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首页> 外文期刊>Discrete event dynamic systems: Theory and applications >ESTIMATION METHODS FOR PASSAGE TIMES USING ONE-DEPENDENT CYCLES
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ESTIMATION METHODS FOR PASSAGE TIMES USING ONE-DEPENDENT CYCLES

机译:一依赖周期的通行时间估计方法

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The lengths of certain passage-time intervals (random time intervals) in discrete-event stochastic systems correspond to delays in computer, communication, manufacturing, and transportation systems. Simulation is often the only available means for analyzing a sequence of such lengths. It is sometimes possible to obtain meaningful estimates for the limiting average delay indirectly, that is, without measuring lengths of individual passage-time intervals. For general time-average limits of a sequence of delays, however, it is necessary to measure individual lengths and combine them to form point and interval estimates. We consider sequences of delays determined by state transitions of a generalized semi-Markov process and introduce a recursively-generated sequence of real-valued random vectors, called start vectors, to provide the link between the starts and terminations of passage-time intervals. This method of start vectors for measuring delays avoids the need to ''tag'' entities in the system. We show that if the generalized semi-Markov process has a recurrent single-state, then the sample paths of any sequence of delays can be decomposed into one-dependent, identically distributed cycles. We then show that an extension of the regenerative method for analysis of simulation output can be used to obtain meaningful point estimates and confidence intervals for time-average limits. This estimation procedure is valid not only when there are no ongoing passage times at any regeneration point but, unlike previous methods, also when the sequence of delays does not inherit regenerative structure. Application of these methods to a manufacturing cell with robots is discussed. [References: 30]
机译:离散事件随机系统中某些通过时间间隔(随机时间间隔)的长度对应于计算机,通信,制造和运输系统中的延迟。模拟通常是分析此类长度序列的唯一可用方法。有时有可能间接获得极限平均延迟的有意义的估计,也就是说,无需测量各个通过时间间隔的长度。但是,对于一系列延迟的一般时间平均限制,有必要测量单个长度并将其组合以形成点和间隔估计。我们考虑由广义半马尔可夫过程的状态转换确定的延迟序列,并引入递归生成的实值随机向量序列(称为开始向量),以提供通过时间间隔的开始和终止之间的链接。这种用于测量延迟的起始向量方法避免了在系统中“标记”实体的需求。我们表明,如果广义半马尔可夫过程具有递归的单状态,那么任何延迟序列的样本路径都可以分解为一个依赖的,分布均匀的周期。然后,我们表明可以将再生方法的扩展用于模拟输出的分析,以获取有意义的点估计和时间平均限制的置信区间。该估计程序不仅在任何再生点都没有正在进行的通过时间时有效,而且与以前的方法不同,在延迟序列不继承再生结构时也有效。讨论了这些方法在具有机器人的生产单元中的应用。 [参考:30]

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