命令和控制模型的验证

Jingong Cheng, Fei Liu, Ming Yang
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引用次数: 0

摘要

命令和控制模型是大多数军事仿真中的关键组成部分,通常以规则或模糊规则表示。尽管存在一些针对规则库的验证技术,但它们还不足以保证命令和控制模型的正确性。在分析指挥控制模型特点的基础上,提出了一种基于模糊因果图的指挥控制模型验证方法。首先,提出了一种形式化描述方法来描述命令与控制模型。其次,将形式化描述的命令与控制模型映射为模糊因果图。第三,为了对命令控制模型进行有效的形式化验证,提出了命令控制模型的形式化验证准则,并在此基础上将验证分为弱验证和强验证两类。最后,提出了弱验证算法和强验证算法,实现了对命令和控制模型的形式化验证。
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Verification of Command and Control Models
Command and control models, often represented as rules or fuzzy rules, are key components in most military simulations. Although there exist some verification techniques for rule bases, they are not enough to assure the correctness of command and control models. Based on an analysis of the characteristics of command and control models, this paper presents a fuzzy causality diagram-based verification method for command and control models. Firstly, a formal description method is developed to describe command and control models. Secondly, formally described command and control models are mapped to fuzzy causality diagram. Thirdly, formal verification criteria for command and control models are developed in order to validly and formally verify them, based on which verification is grouped into two classes: weak verification and strong verification. Finally, algorithms for weak and strong verification are developed, thus implementing formal verification of command and control models.
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