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Characterizing the departure process from a two server Markovian queue: A non-renewal approach

机译:表征两台服务器马尔可夫队列的离开过程:一种非更新方法

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For large queueing network analysis the general computational approach is to utilize decomposition to facilitate computational tractability. To accomplish this individual analysis the input and output streams must be characterized. This usually is done via two-parameter characterizations: the process mean and a variance measure (most commonly the squared coefficient of variation SCV). In most approaches independent and identically distributed (i.i.d.) approximations are used. For multiple input streams and/or multiple (identical) servers, the assumptions of i.i.d. times between arrivals and, similarly, i.i.d. times between departures are particularly theoretically and computationally inaccurate. In this paper we develop a generator for the background multidimensional continuous time Markov chain associated with the inter-departure times for the associated multi-stream and multi-server Markovian queues (where inter-arrival times and service times are Coxian). This generator allows for the computation of the moments of the departure process and the lag-k correlations between successive k-separated departures.
机译:对于大型排队网络分析,一般的计算方法是利用分解来促进计算的可处理性。为了完成这种单独的分析,必须对输入和输出流进行特征化。这通常通过两参数表征来完成:过程均值和方差度量(最常见的是变异系数SCV的平方)。在大多数方法中,使用独立且均匀分布的(i.i.d.)近似值。对于多个输入流和/或多个(相同)服务器,i.i.d。的假设。到达之间的时间,以及类似的两次出发之间的时间在理论和计算上特别不准确。在本文中,我们为背景多维连续时间马尔可夫链开发了一个生成器,该生成器与关联的多流和多服务器马尔可夫队列的出发时间相关(到达时间和服务时间为考克斯)。该生成器允许计算出发过程的时刻以及连续k个分开的出发之间的滞后k相关性。

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