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Using Infinitesimal Perturbation Analysis of Stochastic Flow Models to Recover Performance Sensitivity Estimates of Discrete Event Systems

机译:随机流动模型的无限扰动分析回收离散事件系统的性能敏感性估计

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Stochastic Flow Models (SFMs) form a class of hybrid systems used as abstractions of complex Discrete Event Systems (DES) for the purpose of deriving performance sensitivity estimates through Infinitesimal Perturbation Analysis (IPA) techniques when these cannot be applied to the original DES. In this paper, we establish explicit connections between gradient estimators obtained through a SFM and those obtained in the underlying DES, thus providing analytical evidence for the effectiveness of these estimators which has so far been limited to empirical observations. We consider DES for which analytical expressions of IPA (or finite difference) estimators are available, specifically G/G/1 and G/G/1/K queueing systems. We show that, when evaluated on the same sample path of the underlying DES, the IPA gradient estimators of states, event times, and various performance metrics derived through SFMs are, under certain conditions, the same as those of the associated DES or their expected values are asymptotically the same under large traffic rates.
机译:随机流动模型(SFMS)形成一类混合系统,其用作复杂的离散事件系统(DES)的抽象,以便通过当这些不能应用于原始DES时通过无限扰动分析(IPA)技术来导出性能敏感性估计。在本文中,我们在通过SFM获得的梯度估计与基础DES获得的梯度估计之间建立了明确的连接,从而为这些估算者提供了分析证据,这些估算者已经限于经验观察。我们考虑使用IPA(或有限差异)估计的分析表达式,特别是G / G / 1和G / G / 1 / K排队系统。我们表明,当在底层DES的相同样本路径上评估时,状态,事件时间和通过SFMS导出的各种性能指标的IPA梯度估计值在某些条件下,与相关的DES或其预期相同在大型交通率下,值是渐近相同的。

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