利用马尔可夫链模型加速无线通信网络中罕见事件仿真的算法

I. Lokshina
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引用次数: 3

摘要

提出了一种估算无线通信网络缓冲区溢出概率的有效方法。将排队系统中的缓冲区溢出概率定义为一种罕见事件,可以用马尔可夫链的罕见事件模拟来估计。本文考虑了双节点排队网络;并研究了第二节点的缓冲区溢出事件。分析了从某个状态开始,第二个缓冲区的内容超过某个高级别L的罕见事件的概率。该方法基于缓冲过程的马尔可夫加性表示,导致测度的指数变化,用于重要抽样方法。本文所考虑的例子证实了当第一缓冲有限时,相对误差与某个高阶l无关,而当第一缓冲无限时,给出了有限缓冲情况下测度指数变化的自然推广。只有当第二个节点出现瓶颈时,即可能发生缓冲区溢出时,相对误差才与L无关。然而,当第一个节点为瓶颈时,实验结果证实了相对误差线性绑定到l级。基于重要性采样和交叉熵方法,开发了两种高效的罕见事件仿真算法,并应用于无线通信网络中马尔可夫链建模的溢出概率仿真。给出了数值算例和仿真结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithms to accelerate rare event simulation with Markov chain modeling in wireless telecommunications networks
The paper recommends an effective approach to estimate probability of buffer overflow in wireless telecommunications networks. The buffer overflow probability in queuing systems is defined as a rare event and can be estimated using rare event simulation with Markov chains. Two-node queuing networks are considered in this paper; and an event of buffer overflow at the second node is studied. Probability of a rare event that the content of the second buffer would exceed some high level L, starting from a certain state, is analyzed. The approach is based on Markov additive representation of the buffer processes, leading to exponential change of measure, which is used in an Importance sampling method. The examples, considered in this paper, confirm that when the first buffer is finite, the relative error is bound independent of some high level L. However, when the first buffer is infinite, a natural extension of exponential change of measure for finite buffer case is proposed. The relative error is shown to be bound independent of L only when at the second node is a bottleneck, i.e. buffer overflow may occur. However, when at the first node is a bottleneck, experimental results confirm that the relative error is linearly bound to the level L. Two efficient rare event simulation algorithms, based on the Importance sampling and Cross-entropy methods, are developed and applied to accelerate the overflow probability simulation with Markov chain modeling in wireless telecommunications networks. Numerical examples and simulation results are provided.
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