On bounds for token probabilities in a class of generalized stochastic Petri nets

H. Ammar, S. Islam
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引用次数: 8

Abstract

Methods are presented for computing tight bounds for steady-state token probabilities of a class of generalized stochastic net (GSPN) models. Such bounds also give a better estimate of the error produced when decompositions and aggregations are used to compute the various performance measures. First a method is described to compute the best lower and upper bounds for conditional token probabilities of a class of GSPN when only the subsequent is considered. The authors show that such bounds can be improved if additional information about other subnets is available. They extend the technique and outline an algorithm to compute the bounds for error due to aggregation and decomposition at the GSPN level. An example is presented to illustrate the technique and algorithm.<>
一类广义随机Petri网中标记概率的界
给出了一类广义随机网络(GSPN)模型稳态令牌概率的紧界计算方法。当使用分解和聚合来计算各种性能度量时,这样的界限还可以更好地估计产生的误差。首先描述了在只考虑后续情况下计算一类GSPN的条件令牌概率的最佳下界和上界的方法。作者表明,如果可以获得其他子网的附加信息,则可以改进这种边界。他们扩展了该技术并概述了一种算法来计算由于GSPN级别的聚合和分解而导致的误差界限。最后给出了一个实例来说明该方法和算法。
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