Prognostics and health management of engineering systems : an introduction / Nam-Ho Kim, Dawn An, Joo-Ho Choi.
2017
TA168
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Details
Title
Prognostics and health management of engineering systems : an introduction / Nam-Ho Kim, Dawn An, Joo-Ho Choi.
Author
ISBN
9783319447421 (electronic book)
3319447424 (electronic book)
9783319447407
3319447408
3319447424 (electronic book)
9783319447407
3319447408
Published
Cham, Switzerland : Springer, [2017]
Language
English
Description
1 online resource.
Item Number
10.1007/978-3-319-44742-1 doi
Call Number
TA168
Dewey Decimal Classification
620.001171
Summary
This book introduces the methods for predicting the future behavior of a system?s health and the remaining useful life to determine an appropriate maintenance schedule. The authors introduce the history, industrial applications, algorithms, and benefits and challenges of PHM (Prognostics and Health Management) to help readers understand this highly interdisciplinary engineering approach that incorporates sensing technologies, physics of failure, machine learning, modern statistics, and reliability engineering. It is ideal for beginners because it introduces various prognostics algorithms and explains their attributes, pros and cons in terms of model definition, model parameter estimation, and ability to handle noise and bias in data, allowing readers to select the appropriate methods for their fields of application. Among the many topics discussed in-depth are: ? Prognostics tutorials using least-squares ? Bayesian inference and parameter estimation ? Physics-based prognostics algorithms including nonlinear least squares, Bayesian method, and particle filter ? Data-driven prognostics algorithms including Gaussian process regression and neural network ? Comparison of different prognostics algorithms The authors also present several applications of prognostics in practical engineering systems, including wear in a revolute joint, fatigue crack growth in a panel, prognostics using accelerated life test data, fatigue damage in bearings, and more. Prognostics tutorials with a Matlab code using simple examples are provided, along with a companion website that presents Matlab programs for different algorithms as well as measurement data. Each chapter contains a comprehensive set of exercise problems, some of which require Matlab programs, making this an ideal book for graduate students in mechanical, civil, aerospace, electrical, and industrial engineering and engineering mechanics, as well as researchers and maintenance engineers in the above fields.
Bibliography, etc. Note
Includes bibliographical references and index.
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Access limited to authorized users.
Digital File Characteristics
text file PDF
Source of Description
Online resource; title from PDF title page (viewed November 2, 2016).
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Table of Contents
Introduction
Tutorials for Prognostics
Bayesian Statistics for Prognostics
Physics-Based Prognostics
Data-Driven Prognostics
Study on Attributes of Prognostic Methods
Applications of Prognostics.
Tutorials for Prognostics
Bayesian Statistics for Prognostics
Physics-Based Prognostics
Data-Driven Prognostics
Study on Attributes of Prognostic Methods
Applications of Prognostics.