Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems
Over the last three decades, the search for competitiveness and growth gains has driven the evolution of machine maintenance policies, and the industry has moved from passive maintenance to active maintenance with the aim of improving productivity. Active maintenance requires continuous monitoring of industrial systems in order to increase reliability, availability rates and guarantee the safety of people and property.

This book presents the main advanced signal processing techniques for fault detection and diagnosis in electromechanical systems. It focuses on presenting these advanced tools from time-frequency representation and time-scale analysis to demodulation techniques, including innovative and recently developed options. Each technique is evaluated and compared, and its advantages and drawbacks highlighted. Parametric spectral analysis, which aims to handle some of the main drawbacks of these approaches, is introduced as a potential solution.

Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems offers thorough, analytical coverage of the following topics: parametric signal processing approach; the signal demodulation techniques; Kullback-Leibler divergence for incipient fault diagnosis; high-order spectra (HOS); and fault detection and diagnosis based on principal component analysis. Finally, a brief conclusion suggests some possibilities for the future direction of the field.

The book is a useful resource for researchers and engineers whose work involves electrical machines or fault detection specifically, and also of value to postgraduate students with an interest in entering this field.

1137618531
Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems
Over the last three decades, the search for competitiveness and growth gains has driven the evolution of machine maintenance policies, and the industry has moved from passive maintenance to active maintenance with the aim of improving productivity. Active maintenance requires continuous monitoring of industrial systems in order to increase reliability, availability rates and guarantee the safety of people and property.

This book presents the main advanced signal processing techniques for fault detection and diagnosis in electromechanical systems. It focuses on presenting these advanced tools from time-frequency representation and time-scale analysis to demodulation techniques, including innovative and recently developed options. Each technique is evaluated and compared, and its advantages and drawbacks highlighted. Parametric spectral analysis, which aims to handle some of the main drawbacks of these approaches, is introduced as a potential solution.

Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems offers thorough, analytical coverage of the following topics: parametric signal processing approach; the signal demodulation techniques; Kullback-Leibler divergence for incipient fault diagnosis; high-order spectra (HOS); and fault detection and diagnosis based on principal component analysis. Finally, a brief conclusion suggests some possibilities for the future direction of the field.

The book is a useful resource for researchers and engineers whose work involves electrical machines or fault detection specifically, and also of value to postgraduate students with an interest in entering this field.

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Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems

Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems

by Mohamed Benbouzid (Editor)
Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems

Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems

by Mohamed Benbouzid (Editor)

Hardcover

$155.00 
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Overview

Over the last three decades, the search for competitiveness and growth gains has driven the evolution of machine maintenance policies, and the industry has moved from passive maintenance to active maintenance with the aim of improving productivity. Active maintenance requires continuous monitoring of industrial systems in order to increase reliability, availability rates and guarantee the safety of people and property.

This book presents the main advanced signal processing techniques for fault detection and diagnosis in electromechanical systems. It focuses on presenting these advanced tools from time-frequency representation and time-scale analysis to demodulation techniques, including innovative and recently developed options. Each technique is evaluated and compared, and its advantages and drawbacks highlighted. Parametric spectral analysis, which aims to handle some of the main drawbacks of these approaches, is introduced as a potential solution.

Signal Processing for Fault Detection and Diagnosis in Electric Machines and Systems offers thorough, analytical coverage of the following topics: parametric signal processing approach; the signal demodulation techniques; Kullback-Leibler divergence for incipient fault diagnosis; high-order spectra (HOS); and fault detection and diagnosis based on principal component analysis. Finally, a brief conclusion suggests some possibilities for the future direction of the field.

The book is a useful resource for researchers and engineers whose work involves electrical machines or fault detection specifically, and also of value to postgraduate students with an interest in entering this field.


Product Details

ISBN-13: 9781785619571
Publisher: The Institution of Engineering and Technology
Publication date: 02/03/2021
Series: Energy Engineering
Pages: 284
Product dimensions: 6.14(w) x 9.21(h) x (d)

About the Author

Mohamed Benbouzid is a Full Professor of Electrical Engineering at the Universityof Brest, France, and a Distinguished Professor and 1000 Talent Expert at the Shanghai Maritime University, Shanghai, China. He is an IEEE and IET Fellow, the Editor-in-Chief of International Journal on Energy Conversion and the Applied Sciences Section on Electrical, Electronics and Communications Engineering, and is a Subject Editor for IET Renewable Power Generation.

Table of Contents

  • Introduction
  • Chapter 1: Parametric signal processing approach
  • Chapter 2: The signal demodulation techniques
  • Chapter 3: Kullback-Leibler divergence for incipient fault diagnosis
  • Chapter 4: Higher-order spectra
  • Chapter 5: Fault detection and diagnosis based on principal component analysis
  • Conclusions
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