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Path-wise performance in a tree-type network: Per-stream loss probability, delay, and delay variance analyses

机译:树型网络中的按路径性能:每流丢失概率,延迟和延迟方差分析

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摘要

This paper deals with path-wise performance analysis rather than a nodal one to enrich results previously obtained in the literature under simple but unsatisfactory assumptions, e.g., Poisson processes. First deriving the per-stream loss probability, delay, and delay variance of an isolated queue with multi-class input streams modeled by heterogeneous two-state Markov-modulated Poisson processes (MMPPs), we then propose simple and novel decomposition schemes working together with an input parameter modification scheme to (approximately) extract the per-stream output process for a lossy queue receiving MMPPs under a general service time distribution. The novelty of the decompositions is that they can be easily implemented based on a lossless queueing model. Through numerical experiments, we show that the accuracy in estimating the per-stream output process using such schemes is good. These decomposition schemes together with the input parameter modification scheme and a moment-based fitting algorithm used to fit the per-stream output as a two-state MMPP make analysis of path-wise performance viable by virtually treating each node in isolation along a path to get performance measures sequentially from the source node en route to the destination node.
机译:本文将进行路径性能分析,而不是简单的节点分析,以丰富先前在简单但不令人满意的假设下(例如泊松过程)在文献中获得的结果。首先通过异质两态马尔可夫调制泊松过程(MMPPs)建模,推导具有多类输入流的隔离队列的每流丢失概率,延迟和延迟方差,然后提出与之协同工作的简单新颖的分解方案一种输入参数修改方案,用于(近似)提取在一般服务时间分配下接收MMPP的有损队列的每流输出过程。分解的新颖之处在于可以基于无损排队模型轻松地实现分解。通过数值实验,我们证明了使用这种方案估计每流输出过程的准确性很好。这些分解方案与输入参数修改方案以及基于矩的拟合算法(用于将每流输出拟合为两种状态的MMPP)一起,通过对沿路径隔离的每个节点进行虚拟处理,从而可以对路径性能进行分析。从源节点到目标节点,依次获取性能指标。

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