Advances in Statistical Monitoring of Complex Multivariate Processes von Uwe Kruger | With Applications in Industrial Process Control | ISBN 9780470028193

Advances in Statistical Monitoring of Complex Multivariate Processes

With Applications in Industrial Process Control

von Uwe Kruger und Lei Xie
Mitwirkende
Autor / AutorinUwe Kruger
Autor / AutorinLei Xie
Buchcover Advances in Statistical Monitoring of Complex Multivariate Processes | Uwe Kruger | EAN 9780470028193 | ISBN 0-470-02819-X | ISBN 978-0-470-02819-3
Leseprobe

Advances in Statistical Monitoring of Complex Multivariate Processes

With Applications in Industrial Process Control

von Uwe Kruger und Lei Xie
Mitwirkende
Autor / AutorinUwe Kruger
Autor / AutorinLei Xie
The development and application of multivariate statistical techniques in process monitoring has gained substantial interest over the past two decades in academia and industry alike. Initially developed for monitoring and fault diagnosis in complex systems, such techniques have been refined and applied in various engineering areas, for example mechanical and manufacturing, chemical, electrical and electronic, and power engineering. The recipe for the tremendous interest in multivariate statistical techniques lies in its simplicity and adaptability for developing monitoring applications. In contrast, competitive model, signal or knowledge based techniques showed their potential only whenever cost-benefit economics have justified the required effort in developing applications.
Statistical Monitoring of Complex Multivariate Processes presents recent advances in statistics based process monitoring, explaining how these processes can now be used in areas such as mechanical and manufacturing engineering for example, in addition to the traditional chemical industry.
This book:
* Contains a detailed theoretical background of the component technology.
* Brings together a large body of work to address the field's drawbacks, and develops methods for their improvement.
* Details cross-disciplinary utilization, exemplified by examples in chemical, mechanical and manufacturing engineering.
* Presents real life industrial applications, outlining deficiencies in the methodology and how to address them.
* Includes numerous examples, tutorial questions and homework assignments in the form of individual and team-based projects, to enhance the learning experience.
* Features a supplementary website including Matlab algorithms and data sets.
This book provides a timely reference text to the rapidly evolving area of multivariate statistical analysis for academics, advanced level students, and practitioners alike.