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Predicting the performance of queues-A data analytic approach

机译:预测队列性能-一种数据分析方法

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Existing models of multi-server queues with system transience and non-standard assumptions are either too complex or restricted in their assumptions to be used broadly in practice. This paper proposes using data analytics, combining computer simulation to generate the data and an advanced non-linear regression technique called the Alternating Conditional Expectation (ACE) to construct a set of easy-to-use equations to predict the performance of queues with a scheduled start and end time. Our results show that the equations can accurately predict the queue performance as a function of the number of servers, mean arrival load, session length and service time variability. To further facilitate its use in practice, the equations are developed into an open-source online tool accessible at http://singlequeuesystemstool.com/. The proposed procedure of data analytics can be used to model other more complex systems. (C) 2016 Elsevier Ltd. All rights reserved.
机译:现有的具有系统瞬态和非标准假设的多服务器队列模型过于复杂或受其限制而无法在实践中广泛使用。本文提出了使用数据分析,结合计算机仿真来生成数据和一种称为交替条件期望(ACE)的高级非线性回归技术来构造一组易于使用的方程式,以预测具有计划的队列的性能的方法。开始和结束时间。我们的结果表明,这些方程式可以根据服务器数量,平均到达负载,会话长度和服务时间可变性来准确预测队列性能。为了进一步促进其在实践中的使用,这些方程式被开发为可从http://singlequeuesystemstool.com/访问的开源在线工具。提议的数据分析过程可用于对其他更复杂的系统进行建模。 (C)2016 Elsevier Ltd.保留所有权利。

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