Unsupervised Process Monitoring and Fault Diagnosis with Machine Learning Methods

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This book describes the latest developments in nonlinear methods and their application in fault diagnosis. It details advances in machine learning theory and contains numerous case studies with real-world data from industry.

This unique text/reference describes in detail the latest advances in unsupervised process monitoring and fault diagnosis with machine learning methods. Abundant case studies throughout the text demonstrate the efficacy of each method in real-world settings. The broad coverage examines such cutting-edge topics as the use of information theory to enhance unsupervised learning in tree-based methods, the extension of kernel methods to multiple kernel learning for feature extraction from data, and the incremental training of multilayer perceptrons to construct deep architectures for enhanced data projections. Topics and features: discusses machine learning frameworks based on artificial neural networks, statistical learning theory and kernel-based methods, and tree-based methods; examines the application of machine learning to steady state and dynamic operations, with a focus on unsupervised learning; describes the use of spectral methods in process fault diagnosis.

Klappentext

Algorithms for intelligent fault diagnosis of automated operations offer significant benefits to the manufacturing and process industries. Furthermore, machine learning methods enable such monitoring systems to handle nonlinearities and large volumes of data.

This unique text/reference describes in detail the latest advances in Unsupervised Process Monitoring and Fault Diagnosis with Machine Learning Methods. Abundant case studies throughout the text demonstrate the efficacy of each method in real-world settings. The broad coverage examines such cutting-edge topics as the use of information theory to enhance unsupervised learning in tree-based methods, the extension of kernel methods to multiple kernel learning for feature extraction from data, and the incremental training of multilayer perceptrons to construct deep architectures for enhanced data projections.

Topics and features:

  • Reviews the application of machine learning to process monitoring and fault diagnosis
  • Discusses machine learning frameworks based on artificial neural networks, statistical learning theory and kernel-based methods, and tree-based methods
  • Examines the application of machine learning to steady state and dynamic operations, with a focus on unsupervised learning
  • Describes the use of spectral methods in process fault diagnosis This highly practical and clearly-structured work is an invaluable resource for all researchers and practitioners involved in process control, multivariate statistics and machine learning.

Dr. Chris Aldrich is a Professor in the Department of Metallurgical and Minerals Engineering at Curtin University, Perth, Australia. Dr. Lidia Auret is a Lecturer in the Department of Process Engineering at Stellenbosch University, South Africa.


Inhalt

Introduction.- Overview of Process Fault Diagnosis.- Artificial Neural Networks.- Statistical Learning Theory and Kernel-Based Methods.- Tree-Based Methods.- Fault Diagnosis in Steady State Process Systems.- Dynamic Process Monitoring.- Process Monitoring Using Multiscale Methods.

Weitere Informationen

  • Allgemeine Informationen
    • GTIN 09781447151845
    • Auflage 2013
    • Sprache Englisch
    • Genre Anwendungs-Software
    • Größe H241mm x B160mm x T26mm
    • Jahr 2013
    • EAN 9781447151845
    • Format Fester Einband
    • ISBN 1447151844
    • Veröffentlichung 09.07.2013
    • Titel Unsupervised Process Monitoring and Fault Diagnosis with Machine Learning Methods
    • Autor Lidia Auret , Chris Aldrich
    • Untertitel Advances in Computer Vision and Pattern Recognition
    • Gewicht 758g
    • Herausgeber Springer London
    • Anzahl Seiten 396
    • Lesemotiv Verstehen

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