Description

Book Synopsis

"Degradation process" refers to many types of reliability models, which correspond to various kinds of stochastic processes used for deterioration modeling. This book focuses on the case of a univariate degradation model with a continuous set of possible outcomes. The envisioned univariate models have one single measurable quantity which is assumed to be observed over time.

The first three chapters are each devoted to one degradation model. The last chapter illustrates the use of the previously described degradation models on some real data sets. For each of the degradation models, the authors provide probabilistic results and explore simulation tools for sample paths generation. Various estimation procedures are also developed.



Trade Review

"The main focus of the book is on parametric models. In such a case likelihood maximization is recommended as the main estimation method. The form of the likelihood function is always rigorously derived and the procedure of its maximization is discussed. If the covariance matrix of ML estimates is sufficiently simple, it is also presented. For some models, estimation by the method of moments is described; the corresponding equations are then also rigorously derived. The book also contains very detailed descriptions of various methods for simulation of considered degradation processes." (Mathematical Reviews/MathSciNet April 2017)



Table of Contents

Introduction

1. Wiener Processes

2. Gamma Processes

3. Doubly Stochastic Marked Poisson Processes

4. Model Selection and Application to Real Data Sets

Degradation Processes in Reliability

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A Hardback by Waltraud Kahle, Sophie Mercier, Christian Paroissin

15 in stock


    View other formats and editions of Degradation Processes in Reliability by Waltraud Kahle

    Publisher: ISTE Ltd and John Wiley & Sons Inc
    Publication Date: 07/06/2016
    ISBN13: 9781848218888, 978-1848218888
    ISBN10: 1848218885

    Description

    Book Synopsis

    "Degradation process" refers to many types of reliability models, which correspond to various kinds of stochastic processes used for deterioration modeling. This book focuses on the case of a univariate degradation model with a continuous set of possible outcomes. The envisioned univariate models have one single measurable quantity which is assumed to be observed over time.

    The first three chapters are each devoted to one degradation model. The last chapter illustrates the use of the previously described degradation models on some real data sets. For each of the degradation models, the authors provide probabilistic results and explore simulation tools for sample paths generation. Various estimation procedures are also developed.



    Trade Review

    "The main focus of the book is on parametric models. In such a case likelihood maximization is recommended as the main estimation method. The form of the likelihood function is always rigorously derived and the procedure of its maximization is discussed. If the covariance matrix of ML estimates is sufficiently simple, it is also presented. For some models, estimation by the method of moments is described; the corresponding equations are then also rigorously derived. The book also contains very detailed descriptions of various methods for simulation of considered degradation processes." (Mathematical Reviews/MathSciNet April 2017)



    Table of Contents

    Introduction

    1. Wiener Processes

    2. Gamma Processes

    3. Doubly Stochastic Marked Poisson Processes

    4. Model Selection and Application to Real Data Sets

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