MGF-based SNC for stationary independent Markovian processes with localized application of martingales

Anne Bouillard
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Abstract

Stochastic Network Calculus is a probabilistic method to compute performance bounds in networks, such as end-to-end delays. It relies on the analysis of stochastic processes using formalism of (Deterministic) Network Calculus. However, unlike the deterministic theory, the computed bounds are usually very loose compared to the simulation. This is mainly due to the intensive use of the Boole’s inequality. On the other hand, analyses based on martingales can achieve tight bounds, but until now, they have not been applied to sequences of servers. In this paper, we improve the accuracy of Stochastic Network Calculus by combining this martingale analysis with a recent Stochastic Network Calculus results based on the Pay-Multiplexing-Only-Once property, well-known from the Deterministic Network calculus. We exhibit a non-trivial class of networks that can benefit from this analysis and compare our bounds with simulation.

Abstract Image

基于 MGF 的静态独立马尔可夫过程 SNC 与马氏体的局部应用
随机网络微积分是一种计算网络性能界限(如端到端延迟)的概率方法。它依赖于使用(确定性)网络微积分的形式分析随机过程。然而,与确定性理论不同的是,计算出的界限通常比模拟的宽松。这主要是由于大量使用了布尔不等式。另一方面,基于马氏不等式的分析可以实现严格的界限,但到目前为止,它们还没有应用于服务器序列。在本文中,我们将马氏分析与最近的随机网络微积分结果相结合,提高了随机网络微积分的准确性,后者基于确定性网络微积分中众所周知的 "支付-多路复用-只有一次 "属性。我们展示了可以从这一分析中获益的一类非三维网络,并将我们的界限与模拟进行了比较。
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