Demonstrates how to solve reliability problems using practical applications of Bayesian models This self-contained reference provides fundamental knowledge of Bayesian reliability and utilizes numerous examples to show how Bayesian models can solve real life reliability problems. It teaches engineer
Practical applications of Bayesian reliability
โ Scribed by Abeyratne, Athula I.; Liu, Yan
- Publisher
- Wiley
- Year
- 2019
- Tongue
- English
- Leaves
- 321
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
Demonstrates how to solve reliability problems using practical applications of Bayesian models This self-contained reference provides fundamental knowledge of Bayesian reliability and utilizes numerous examples to show how Bayesian models can solve real life reliability problems. It teaches engineers and scientists exactly what Bayesian analysis is, what its benefits are, and how they can apply the methods to solve ย Read more...
Abstract: Demonstrates how to solve reliability problems using practical applications of Bayesian models This self-contained reference provides fundamental knowledge of Bayesian reliability and utilizes numerous examples to show how Bayesian models can solve real life reliability problems. It teaches engineers and scientists exactly what Bayesian analysis is, what its benefits are, and how they can apply the methods to solve their own problems. To help readers get started quickly, the book presents many Bayesian models that use JAGS and which require fewer than 10 lines of command. It also offers a number of short R scripts consisting of simple functions to help them become familiar with R coding. Practical Applications of Bayesian Reliability starts by introducing basic concepts of reliability engineering, including random variables, discrete and continuous probability distributions, hazard function, and censored data. Basic concepts of Bayesian statistics, models, reasons, and theory are presented in the following chapter. Coverage of Bayesian computation, Metropolis-Hastings algorithm, and Gibbs Sampling comes next. The book then goes on to teach the concepts of design capability and design for reliability; introduce Bayesian models for estimating system reliability; discuss Bayesian Hierarchical Models and their applications; present linear and logistic regression models in Bayesian Perspective; and more.-Provides a step-by-step approach for developing advanced reliability models to solve complex problems, and does not require in-depth understanding of statistical methodology -Educates managers on the potential of Bayesian reliability models and associated impact -Introduces commonly used predictive reliability models and advanced Bayesian models based on real life applications -Includes practical guidelines to construct Bayesian reliability models along with computer codes for all of the case studies -JAGS and R codes are provided on an accompanying website to enable practitioners to easily copy them and tailor them to their own applications Practical Applications of Bayesian Reliability is a helpful book for industry practitioners such as reliability engineers, mechanical engineers, electrical engineers, product engineers, system engineers, and materials scientists whose work includes predicting design or product performance
โฆ Table of Contents
Content: Basic Concepts of Reliability Engineering --
Basic Concepts of Bayesian Statistics and Models --
Bayesian Computation --
Reliability Distributions (Bayesian Perspective) --
Reliability Demonstration Testing --
Capability and Design for Reliability --
System Reliability Bayesian Model --
Bayesian Hierarchical Model --
Regression Models --
Appendix A Guidance for Installing R, R Studio, JAGS, and rjags --
Appendix B Commonly Used R Commands --
Appendix C Probability Distributions --
Appendix D Jeffreys Prior.
โฆ Subjects
Bayesian statistical decision theory.;Reliability (Engineering) -- Statistical methods.;MATHEMATICS -- Applied.;MATHEMATICS -- Probability & Statistics -- General.
๐ SIMILAR VOLUMES
<p><P><EM>Bayesian Reliability</EM> 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 in
Health Research and Educational Trust, Part II (August 2006), 13 p.<div class="bb-sep"></div>Making Noncatastrophic Health Care Processes Reliable: Learning to Walk before Running in Creating High-Reliability Organizations
<p>When data is collected on failure or survival a list of times is obtained. Some of the times are failure times and others are the times at which the subject left the experiment. These times both give information about the performance of the system. The two types will be referred to as failure and