A novel method for derivation of Minimal Set of Analytical Redundancy Relations for system diagnosis

A. Fijany, F. Vatan
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引用次数: 5

Abstract

We present a novel concept of Minimal Set of Analytical Redundancy Relation (ARRs) and an efficient method for its calculation for application to system diagnosis. ARRs are one of the crucial tools for model-based diagnosis as well as for optimizing, analyzing, and validating the system of sensors. However, despite the importance of the ARRs for system diagnosis, it seems that less attention has been paid to their efficient application. In this paper, we first discuss the complexity of model-based diagnosis by using ARRs. We then present the concept of Minimal Set of ARRs which enables a faster system diagnosis by significantly reducing the number of ARRs to be evaluated for diagnosis purpose. We then show that the derivation of minimal set of ARRs can be mapped as a 0–1 Integer Programming problem and present an efficient branch-and-bound algorithm for this derivation. We also present the results of application of our method for generating the minimal set of ARRs, to both synthetic and industrial examples, to show the significant reduction in the computational cost that can be achieved for system diagnosis.1 2
一种用于系统诊断的解析冗余关系最小集的求导新方法
本文提出了解析冗余关系最小集的新概念及其有效的计算方法,并将其应用于系统诊断。arr是基于模型的诊断以及优化、分析和验证传感器系统的关键工具之一。然而,尽管arr对系统诊断具有重要意义,但对其有效应用的关注似乎较少。本文首先讨论了基于arr的模型诊断的复杂性。然后,我们提出了arr最小集的概念,通过显着减少用于诊断目的的arr的数量来实现更快的系统诊断。然后,我们证明了arr最小集的推导可以映射为一个0-1整数规划问题,并给出了一个有效的分支定界算法。我们还介绍了将我们的方法用于生成最小arr集的应用结果,用于合成和工业实例,以显示可以实现系统诊断的计算成本的显着降低。1 2
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