Title :
Conditional diagnosability measures for large multiprocessor systems
Author :
Lai, Pao-Lien ; Tan, Jimmy J M ; Chang, Chien-Ping ; Hsu, Lih-Hsing
Author_Institution :
Dept. of Comput. & Inf. Sci., Nat. Chiao Tung Univ., Taiwan
Abstract :
Diagnosability has played an important role in the reliability of an interconnection network. The classical problem of fault diagnosis is discussed widely and the diagnosability of many well-known networks have been explored. We introduce a new measure of diagnosability, called conditional diagnosability, by restricting that any faulty set cannot contain all the neighbors of any vertex in the graph. Based on this requirement, the conditional diagnosability of the n-dimensional hypercube is shown to be 4(n - 2) +1, which is about four times as large as the classical diagnosability. Besides, we propose some useful conditions for verifying if a system is t-diagnosable and introduce a new concept, called a strongly t-diagnosable system, under the PMC model. Applying these concepts and conditions, we investigate some t-diagnosable networks which are also strongly t-diagnosable.
Keywords :
fault diagnosis; fault tolerant computing; graph theory; hypercube networks; multiprocessing systems; PMC model; conditional diagnosability measures; fault diagnosis; hypercube structure; interconnection network reliability; multiprocessor systems; Fault diagnosis; Fault tolerance; Fault tolerant systems; Hypercubes; Multiprocessing systems; Multiprocessor interconnection networks; Real time systems; Signal processing; Sufficient conditions; System testing;
Journal_Title :
Computers, IEEE Transactions on