基于模型的快速诊断引擎

A. Fijany, A. Barrett, F. Vatan
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引用次数: 0

摘要

本文提出了一种新的基于模型的快速诊断引擎。我们的新引擎基于两步诊断方法,即离线系统分析和在线诊断。我们的新方法的效率源于这样一个事实,即通过对目标系统进行详细分析,它大大减少了诊断所需的计算量。特别是,我们的新算法依赖于最小arr集的概念和使用,在诊断过程中实现了更好的效率。我们的新型诊断引擎是基于我们最近的两个结果。首先,它使用我们最近开发的方法来生成完整的arr集。其次,它使用最小arr集;正如我们最近所表明的,对于任何给定数量的断层,即单、双、三重等,都有一个相应的最小arr集,它通常明显小于arr的完整集。通过实例介绍和讨论了该诊断引擎的性能。我们表明,即使使用非免责假设,我们在基于模型的诊断中也比GDE和完全基于ar的方法获得了更好的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast model-based diagnosis engine
In this paper we present a novel fast model-based diagnosis engine. Our novel engine is based on a two-step approach to diagnosis, i.e., off-line system analysis and on-line diagnosis. The efficiency of our novel method results from the fact that, by performing a detailed analysis of the target system, it drastically reduces the amount of computation needed for diagnosis. In particular, our new algorithm relies on the concept and use of minimal set of ARRs to achieve a much better efficiency in the diagnosis process. Our novel diagnosis engine is based on our two recent results. First, it uses our recently developed method for generation of the complete set of ARRs. Second, it uses the minimal set of ARRs; as we have recently shown that for any given number of faults, i.e., single, double, triple, etc., there is a corresponding minimal set of ARRs which is usually significantly smaller than the complete set of ARRs. We present and discuss the performance of our diagnosis engine by its application to several examples. We show that, even by using a non-exoneration assumption, we achieve a much better efficiency over the GDE as well as full ARR-based approaches for model-based diagnosis.
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