THE USE OF MODEL DISTRIBUTIONS IN THE ANALYSIS OF QUEUING SYSTEMS WITH CORRELATED ARRIVALS

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Abstract

The article considers the task of determining the waiting time for a request in a queue in a general-type single-channel queueing system when time intervals between incoming requests are correlated. For solving the task, it is proposed to carry out decorrelation of specified time intervals using the discrete cosine transform. Generally, to analyze arbitrary distributions included in the expression for a decorrelated sequence, one can suggest an approach based on the approximation of unknown densities by a model distribution. The calculation of cumulants and moments of random variables is very simple compared to the analytical methods. Based on the found final set of cumulants, a model probability density can always be reproduced with a certain error. Generally, to calculate the average waiting time of a request in a queue, it is necessary to determine the correlation properties and one-dimensional probability density of time intervals between incoming requests, synthesize a two-dimensional probability density of a sequence of given intervals that has a measured correlation function, and, further, calculate joint moments and cumulants for correlated values, on which their model density is built.
模型分布在分析具有相关到达的排队系统中的应用
本文考虑了当传入请求之间的时间间隔相关时,在通用型单通道队列系统中确定队列中请求的等待时间的任务。为了解决这一问题,提出利用离散余弦变换对指定时间间隔进行去相关。通常,为了分析去相关序列表达式中包含的任意分布,可以提出一种基于模型分布近似未知密度的方法。与解析方法相比,随机变量的累积量和矩的计算非常简单。基于所发现的最终累积量集,模型概率密度总是可以在一定误差的情况下再现。通常,为了计算队列中请求的平均等待时间,需要确定传入请求之间的时间间隔的相关性质和一维概率密度,对给定的间隔序列合成具有测量相关函数的二维概率密度,并计算相关值的联合矩和累积量,在此基础上构建其模型密度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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