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首页> 外文期刊>Annals of Operations Research >A combined splitting-cross entropy method for rare-event probability estimation of queueing networks
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A combined splitting-cross entropy method for rare-event probability estimation of queueing networks

机译:排队网络稀有概率估计的组合交叉交叉熵方法

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摘要

We present a fast algorithm for the efficient estimation of rare-event (buffer overflow) probabilities in queueing networks. Our algorithm presents a combined version of two well known methods: the splitting and the cross-entropy (CE) method. We call the new method SPLITCE. In this method, the optimal change of measure (importance sampling) is determined adaptively by using the CE method. Simulation results for a single queue and queueing networks of the ATM-type are presented. Our numerical results demonstrate higher efficiency of the proposed method as compared to the original splitting and CE methods. In particular, for a single server queue example we demonstrate numerically that both the splitting and the SPLITCE methods can handle our buffer overflow example problems with both light and heavy tails efficiently. Further research must show the full potential of the proposed method.
机译:我们提出了一种用于快速估计排队网络中稀有事件(缓冲区溢出)概率的快速算法。我们的算法提供了两种众所周知的方法的组合形式:分裂和交叉熵(CE)方法。我们将新方法称为SPLITCE。在该方法中,通过使用CE方法自适应地确定最佳的测量变化(重要性采样)。给出了ATM类型的单个队列和排队网络的仿真结果。我们的数值结果表明,与原始的分裂和CE方法相比,该方法具有更高的效率。特别是,对于单个服务器队列示例,我们通过数字方式演示了拆分和SPLITCE方法都可以有效地解决带有轻尾和重尾的缓冲区溢出示例问题。进一步的研究必须显示出所提出方法的全部潜力。

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