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基于模糊UML的C^4 ISR系统上下文知识建模方法 被引量:2

C^4 ISR Context-aware Knowledge Modeling Based on Fuzzy UML
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摘要 普适计算和上下文感知技术是智能化C^4 ISR系统的一种可行路线,针对上下文知识中大量模糊和不确定信息难以建模表示的问题,首先从C^4 ISR系统的业务特点和上下文知识内涵出发,定义组成C^4 ISR系统上下文环境的基本概念和关系,形成上下文知识元本体,在此基础上,借助UML扩展机制、模糊建模元素,形成一种C^4 ISR系统上下文知识建模语言。通过该语言不仅可以准确表达上下文知识中的明确信息,而且对于由于传感器偏差或信息缺乏所带来的模糊或不确定上下文环境信息,该语言同样具有良好的表达能力。 Pervasive computing and Context-aware technique is the key issue of the service intelligence C^4 ISR system. To modeling the uncertain and vague context knowledge of C^4 ISR,the paper suggests a meta ontology that defines both concepts and relations of the C^4 ISR Context-aware knowledge. And then a domain-specific modeling language for C^4 ISR Context-aware knowledge modeling is defined by extending UML Class and Association with fuzzy constructs and the meta ontology in order to model the fuzzy concepts of the Context-aware knowledge.
出处 《指挥控制与仿真》 2015年第6期62-65,89,共5页 Command Control & Simulation
基金 国家自然科学基金(61273210) 中国博士后科学基金项目(2015M572731)
关键词 C^4 ISR 上下文感知 模糊UML 知识建模 C^4 ISR context-aware knowledge fuzzy UML knowledge modeling
分类号 E94 [军事]
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参考文献13

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二级参考文献38

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