基于形式概念分析的机载航空电子设备诊断规则挖掘

Wen Ying, Xiao Mingqing
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引用次数: 1

摘要

提出了一种基于形式概念分析的诊断规则挖掘方法,用于机载航空电子设备的诊断知识挖掘。定义诊断形式上下文,以0-1表的形式组织故障样本。概念格由诊断形式上下文构建,使用并行的Next Closure算法应用MapReduce框架。讨论了诊断形式语境下的知识约简,得到了约简属性集。在规则获取透视图中定义的差别矩阵和布尔函数用于计算所有约简属性集。然后可以从简化的概念格中推导出紧凑的诊断规则。利用某航空雷达系统的历史诊断数据集对所提出的诊断规则挖掘方法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis Rule Mining of Airborne Avionics Using Formal Concept Analysis
A diagnosis rule mining approach based on formal concept analysis is proposed to discover diagnosis knowledge in airborne avionics. Diagnosis formal context is defined to organize fault samples in 0-1 table. Concept lattices are constructed from the diagnosis formal context, using a parallel Next Closure algorithm applying MapReduce framework. Knowledge reduction in diagnosis formal context is discussed to get reduced attribute sets. The discernibility matrix and Boolean function defined in a rule acquisition perspective are used to calculate all the reduced attribute sets. Compact diagnosis rules can then be derived from the reduced concept lattices. The proposed diagnosis rule mining approach is demonstrated with the historical diagnostic dataset of some aviation radar system.
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