ATM流量数据的分析与建模

Y. Chu, T. Duncan, M. T. Matache, B. Pasik-Duncan, P. Zimmer
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引用次数: 4

摘要

本文对异步传输模式(ATM)小区数据进行了研究,从数据分析和数据建模两个方面进行了研究。对于工作的数据分析部分,将完成单位时间内的单元计数,并确定单元之间的到达间隔时间。对数据中的两个大的可变比特率用户和一个恒定比特率用户进行源建模。从到达间隔时间的经验分布来看,源建模由一系列随机变量对(X, Y)进行,其中X表示单元爆发,Y表示爆发之间的到达间隔时间。在每个突发内,单元的分布由有限状态马尔可夫链决定,突发间到达时间也由两个用户的不同有限状态马尔可夫链决定。通过比较模型和跟踪数据的到达间隔时间对模型进行验证。完成了对缓冲区中队列的分析;还确定了队列尾部的分位数,以及平均细胞延迟和细胞损失率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and modeling of ATM traffic data
This paper describes a study of asynchronous transfer mode (ATM) cell data, considering both the analysis and the modeling of the data. For the data analysis portion of the work, cell counts per unit time are done, and interarrival times between cells are determined. Source modeling is done for the two large variable bit rate users and a constant bit rate user from the data. From the empirical distribution of interarrival times, the source modeling is made by a sequence of pairs of random variables (X, Y) where X represents the cell bursts and Y represents the interarrival times between bursts. Within each burst, the distribution of cells is determined by a finite state Markov chain, and the interarrival times of the bursts are also determined by a different finite state Markov chain for two users. The model is validated by comparing the interarrival times of the model and of the trace data. The analysis of the queue in the buffer is done; quantiles of the tail of the queue are also determined, as well as mean cell delays and cell loss ratios.
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