An End-to-End Probabilistic Network Calculus with Moment Generating Functions

M. Fidler
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引用次数: 216

Abstract

Network calculus is a min-plus system theory for performance evaluation of queuing networks. Its elegance steins from intuitive convolution formulas for concatenation of deterministic servers. Recent research dispenses with the worst-case assumptions of network calculus to develop a probabilistic equivalent that benefits from statistical multiplexing. Significant achievements have been made, owing for example to the theory of effective bandwidths; however, the outstanding scalability set up by concatenation of deterministic servers has not been shown. This paper establishes a concise, probabilistic network calculus with moment generating functions. The presented work features closed-form, end-to-end, probabilistic performance bounds that achieve the objective of scaling linearly in the number of servers in series. The consistent application of moment generating functions put forth in this paper utilizes independence beyond the scope of current statistical multiplexing of flows. A relevant additional gain is demonstrated for tandem servers with independent cross-traffic
具有矩生成函数的端到端概率网络演算
网络演算是一种用于评价排队网络性能的最小+系统理论。它的优雅源于用于确定服务器连接的直观卷积公式。最近的研究摒弃了网络演算的最坏情况假设,开发了一种受益于统计复用的概率等效方法。已经取得了重大成就,例如有效带宽理论;但是,通过确定服务器的连接建立的出色的可伸缩性尚未得到展示。本文用矩生成函数建立了一个简明的概率网络演算。所提出的工作具有封闭形式,端到端,概率性能界限,可实现串行服务器数量线性扩展的目标。本文提出的矩生成函数的一致性应用,利用了超出当前流统计复用范围的独立性。对于具有独立交叉流量的串联服务器,演示了相关的附加增益
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