Real Time Fault Monitoring of Industrial Processes by A.d. PouliezosReal Time Fault Monitoring of Industrial Processes by A.d. Pouliezos

Real Time Fault Monitoring of Industrial Processes

byA.d. Pouliezos, George S. Stavrakakis

Paperback | December 4, 2010

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This book presents a detailed and up-to-date exposition of fault monitoring methods in industrial processes and structures. The following approaches are explained in considerable detail: Model-based methods (simple tests, analytical redundancy, parameter estimation); knowledge-based methods; artificial neural network methods; and nondestructive testing, etc. Each approach is complemented by specific case studies from various industrial sectors (aerospace, chemical, nuclear, etc.), thus bridging theory and practice. This volume will be a valuable tool in the hands of professional and academic engineers. It can also be recommended as a supplementary postgraduate textbook. For scientists whose work involves automatic process control and supervision, statistical process control, applied statistics, quality control, computer-assisted predictive maintenance and plant monitoring, and structural reliability and safety.
Title:Real Time Fault Monitoring of Industrial ProcessesFormat:PaperbackDimensions:575 pages, 9.25 × 6.1 × 0.07 inPublished:December 4, 2010Publisher:Springer NetherlandsLanguage:English

The following ISBNs are associated with this title:

ISBN - 10:9048143748

ISBN - 13:9789048143740

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Table of Contents

Preface. List of figures. List of tables. Introduction. 1. Fault Detection and Diagnosis Methods in the Absence of Process Models. 2. Analytical Redundancy Methods. 3. Parameter Estimation Methods for Fault Monitoring. 4. Automatic Expert Process Fault Diagnosis and Supervision. 5. Fault Diagnosis Using Artificial Neural Networks (ANNs). 6. In-Time Failure Prognosis and Fatigue Life Prediction of Structures. Author Index. Subject Index.