Simulation-based predictive analytics for dynamic queueing systems

Huiyin Ouyang, B. Nelson
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引用次数: 8

Abstract

Simulation and simulation optimization have primarily been used for static system design problems based on long-run average performance measures. Control or policy-based optimization has been a weakness, because it requires a way to predict future behavior based on current state and time information. This work is a first step in that direction with a focus on congestion measures for queueing systems. The idea is to fit predictive models to dynamic sample paths of the system state from a detailed simulation. We propose a two-step method to dynamically predict the probability that the system state belongs to a certain subset and test the performance of this method on two examples.
基于仿真的动态排队系统预测分析
仿真和仿真优化主要用于基于长期平均性能度量的静态系统设计问题。基于控制或策略的优化一直是一个弱点,因为它需要一种基于当前状态和时间信息预测未来行为的方法。这项工作是朝着这个方向迈出的第一步,重点关注排队系统的拥塞措施。其思想是将预测模型拟合到系统状态的动态样本路径中。提出了一种两步法来动态预测系统状态属于某一子集的概率,并在两个实例上测试了该方法的性能。
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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