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FAVE: A fast and efficient network Flow AVailability Estimation method with bounded relative error

机译:FAVE:一种具有有限相对误差的快速高效的网络流可用性估计方法

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This paper focuses on helping network providers to carry out network capacity planning and sales projection by answering the question: For a given topology and capacity, whether the network can serve current flow demands with high probabilities? We name such probability as “ flow availability” and present the -flow availability estimation (FAVE) problem, which is a generalisation of network connectivity or maximum flow reliability estimations. Realistic networks are often large and dynamic, so flow availabilities cannot be evaluated analytically and simulation is often used. However, naive Monte Carlo (MC) or importance sampling (IS) techniques take an excessive amount of time. To quickly estimate flow availabilities, we utilize the correlations among link and flow failures to figure out the importance of roles played by different links in flow failures, and design three “sequential importance sampling” (SIS) methods which achieve “bounded or even vanishing relative error” with linear computational complexities. When applying to a realistic network, our method reduces the flow availability estimation cost by 900 and 130 times compared with MC and baseline IS methods, respectively. Our method can also facilitate capacity planning by providing better flow availability guarantees, compared with traditional methods.
机译:本文致力于通过回答以下问题来帮助网络提供商进行网络容量规划和销售预测:对于给定的拓扑和容量,网络是否可以高概率满足当前的流量需求?我们将这种概率称为“流量可用性”,并提出-流量可用性估计(FAVE)问题,它是网络连接性或最大流量可靠性估计的概括。现实的网络通常是大型且动态的,因此无法通过分析来评估流量可用性,并且经常使用模拟。但是,朴素的蒙特卡洛(MC)或重要性采样(IS)技术会花费大量时间。为了快速估计流量可用性,我们利用链路故障与流量故障之间的相关性来找出流量故障中不同链路所扮演的角色的重要性,并设计三种“顺序重要性抽样”(SIS)方法,以实现“有限甚至相对相对消失”。误差”与线性计算复杂度。当应用于实际网络时,与MC和基线IS方法相比,我们的方法分别将流量可用性估算成本降低了900倍和130倍。与传统方法相比,我们的方法还可以通过提供更好的流量可用性保证来促进容量规划。

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