Title :
Neural network realization of Markov model of TMR systems with compensating failures
Author :
Zhou, Yingquan ; Min, Yinghua
Author_Institution :
Inst. of Comput. Technol., Academia Sinica, Beijing, China
Abstract :
Reliability synthesis as a reverse of reliability analysis has the same importance as reliability estimation. One important issue in reliability synthesis is to find failure rates and repair rates of units, given the desired reliability requirement. Compensation of failures can be very significant for fail-fast TMR systems. This paper presents a new model of TMR systems in which fail-fast rates and compensating failures are considered, and employs a forward neural network to compute the failure rates and repair rates that meet the desired reliability requirement and the preassumed fail-fast rates. The failure rates and repair rates are obtained after the neural network becomes stable. Simulation results show that the model presented in this paper can allow higher failure rates of units to achieve the same reliability than the classical model. So we can design a redundant digital system with a much lower cost
Keywords :
Markov processes; digital simulation; failure analysis; feedforward neural nets; redundancy; reliability theory; Markov model; TMR; compensating failures; cost; fail-fast rates; failure rates; forward neural network; redundant digital system; reliability analysis; reliability estimation; reliability synthesis; repair rates; triple modular redundancy; Computational modeling; Computer networks; Costs; Digital systems; Fault tolerance; Fault tolerant systems; Laboratories; Network synthesis; Neural networks; Redundancy;
Conference_Titel :
Test Symposium, 1993., Proceedings of the Second Asian
Conference_Location :
Beijing
Print_ISBN :
0-8186-3930-X
DOI :
10.1109/ATS.1993.398777