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Markov Decision Petri Net and Markov Decision Well-Formed Net Formalisms

机译:马尔可夫决策Petri网和马尔可夫决策格式良好的网络形式主义

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摘要

In this work, we propose two high-level formalisms, Markov Decision Petri Nets (MDPNs) and Markov Decision Well-formed Nets (MDWNs), useful for the modeling and analysis of distributed systems with probabilistic and non deterministic features: these formalisms allow a high level representation of Markov Decision Processes. The main advantages of both formalisms are: a macroscopic point of view of the alternation between the probabilistic and the non deterministic behaviour of the system and a syntactical way to define the switch between the two behaviours. Furthermore, MDWNs enable the modeller to specify in a concise way similar components. We have also adapted the technique of the symbolic reachability graph, originally designed for Well-formed Nets, producing a reduced Markov decision process w.r.t. the original one, on which the analysis may be performed more efficiently. Our new formalisms and analysis methods are already implemented and partially integrated in the Great-SPN tool, so we also describe some experimental results.
机译:在这项工作中,我们提出两种高级形式主义,即马尔可夫决策Petri网(MDPNs)和马尔可夫决策格式良好的网(MDWNs),可用于对具有概率和非确定性特征的分布式系统进行建模和分析:马尔可夫决策过程的高级表示。两种形式主义的主要优点是:在系统的概率行为和非确定性行为之间交替的宏观观点,以及定义两种行为之间转换的句法方式。此外,MDWN使建模者可以简明的方式指定相似的组件。我们还采用了符号可达性图的技术,该技术最初是为格式良好的网络设计的,从而减少了马尔可夫决策过程。原始数据,可以对其进行更有效的分析。我们的新形式主义和分析方法已经实施,并且已部分集成到Great-SPN工具中,因此我们还描述了一些实验结果。

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