
At a Glance
456 Pages
23.5 x 15.88 x 2.54
Hardcover
$279.75
or 4 interest-free payments of $69.94 with
 orÂShips in 5 to 7 business days
Bayesian Reliability presents modern methods and techniques for analyzing reliability data from a Bayesian perspective. The adoption and application of Bayesian methods in virtually all branches of science and engineering have significantly increased over the past few decades. This increase is largely due to advances in simulation-based computational tools for implementing Bayesian methods.
The authors extensively use such tools throughout this book, focusing on assessing the reliability of components and systems with particular attention to hierarchical models and models incorporating explanatory variables. Such models include failure time regression models, accelerated testing models, and degradation models. The authors pay special attention to Bayesian goodness-of-fit testing, model validation, reliability test design, and assurance test planning. Throughout the book, the authors use Markov chain Monte Carlo (MCMC) algorithms for implementing Bayesian analyses -- algorithms that make the Bayesian approach to reliability computationally feasible and conceptually straightforward.
This book is primarily a reference collection of modern Bayesian methods in reliability for use by reliability practitioners. There are more than 70 illustrative examples, most of which utilize real-world data. This book can also be used as a textbook for a course in reliability and contains more than 160 exercises.
Noteworthy highlights of the book include Bayesian approaches for the following:
- Goodness-of-fit and model selection methods
- Hierarchical models for reliability estimation
- Fault tree analysis methodology that supports data acquisition at all levels in the tree
- Bayesian networks in reliability analysis
- Analysis of failure count and failure time data collected from repairable systems, and the assessment of various related performance criteria
- Analysis of nondestructive and destructive degradation data
- Optimal design of reliability experiments
- Hierarchical reliability assurance testing
Industry Reviews
From the reviews:
"This book is written to provide a reference collection of modern Bayesian methods in reliability. Since all of the chapters include exercises, it could be used as the basis for an undergraduate or graduate course in reliability.... it provides a more concrete view of reliability with worked out examples. It does not require any background in Bayesian thinking from the reader-all that is required is a basic knowledge of probability and applied statistics.... I recommend this book to any reader who wishes to learn about the practical application of Bayesian thinking in reliability." (James H. ALBERT, JASA , June 2009, VOl.104, No. 486)
"Readership: Reliability practitioners, Bayesian researchers in reliability. The book may also be used as a textbook for a course for advanced undergraduates or graduate students ... . This is a very well written Bayesian book on reliability with almost encyclopedic coverage. ... Given the strengths of the book in both coverage and detailed modeling of reliability based on many different kinds of data ... the book makes a major contribution to the literature on reliability." (Jayanta K. Ghosh, International Statistical Review, Vol. 77 (3), 2009)
"This is both a reference and a very complete textbook on Bayesian reliability. ... The sequence of the topics is very logical and well organized. Starting from basics allows the use of the book by engineers and readers without previous knowledge of statistics ... ." (Mauro Gasparini, Zentralblatt MATH, Vol. 1165, 2009)
"The authors give the reader a thorough statistical understanding of lifetime or failure time analysis of products or systems. ... This book brings to the reader a collection of modern Bayesian statistical methods for use in reliability and lifetime analysis for practitioners, but can serve also as a textbook for an undergraduate or graduate course in reliability. In the book are 70 illustrative examples with anadditional 165 exercises down-loadable from a reference website and are accompanied by a solution manual." (Adriana Hornikova, Technometrics, Vol. 51 (4), November, 2009)
| Preface | p. VII |
| Reliability Concepts | p. 1 |
| Defining Reliability | p. 1 |
| Measures of Random Variation | p. 2 |
| Examples of Reliability Data | p. 10 |
| Bernoulli Success/Failure Data | p. 10 |
| Failure Count Data | p. 10 |
| Lifetime/Failure Time Data | p. 11 |
| Degradation Data | p. 12 |
| Censoring | p. 13 |
| Bayesian Reliability Analysis | p. 15 |
| Related Reading | p. 18 |
| Exercises for Chapter 1 | p. 19 |
| Bayesian Inference | p. 21 |
| Introductory Concepts | p. 21 |
| Maximum Likelihood Estimation | p. 24 |
| Classical Point and Interval Estimation for a Proportion | p. 26 |
| Fundamentals of Bayesian Inference | p. 27 |
| The Prior Distribution | p. 28 |
| Combining Data with Prior Information | p. 30 |
| Prediction | p. 35 |
| The Marginal Distribution of the Data and Bayes' Factors | p. 36 |
| A Lognormal Example | p. 39 |
| More on Prior Distributions | p. 46 |
| Noninformative and Diffuse Prior Distributions | p. 46 |
| Conjugate Prior Distributions | p. 47 |
| Informative Prior Distributions | p. 47 |
| Related Reading | p. 49 |
| Exercises for Chapter 2 | p. 49 |
| Advanced Bayesian Modeling and Computational Methods | p. 51 |
| Introduction to Markov Chain Monte Carlo (MCMC) | p. 51 |
| Metropolis-Hastings Algorithms | p. 52 |
| Gibbs Sampler | p. 60 |
| Output Analysis | p. 64 |
| Hierarchical Models | p. 68 |
| MCMC Estimation of Hierarchical Model Parameters | p. 71 |
| Inference for Launch Vehicle Probabilities | p. 71 |
| Empirical Bayes | p. 73 |
| Goodness of Pit X | p. 76 |
| Related Reading .I | p. 82 |
| Exercises for Chapter 3 | p. 82 |
| Component Reliability | p. 85 |
| Introduction | p. 85 |
| Discrete Data Models for Reliability | p. 86 |
| Success/Failure Data | p. 86 |
| Failure Count Data | p. 87 |
| Failure Time Data Models for Reliability | p. 90 |
| Exponential Failure Times | p. 91 |
| Weibull Failure Times | p. 97 |
| Lognormal Failure Times | p. 102 |
| Gamma Failure Times | p. 104 |
| Inverse Gaussian Failure Times | p. 105 |
| Normal Failure Times | p. 106 |
| Censored Data | p. 107 |
| Multiple Units and Hierarchical Modeling | p. 111 |
| Model Selection | p. 116 |
| Bayesian Information Criterion | p. 116 |
| Deviance Information Criterion | p. 117 |
| Akaike Information Criterion | p. 120 |
| Related Reading | p. 120 |
| Exercises for Chapter 4 | p. 120 |
| System Reliability | p. 125 |
| System Structure | p. 125 |
| Reliability Block Diagrams | p. 126 |
| Structure Functions | p. 126 |
| Minimal Path and Cut Sets | p. 129 |
| Fault Trees | p. 131 |
| System Analysis | p. 135 |
| Calculating System Reliability | p. 135 |
| Prior Distributions for Systems | p. 138 |
| Fault Trees with Bernoulli Data | p. 141 |
| Fault Trees with Lifetime Data | p. 145 |
| Bayesian Network Models | p. 147 |
| Models for Dependence | p. 155 |
| Related Reading | p. 158 |
| Exercises for Chapter 5 | p. 159 |
| Repairable System Reliability | p. 161 |
| Introduction | p. 161 |
| Types of Data | p. 162 |
| Characteristics of System Repairs | p. 162 |
| Renewal Processes | p. 163 |
| Poisson Processes | p. 165 |
| Homogeneous Poisson Processes (HPPs | p. 167 |
| Nonhomogeneous Poisson Processes (NHPPs) | p. 170 |
| Power Law Processes (PLPs) | p. 170 |
| Log-Linear Processes | p. 176 |
| Alternatives to NHPPs | p. 176 |
| Modulated Power Law Processes (MPLPs) | p. 176 |
| Piecewise Exponential Model (PEXP) | p. 179 |
| Goodness of Fit and Model Selection | p. 180 |
| Current Reliability and Other Performance Criteria | p. 181 |
| Current Reliability | p. 181 |
| Other Performance Criteria | p. 182 |
| Multiple-Unit Systems and Hierarchical Modeling | p. 183 |
| Availability | p. 192 |
| Other Data Types for Availability | p. 194 |
| Complex System Availability | p. 196 |
| Related Reading | p. 198 |
| Exercises for Chapter 6 | p. 199 |
| Regression Models in Reliability | p. 203 |
| Introduction | p. 203 |
| Covariate Types | p. 204 |
| Covariate Relationships | p. 205 |
| Logistic Regression Models for Binomial Data | p. 205 |
| Poisson Regression Models for Count Data | p. 215 |
| Regression Models for Lifetime Data | p. 221 |
| Model Selection | p. 228 |
| Residual Analysis | p. 229 |
| Accelerated Life Testing | p. 235 |
| Common Accelerating Variables and Relationships | p. 237 |
| Reliability Improvement Experiments | p. 243 |
| Other Regression Situations | p. 258 |
| Related Reading | p. 259 |
| Exercises for Chapter 7 | p. 259 |
| Using Degradation Data to Assess Reliability | p. 271 |
| Introduction | p. 271 |
| Comparison with Lifetime Data | p. 278 |
| More Complex Degradation Data Models | p. 279 |
| Reliability Function | p. 281 |
| Diagnostics for Degradation Data Models | p. 283 |
| Incorporating Covariates | p. 287 |
| Accelerated Degradation Testing | p. 288 |
| Improving Reliability Using Designed Experiments | p. 295 |
| Destructive Degradation Data | p. 298 |
| An Alternative Degradation Data Model Using Stochastic Processes | p. 306 |
| Related Reading | p. 309 |
| Exercises for Chapter 8 | p. 310 |
| Planning for Reliability Data Collection | p. 319 |
| Introduction | p. 319 |
| Planning Criteria, Optimization, and Implementation | p. 320 |
| Optimization in Planning | p. 321 |
| Implementing the Simulation-Based Framework | p. 323 |
| Planning for Binomial Data | p. 324 |
| Planning for Lifetime Data | p. 327 |
| Planning Accelerated Life Tests | p. 328 |
| Planning for Degradation Data | p. 330 |
| Planning for System Reliability Data | p. 331 |
| Related Reading | p. 339 |
| Exercises for Chapter 9 | p. 339 |
| Assurance Testing | p. 343 |
| Introduction | p. 343 |
| Classical Risk Criteria | p. 345 |
| Average Risk Criteria | p. 345 |
| Posterior Risk Criteria | p. 346 |
| Binomial Testing | p. 348 |
| Binomial Posterior Consumer's and Producer's Risks | p. 349 |
| Hybrid Risk Criterion | p. 353 |
| Poisson Testing | p. 354 |
| Weibull Testing | p. 358 |
| Single Weibull Population Testing | p. 360 |
| Combined Weibull Accelerated/Assurance Testing | p. 364 |
| Related Reading | p. 368 |
| Exercises for Chapter 10 | p. 369 |
| Acronyms and Abbreviations | p. 375 |
| Special Functions and Probability Distributions | p. 377 |
| Greek Alphabet | p. 377 |
| Special Functions | p. 377 |
| Beta Function | p. 377 |
| Binomial Coefficient | p. 378 |
| Determinant | p. 378 |
| Factorial | p. 378 |
| Gamma Function | p. 378 |
| Incomplete Beta Function | p. 378 |
| Incomplete Beta Function Ratio | p. 378 |
| Indicator Function | p. 379 |
| Logarithm | p. 379 |
| Lower Incomplete Gamma Function | p. 379 |
| Standard Normal Cumulative Density Function | p. 379 |
| Standard Normal Probability Density Function | p. 379 |
| Trace | p. 379 |
| Upper Incomplete Gamma Function | p. 379 |
| Probability Distributions | p. 380 |
| Bernoulli | p. 380 |
| Beta | p. 380 |
| Binomial | p. 382 |
| Bivariate Exponential | p. 382 |
| Chi-squared | p. 383 |
| Dirichlet | p. 383 |
| Exponential | p. 386 |
| Extreme Value | p. 386 |
| Gamma | p. 389 |
| Inverse Chi-squared | p. 389 |
| Inverse Gamma | p. 392 |
| Inverse Gaussian | p. 392 |
| Inverse Wishart | p. 392 |
| Logistic | p. 396 |
| Lognormal | p. 396 |
| Multinomial | p. 399 |
| Multivariate Normal | p. 399 |
| Negative Binomial | p. 399 |
| Negative Log-Gamma | p. 401 |
| Normal | p. 403 |
| Pareto | p. 403 |
| Poisson | p. 403 |
| Poly-Weibull | p. 403 |
| Student's t | p. 406 |
| Uniform | p. 408 |
| Weibull | p. 408 |
| Wishart | p. 411 |
| Reference | p. 413 |
| Author Index | p. 427 |
| Subject Index [431 | |
| Table of Contents provided by Ingram. All Rights Reserved. |
ISBN: 9780387779485
ISBN-10: 0387779485
Series: Springer Series in Statistics
Published: 10th July 2008
Format: Hardcover
Language: English
Number of Pages: 456
Audience: College, Tertiary and University
Publisher: Springer Nature B.V.
Country of Publication: US
Dimensions (cm): 23.5 x 15.88 x 2.54
Weight (kg): 0.74
Shipping
| Standard Shipping | Express Shipping | |
|---|---|---|
| Metro postcodes: | $9.99 | $14.95 |
| Regional postcodes: | $9.99 | $14.95 |
| Rural postcodes: | $9.99 | $14.95 |
Orders over $79.00 qualify for free shipping.
How to return your order
At Booktopia, we offer hassle-free returns in accordance with our returns policy. If you wish to return an item, please get in touch with Booktopia Customer Care.
Additional postage charges may be applicable.
Defective items
If there is a problem with any of the items received for your order then the Booktopia Customer Care team is ready to assist you.
For more info please visit our Help Centre.

























