Probability Models in Reliability Analysis Probability Models in Reliability Analysis
University Texts in the Mathematical Sciences

Probability Models in Reliability Analysis

    • €54.99
    • €54.99

Publisher Description

This book delves into the fundamental theoretical aspects of reliability analysis, focusing on various probabilistic models. These models are essential for representing random variations in underlying variables such as time-to-failure, the number of failures between consecutive repairs and similar metrics. The calculation, estimation and prediction of reliability all hinge on using appropriate probability models. The book introduces various models beneficial for researchers in the field of reliability. It also provides a comprehensive overview of the available models, highlighting their distinctive features and practical applications in a narrative format. The content of the book is designed to appeal to a broad readership. Students and researchers in the field of reliability analysis will find a comprehensive yet easily understandable summary of models applicable to their data sets of interest. It should be noted, however, As stated clearly in the preface, this book does not illustrate applications of the models discussed in terms of real-life data.

GENRE
Science & Nature
RELEASED
2025
30 May
LANGUAGE
EN
English
LENGTH
363
Pages
PUBLISHER
Springer Nature Singapore
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
17
MB
Statistical Methods in Social Science Research Statistical Methods in Social Science Research
2018
Quality Quality
2018
Introduction to Stochastic Processes Introduction to Stochastic Processes
2025
Special Integrals Special Integrals
2025
Introduction to Group Theory Introduction to Group Theory
2025
Fundamental Discrete Structures Fundamental Discrete Structures
2025
Lecture Notes on Geometry of Numbers Lecture Notes on Geometry of Numbers
2024
Introduction to Probability, Statistical Methods, Design of Experiments and Statistical Quality Control Introduction to Probability, Statistical Methods, Design of Experiments and Statistical Quality Control
2024