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A rule-based semantic matching of base object models

机译:基础对象模型的基于规则的语义匹配

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Creating simulation models via composition of predefined and reusable components is an efficient way of reducing costs and time associated with the simulation model development. However, to successfully compose models one has to solve the issues of syntactic and semantic composability of components. The Base Object Model (BOM) standard is an attempt to ease reusability and composition of simulation models. However, the BOM does not contain sufficient information for defining necessary concepts and terms to avoid ambiguity, and neither does it have any method for dynamic aspects matching conceptual models (i.e., their state-machines). In this paper, we present our approach for enhancement of the semantic contents of BOMs and propose a three-layer model for syntactic and semantic matching of BOMs. The enhancement includes ontologies for entities, events and interactions in each component. We also present an OWL-S description for each component, including the state-machines. To test our approach, we specify some simulation scenarios and implement BOMs as building blocks for development of those scenarios, one of which is presented in this paper. We also define composability degree, which quantifies closeness of the composed model to a given model specification. Our results show that the three-layer model is promising and can improve and simplify the composition of BOM-based components.
机译:通过组合预定义和可重复使用的组件来创建仿真模型是减少与仿真模型开发相关的成本和时间的有效方法。但是,要成功地构建模型,必须解决组件的句法和语义可组合性问题。基础对象模型(BOM)标准是试图简化仿真模型的可重用性和组成的尝试。但是,BOM没有包含足够的信息来定义必要的概念和术语以避免产生歧义,并且它也没有任何方法来与概念模型(即它们的状态机)匹配的动态方面。在本文中,我们提出了增强BOM语义内容的方法,并提出了BOM的句法和语义匹配的三层模型。增强功能包括每个组件中实体,事件和交互的本体。我们还为每个组件(包括状态机)提供了OWL-S描述。为了测试我们的方法,我们指定了一些模拟方案并实现了BOM作为这些方案开发的构建块,本文将介绍其中一种。我们还定义了可组合性程度,该程度可量化组成模型与给定模型规范的紧密度。我们的结果表明,三层模型很有希望,并且可以改善和简化基于BOM的组件的组成。

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