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Component Fault Diagnosability of Hierarchical Cubic Networks

Yanze Huang, K. Wen, Limei Lin, Li Xu, Sun‐Yuan Hsieh

2023ACM Transactions on Design Automation of Electronic Systems12 citationsDOI

Abstract

The fault diagnosability of a network indicates the self-diagnosis ability of the network, thus it is an important measure of robustness of the network. As a neoteric feature for measuring fault diagnosability, the r -component diagnosability ct r (G) of a network G imposes the restriction that the number of components is at least r in the remaining network of G by deleting faulty set X , which enhances the diagnosability of G . In this article, we establish the r -component diagnosability for n -dimensional hierarchical cubic network HCN n , and we show that, under both PMC model and MM* model, the r -component diagnosability of HCN n is rn -½( r -1) r +1 for n ≥ 2 and 1≤ r≤ n-1 . Moreover, we introduce the concepts of 0-PMC subgraph and 0-MM* subgraph of HCN n . Then, we make use of 0-PMC subgraph and 0-MM* subgraph of HCN n to design two algorithms under PMC model and MM* model, respectively, which are practical and efficient for component fault diagnosis of HCN n . Besides, we compare the r -component diagnosability of HCN n with the extra conditional diagnosability, diagnosability, good-neighbor diagnosability, pessimistic diagnosability, and conditional diagnosability, and we verify that the r -component diagnosability of HCN n is higher than the other types of diagnosability.

Topics & Concepts

Component (thermodynamics)Computer scienceRobustness (evolution)AlgorithmMathematicsPhysicsChemistryBiochemistryGeneThermodynamicsInterconnection Networks and SystemsGraph theory and applicationsAdvanced Optical Network Technologies