A twin-plant based approach for diagnosability analysis of intermittent failures

Abderraouf Boussif, Baisi Liu, M. Ghazel
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引用次数: 13

Abstract

In this paper, an approach to analyze diagnosability of intermittent failures in discrete-event systems (DESs) is developed. The analysis is performed based on the twin-plant structure generated from the input model, which is a finite state automaton (FSA), where states are partitioned according to the predefined failure conditions of the system. Two definitions of diagnosability, regarding the occurrence of failures and their normalization (i.e., the disappearance of failures) are discussed. Necessary and sufficient conditions for diagnosability are developed and proved. Then, an incremental algorithm to actually check such conditions is elaborated. Finally, a benchmark is given to both illustrate the various concepts discussed and assess the efficiency of the proposed approach.
基于双厂的间歇故障可诊断性分析方法
本文提出了一种分析离散事件系统(DESs)间歇故障可诊断性的方法。该分析基于由输入模型生成的双工厂结构进行,该模型是一个有限状态自动机(FSA),其中状态根据系统预定义的故障条件进行划分。讨论了可诊断性的两种定义,即故障的发生及其规范化(即故障的消失)。给出并证明了可诊断性的充分必要条件。然后,阐述了一种增量算法来实际检查这些条件。最后,给出了一个基准来说明所讨论的各种概念并评估所提出方法的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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