FABMon: Enabling Fast and Accurate Network Available Bandwidth Estimation

Tao Jin, Weichao Li, Qing Li, Qianyi Huang, Yong Jiang, Shutao Xia
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Abstract

Characterizing the end-to-end network available bandwidth (ABW) is an important but challenging task. Although a number of ABW estimation tools have been introduced over the past two decades, applying them to the real-world networks is still difficult because of the biased results, heavy load, and long measurement time. In this paper, we propose a novel Burst Queue Recovery (BQR) model to infer the ABW. BQR first induces an instant network congestion and then observes the one-way delay (OWD) variation until the tight link recovers from the congestion. By correlating the OWDs with the queue length variation, BQR can calculate the ABW accurately. Compared to the traditional probe gap model (PGM) and probe rate model (PRM), our theoretical analysis and simulations show that BQR is more tolerant to the transient traffic burst and supports the scenarios with multiple congestible links. Based on the model, we build FABMon, a fast and accurate ABW estimation tool. Our experiments show that FABMon can measure ABW within 50 milliseconds, and achieve much more accurate measurement results than the existing tools with a very small volume of probe packets.
FABMon:实现快速准确的网络可用带宽估计
描述端到端网络可用带宽(ABW)是一项重要但具有挑战性的任务。尽管在过去的二十年中已经引入了许多ABW估计工具,但由于结果有偏差、负载重和测量时间长,将它们应用于现实世界的网络仍然很困难。本文提出了一种新的突发队列恢复(BQR)模型来推断ABW。BQR首先引起瞬时网络拥塞,然后观察单向延迟(OWD)变化,直到紧链路从拥塞中恢复。通过将owd与队列长度变化相关联,BQR可以准确地计算出ABW。理论分析和仿真结果表明,与传统的探测间隙模型(PGM)和探测速率模型(PRM)相比,BQR具有更强的瞬时流量突发容忍度,支持多链路拥塞场景。在此基础上,构建了快速、准确的ABW估计工具FABMon。我们的实验表明,FABMon可以在50毫秒内测量ABW,并且在非常小的探测包体积下获得比现有工具更精确的测量结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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