4G网络中MEC的跨层损耗判别算法

M. Diarra, W. Dabbous, M. A. Ismail, T. Turletti
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引用次数: 1

摘要

传统的基于损失的拥塞控制算法(CCAs)在无线网络中存在性能问题,主要是由于它们无法区分无线随机损失和拥塞损失。已经提出了不同的损失识别算法来解决这个问题,但它们对于4G网络来说效率不高,因为它们没有考虑各种链路层机制的影响,如自适应调制、编码和重传技术对LTE无线接入网(ran)中的拥塞。我们提出MELD(基于MEC的边缘丢失识别),这是一种新的服务器端丢失识别机制,它利用多访问边缘计算(MEC)服务的最新进展,根据实时RAN统计数据来区分数据包丢失。我们的方法通过MEC的无线网络信息服务收集相关的无线电信息,并使用它来正确区分随机损失和拥塞损失。我们用QUIC传输协议进行的实验研究表明,当MELD与NewReno一起使用时,货运量提高了80%以上,与Cubic一起使用时货运量提高了8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-layer Loss Discrimination Algorithms for MEC in 4G networks
Traditional loss-based Congestion Control Algorithms (CCAs) suffer from performance issues over wireless networks mostly due to their inability to distinguish wireless random losses from congestion losses. Different loss discrimination algorithms have been proposed to tackle this issue but they are not efficient for 4G networks since they do not consider the impact of various link layer mechanisms such as adaptive modulation and coding and retransmission techniques on congestion in LTE Radio Access Networks (RANs). We propose MELD (MEC-based Edge Loss Discrimination), a novel server-side loss discrimination mechanism that leverages recent advancements in Multi-access Edge Computing (MEC) services to discriminate packet losses based on real-time RAN statistics. Our approach collects the relevant radio information via MEC’s Radio Network Information Service and uses it to correctly distinguish random losses from congestion losses. Our experimental study made with the QUIC transport protocol shows over 80% higher goodput when MELD is used with NewReno and 8% higher goodput when used with Cubic.
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