Refined mean‐field approximation for discrete‐time queueing networks with blocking

Yangyang Pan, P. Shi
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Abstract

We study a discrete‐time queueing network with blocking that is primarily motivated by outpatient network management. To tackle the curse of dimensionality in performance analysis, we develop a refined mean‐field approximation that deals with changing population size, a nonconventional feature that makes the analysis challenging within the existing literature. We explicitly quantify the convergence rate for this approximation as O(1/N)$$ O\left(1/N\right) $$ with N$$ N $$ being the system size. Not only is this convergence better than the O(1/N)$$ O\left(1/\sqrt{N}\right) $$ convergence proven in prior work, but our approximation shows a significant improvement in performance prediction accuracy when the system size is small, compared to the conventional (unrefined) mean‐field approximation. This accuracy makes our approximation appealing to support decision‐making in practice.
具有阻塞的离散时间排队网络的精细化平均场逼近
我们研究了一个离散时间排队网络阻塞,主要是由门诊网络管理的动机。为了解决性能分析中的维数诅咒,我们开发了一种改进的平均场近似,用于处理不断变化的人口规模,这是一种非传统的特征,使分析在现有文献中具有挑战性。我们明确地将这个近似的收敛速率量化为O(1/N) $$ O\left(1/N\right) $$,其中N $$ N $$为系统大小。这种收敛性不仅优于先前工作中证明的0 (1/N) $$ O\left(1/\sqrt{N}\right) $$收敛性,而且与传统的(未精炼的)平均场近似相比,我们的近似在系统规模较小时显示出性能预测精度的显着提高。这种准确性使我们的近似具有在实践中支持决策的吸引力。
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