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Transient analysis of non-Markovian models using stochastic state classes

机译:非随机状态模型的非马尔可夫模型的瞬态分析

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摘要

The method of stochastic state classes approaches the analysis of Generalised Semi Markov Processes (GSMPs) through the symbolic derivation of probability density functions over supports described by Difference Bounds Matrix (DBM) zones. This makes steady state analysis viable, provided that at least one regeneration point is visited by every cyclic behaviour of the model. We extend the approach providing a way to derive transient probabilities. To this end, stochastic state classes are extended with a supplementary timer that enables the symbolic derivation of the distribution of time at which a class can be entered. The approach is amenable to efficient implementation when model timings are given by expolynomial distributions, and it can be applied to perform transient analysis of GSMPs within any given time bound. In the special case of models underlying a Markov Regenerative Process (MRGP), the method can also be applied to the symbolic derivation of local and global kernels, which in turn provide transient probabilities through numerical integration of generalised renewal equations. Since much of the complexity of this analysis is due to the local kernel, we propose a selective derivation of its entries depending on the specific transient measure targeted by the analysis.
机译:随机状态类的方法通过对概率边界函数(DBM)区域描述的支撑上的概率密度函数进行符号推导,从而对广义半马尔可夫过程(GSMP)进行分析。只要模型的每个循环行为都至少要访问一个再生点,这就能进行稳态分析。我们扩展了方法,提供了一种导出瞬态概率的方法。为此,使用辅助计时器扩展了随机状态类,该辅助计时器使得能够以符号形式推导可输入类的时间分布。当模型计时由多项式分布给出时,该方法适合有效实施,并且可以应用于在任何给定时间范围内执行GSMP的瞬态分析。在基于马尔可夫再生过程(MRGP)的模型的特殊情况下,该方法也可以应用于局部和全局核的符号推导,这反过来又可以通过广义更新方程的数值积分来提供瞬态概率。由于此分析的大部分复杂性是由于本地内核引起的,因此我们建议根据分析所针对的特定瞬态度量来选择性推导其条目。

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