大规模组合模型的聚合排序

P. Crouzen, H. Hermanns
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引用次数: 15

摘要

组合建模是一种通过组件之间的交互来表达复杂系统行为的强大方法。由于状态空间爆炸的存在,使得成分模型的分析变得困难。一种解决方案是组合聚合,其中组合和聚合步骤交织在一起。这种方法已被证明在组合性能和可靠性建模领域特别有用。然而,一个开放的问题仍然存在:模型应该以何种顺序组合,这个问题对于从更高级别的描述中自动导出的大规模组合模型尤其重要。找到最优的组合排序通常是不可行的,因此需要启发式方法来找到良好的排序。在本文中,我们提出了一个比较研究的组合聚合算法的收获和提炼启发式源自Tai和Koppol。启发式算法考虑了组件之间的相互作用、组件模型的大小,并使用早期消除不良组合顺序来显著减少计算时间。我们提出了算法的实现,并通过将其应用于不同应用领域的案例研究来研究其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aggregation Ordering for Massively Compositional Models
Compositional modeling is a powerful way of expressing the behavior of a complex system through the interaction of its components. Analysis of compositional models is difficult because of the state space explosion. One solution is compositional aggregation where composition and aggregation steps are intertwined. This approach has proven particularly useful in the area of compositional performance and dependability modelling. However, one open question remains: in which order should the models be composed, a question that is especially important for massively compositional models derived automatically from higher level descriptions. Finding the optimal composition ordering is generally infeasible, so heuristics are necessary to find good orderings. In this paper we present a comparative study of compositional aggregation algorithms which harvest and refine heuristics originating from Tai and Koppol. The heuristics take into account the interaction between components, the size of the component models and uses early elimination of bad composition orders to dramatically decrease computation time. We present an implementation of the algorithms and study its effectiveness by applying it to case studies from different application areas.
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