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Reliability analysis of repairable k-out-n system from time response under several times stochastic shocks

  • Fang, Yongfeng (School of Mechanical Engineering, Bijie University) ;
  • Tao, Wenliang (School of Mechanical Engineering, Bijie University) ;
  • Tee, Kong Fah (Department of Civil Engineering, University of Greenwich)
  • Received : 2013.02.06
  • Accepted : 2013.10.04
  • Published : 2014.10.25

Abstract

The model of unit dynamic reliability of repairable k/n (G) system with unit strength degradation under repeated random shocks has been developed according to the stress-strength interference theory. The unit failure number is obtained based on the unit failure probability which can be computed from the unit dynamic reliability. Then, the transfer probability function of the repairable k/n (G) system is given by its Markov property. Once the transfer probability function has been obtained, the probability density matrix and the steady-state probabilities of the system can be retrieved. Finally, the dynamic reliability of the repairable k/n (G) system is obtained by solving the differential equations. It is illustrated that the proposed method is practicable, feasible and gives reasonable prediction which conforms to the engineering practice.

Keywords

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