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Efficient Decomposition Algorithm for Stationary Analysis of Complex Stochastic Petri Net Models

机译:复杂随机培养网模型静止分析的高效分解算法

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Stochastic Petri nets are widely used for the modeling and analysis of non-functional properties of critical systems. The state space explosion problem often inhibits the numerical analysis of such models. Symbolic techniques exist to explore the discrete behavior of even complex models, while block Kronecker decomposition provides memory-efficient representation of the stochastic behavior. However, the combination of these techniques into a stochastic analysis approach is not straightforward. In this paper we integrate saturation-based symbolic techniques and decomposition-based stochastic analysis methods. Saturation-based exploration is used to build the state space representation and a new algorithm is introduced to efficiently build block Kronecker matrix representation to be used by the stochastic analysis algorithms. Measurements confirm that the presented combination of the two representations can expand the limits of previous approaches.
机译:随机培养网广泛用于关键系统非功能性特性的建模和分析。状态空间爆炸问题通常会抑制这些模型的数值分析。存在符号技术以探索甚至复杂模型的离散行为,而阻止kronecker分解提供了随机行为的内存有效的表示。然而,这些技术与随机分析方法的组合并不简单。在本文中,我们集成了基于饱和的象征技术和基于分解的随机分析方法。基于饱和的探索用于构建状态空间表示,并引入了一种新的算法以有效地构建了随机分析算法使用的块矩阵矩阵表示。测量确认,两种表示的所呈现的组合可以扩大以前方法的限制。

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