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Stochastic Evaluation of Large Interdependent Composed Models Through Kronecker Algebra and Exponential Sums

机译:通过Kronecker代数和指数求和法对大型相互依赖的组合模型进行随机评估

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The KAES methodology for efficient evaluation of dependability-related properties is proposed. KAES targets systems rep-resentable by Stochastic Petri Nets-based models, composed by a large number of submodels where interconnections are managed through synchronization at action level. The core of KAES is a new numerical solution of the underlying CTMC process, based on powerful mathematical techniques, including Kronecker algebra, Tensor Trains and Exponential Sums. Specifically, advancing on existing literature, KAES addresses efficient evaluation of the Mean-Time-To-Absorption in CTMC with absorbing states, exploiting the basic idea to further pursue the symbolic representation of the elements involved in the evaluation process, so to better cope with the problem of state explosion. As a result, computation efficiency is improved, especially when the submodels are loosely interconnected and have small number of states. An instrumental case study is adopted, to show the feasibility of KAES, in particular from memory consumption point of view.
机译:提出了一种用于有效评估与可靠性相关的属性的KAES方法。 KAES的目标系统是基于随机Petri网的模型所代表的系统,该模型由大量子模型组成,这些子模型通过在操作级别进行同步来管理互连。 KAES的核心是基于强大的数学技术(包括Kronecker代数,Tensor列和指数和)的基础CTMC过程的新数值解决方案。具体而言,在现有文献的基础上,KAES致力于利用吸收状态对CTMC中平均吸收时间进行有效评估,并利用基本思想进一步追求评估过程中涉及元素的符号表示,从而更好地应对国家爆炸的问题。结果,提高了计算效率,尤其是当子模型松散地互连并且具有少量状态时。通过了一个工具案例研究,以展示KAES的可行性,尤其是从内存消耗的角度来看。

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