• CN:11-2187/TH
  • ISSN:0577-6686

›› 2009, Vol. 45 ›› Issue (9): 46-51.

• 论文 • 上一篇    下一篇

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基于分辨矩阵基元的不完备故障诊断系统的规则提取技术

黄文涛;王伟杰;赵学增;孟庆鑫   

  1. 哈尔滨工业大学机电工程学院;哈尔滨工程大学机电工程学院
  • 发布日期:2009-09-15

Extracting Rules for Fault Diagnosis from Incomplete Data Based on Discernibility Matrix Primitive

HUANG Wentao;WANG Weijie; ZHAO Xuezeng;MENG Qingxin   

  1. School of Mechanical and Electrical Engineering, Harbin Institute of Technology School of Mechanical and Electrical Engineering, Harbin Engineering University
  • Published:2009-09-15

摘要: 在故障诊断中,从不完备数据中获取规则要比从完备数据中获取规则困难,提出一种直接从不完备数据中获取最优广义诊断决策规则的粗糙集方法。给出分辨矩阵基元的定义,研究分辨矩阵基元的性质以简化分辨矩阵基元的计算过程;根据分辨矩阵基元的定义,给出不完备故障诊断决策表中面向对象的分辨矩阵的定义,并以此来构造面向对象的分辨函数,结合命题逻辑中的基本等价式,如分配律和吸收率等,给出一种计算最小面向对象约简的方法,实现不完备故障诊断决策表中面向对象的约简计算和最优广义故障诊断规则的获取。结合电力系统操作点的安全状态诊断实例给出所提出的方法在工程实践中的应用步骤,并证明该方法的有效性。

关键词: 不完备数据, 粗糙集, 分辨矩阵基元, 故障诊断, 规则获取

Abstract: Compared to extracting rules from complete data, it is more difficult to do that from incomplete data in fault diagnosis. A method that can directly extract the optimal generalized decision rules for fault diagnosis from incomplete data based on the rough set is proposed. The definition of discernibility matrix primitive is presented, and its property is investigated to simplify the computing course. According to the definition of discernibility matrix primitive, the definition of object-oriented discernibility matrix in the incomplete decision table for fault diagnosis is also presented. Using these concepts to construct the object-oriented discernibility function, with the basic equivalent forms in propositional logic such as distributive laws and absorption rate, the method that computes the minimal reductions of object-oriented is proposed, which implements the computation of object-oriented reductions in the incomplete decision rules for fault diagnosis and the extraction of the optimal generalized decision rules for fault diagnosis. Combined with a fault diagnosis example of operational state of an electric system, the application approach of the method is presented. And the validity of this method is proved.

Key words: Discernibility matrix primitive, Fault diagnosis, Incomplete data, Rough set, Rule extraction

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