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An Exponential Active Queue Management Method Based on Random Early Detection

机译:一种基于随机早期检测的指数活动队列管理方法

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Congestion is a key topic in computer networks that has been studied extensively by scholars due to its direct impact on a network’s performance. One of the extensively investigated congestion control techniques is random early detection (RED). To sustain RED’s performance to obtain the desired results, scholars usually tune the input parameters, especially the maximum packet dropping probability, into specific value(s). Unfortunately, setting up this parameter into these values leads to good, yet biased, performance results. In this paper, the RED-Exponential Technique (RED_E) is proposed to deal with this issue by dropping arriving packets in an exponential manner without utilizing the maximum packet dropping probability. Simulation tests aiming to contrast E_RED with other Active Queue Management (AQM) methods were conducted using different evaluation performance metrics including mean queue length (), throughput (), average queuing delay (), overflow packet loss probability (), and packet dropping probability (). The reported results showed that E_RED offered a marginally higher satisfactory performance with reference to and than that found in common AQM methods in cases of heavy congestion. Moreover, RED_E compares well with the considered AQM methods with reference to the above evaluation performance measures using minimum threshold position () at a router buffer.
机译:拥塞是计算机网络中的一个关键主题,因为它是由于其直接影响网络的性能而广泛的学者研究。其中一个受调查的拥塞控制技术是随机早期检测(红色)。为了维持红色的表现来获得所需的结果,学者通常会调整输入参数,尤其是最大数据包丢弃概率,以特定值。不幸的是,将此参数设置为这些值,导致良好但偏见,性能结果。在本文中,提出了一种通过指数方式丢弃到达数据包来处理这个问题的红指数技术(RED_E),而不利用最大分组丢弃概率。使用不同的评估性能度量来进行仿真测试,其使用其他活动队列管理(AQM)方法进行对比,包括平均队列长度(),吞吐量(),平均排队延迟(),溢出分组丢失概率()和分组丢弃概率()。据报道的结果表明,E_RED在常见的AQM方法中发现了较高的令人满意的令人满意的性能,在重大拥堵情况下。此外,Red_E在考虑的AQM方法中,参考路由器缓冲区处的最小阈值位置()参考上述评估性能措施相比很好地比较。

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