拥塞控制

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This paper presents an adaptive congestion control scheme using neural networks for the Unspecified Bit Rate (UBR) service class in ATM networks. The UBR service supports a general delivering mode for those data with less delay and cell loss, and offers the best effort service. Based on the EPD (Early Packet Discard) technique that basically employs a threshold to define the current traffic status and classifies the cells into two classes, the first cell and the non-first cell, the proposed method provides an adaptive threshold learned from the neural networks in advance. The adaptive threshold will become larger for accommodating both kinds of cells if the traffic is light and become smaller for only accepting the non-first cell if the traffic is heavy. Simulation results show that this scheme can significantly improve the TCP (Transmission Control Protocol) traffic over the UBR service.
机译:本文针对ATM网络中的未指定比特率(UBR)服务类别,提出了一种使用神经网络的自适应拥塞控制方案。 UBR服务为这些数据提供了一种通用的传递模式,从而减少了延迟和单元丢失,并提供了尽力而为的服务。基于EPD(Early Packet Discard)技术,该技术基本上采用阈值来定义当前流量状态,并将信元分为第一信元和非第一信元两类,该方法提供了从神经网络学习到的自适应阈值提前网络。如果业务量较小,则自适应阈值将变大以容纳两种小区;如果业务量较大,则自适应阈值将变小,仅用于容纳非第一小区。仿真结果表明,该方案可以显着改善UBR服务上的TCP(传输控制协议)流量。

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