Paper, RTA , 2007, December - Special Issue<div class="bb-sep"></div>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. App
Semi-Markov Processes and Reliability
β Scribed by N. Limnios, G. OpriΕan (auth.)
- Publisher
- BirkhΓ€user Basel
- Year
- 2001
- Tongue
- English
- Leaves
- 225
- Series
- Statistics for Industry and Technology
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
At first there was the Markov property. The theory of stochastic processes, which can be considered as an extenΒ sion of probability theory, allows the modeling of the evolution of systems through the time. It cannot be properly understood just as pure mathematΒ ics, separated from the body of experience and examples that have brought it to life. The theory of stochastic processes entered a period of intensive developΒ ment, which is not finished yet, when the idea of the Markov property was brought in. Not even a serious study of the renewal processes is possible without using the strong tool of Markov processes. The modern theory of Markov processes has its origins in the studies by A. A: Markov (1856-1922) of sequences of experiments "connected in a chain" and in the attempts to describe mathematically the physical phenomenon known as Brownian moΒ tion. Later, many generalizations (in fact all kinds of weakenings of the Markov property) of Markov type stochastic processes were proposed. Some of them have led to new classes of stochastic processes and useful applications. Let us mention some of them: systems with complete connections [90, 91, 45, 86]; K-dependent Markov processes [44]; semi-Markov processes, and so forth. The semi-Markov processes generalize the renewal processes as well as the Markov jump processes and have numerous applications, especially in reliaΒ bility.
β¦ Table of Contents
Front Matter....Pages i-xii
Introduction to Stochastic Processes and the Renewal Process....Pages 1-29
Markov Renewal Processes....Pages 31-49
Semi-Markov Processes....Pages 51-83
Countable State Space Markov Renewal and Semi-Markov Processes....Pages 85-120
Reliability of Semi-Markov Systems....Pages 121-151
Examples of Reliability Modeling....Pages 153-176
Back Matter....Pages 177-222
β¦ Subjects
Computational Intelligence; Quality Control, Reliability, Safety and Risk
π SIMILAR VOLUMES
<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
<p><P>This book is concerned with the estimation of discrete-time semi-Markov and hidden semi-Markov processes. Semi-Markov processes are much more general and better adapted to applications than the Markov ones because sojourn times in any state can be arbitrarily distributed, as opposed to the geo
<p><P>This book is concerned with the estimation of discrete-time semi-Markov and hidden semi-Markov processes. Semi-Markov processes are much more general and better adapted to applications than the Markov ones because sojourn times in any state can be arbitrarily distributed, as opposed to the geo
Discrete-Time Renewal Processes -- Semi-Markov Chains -- Non parametric Estimation for Semi-Markov Chains -- Reliability Theory for Discrete-Time Semi-Markov Systems -- Hidden Semi-Markov Model and Estimation.;This book is concerned with the estimation of discrete-time semi-Markov and hidden semi-Ma