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A stochastic network calculus for many flows

机译:多种流量的随机网络演算

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The stochastic network calculus receives much attention as a new methodology for end-to-end performance evaluation of networks, taking account of the effect of statistical multiplexing. In this paper, we present a new stochastic network calculus for many flows from an approach like large deviations techniques. In an n-node discrete-time tandem network with L flows, let Āθ (t, s) and — S¯−θ (t, s) be the limits of the cumulant generating functions of ĀL (t, s), arrivals to the network, and S¯Li (t, s), services at node i, during time interval (s, t). Then, for the departures D¯L (t, s) from the network during time interval (s, t) and the backlog QL(t) in the network at time t, we prove that the limits of the cumulant generating functions of them denoted by D¯θ (t, s) and Qθ (t), respectively, satisfy an inequality D¯θ (t, s) ≤ Āθ ⊘ (S¯θn ∗ S¯θn−1 ∗ … − S¯θ1) (t, s) and an equality Qθ(t) = Āθ ⊘ (S¯θn ∗ S¯θn−1 ∗ … − S¯θ1) (t, t), where ⊘ and ∗ are deconvolution and convolution operators. By using these results, we propose approximation formulas for the end-to-end evaluation of output burstness and backlog, and we apply the formula on backlog to a tandem network with cross traffic as an example.
机译:考虑到统计复用的影响,作为一种新的网络端到端性能评估方法,随机网络演算备受关注。在本文中,我们针对大流量提出了一种新的随机网络演算,该演算采用了大偏差技术之类的方法。在具有L个流的n节点离散时间串联网络中,令Āθ(t,s)和—S¯(t,s)为极限s L (t,s),到达网络和S L i (t,s)的累积量生成函数,在时间间隔(s,t)内节点i上的服务。然后,对于在时间间隔(s,t)内从网络出发的D L (t,s)和网络上的积压Q L (t)在时间t处,我们证明它们的累积生成函数的极限分别由D θ(t,s)和Q θ(t)表示不等式D θ(t,s)≤Āθ⊘(S¯θ n ∗S¯< sup>θ n−1 ∗…-S¯θ 1 )(t,s)和等式Q θ(t)=Āθ⊘(S¯θ n ∗S¯θ n−1 *…-S(sup>θ 1 )(t,t),其中⊘和∗是解卷积和卷积算子。通过使用这些结果,我们提出了输出突发性和积压的端到端评估的近似公式,并将该公式在积压上应用到具有交叉流量的串联网络。

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