<p><b><i>Semi-Markov Processes: Applications in System Reliability and Maintenance</i></b> is a modern view of discrete state space and continuous time semi-Markov processes and their applications in reliability and maintenance. The book explains how to construct semi-Markov models and discusses the
Applications of semi-Markov processes in reliability
✍ Scribed by Grabski F.
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✦ Synopsis
Paper, RTA , 2007, December - Special Issue
The basic definitions and theorems from the semi-Markov processes theory are discussed in the paper. The semi-Markov processes theory allows us to construct the models of the reliability systems evolution within the time frame. Applications of semi-Markov processes in reliability are considered. Semi-Markov model of the cold standby system with repair, semi-Markov process as the reliability model of the operation with perturbations and semi-Markov process as a failure rate are presented in the paper.✦ Subjects
Машиностроение и материалообработка;Теория надежности
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