Fr. 134.00

Process Analytical Technology for the Food Industry

English · Hardback

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Description

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The Process Analytical Technology (PAT) initiative aims to move from a paradigm of 'testing quality in' to 'building quality in by design'. It can be defined as the optimal application of process analytical technologies, feedback process control strategies, information management tools, and/or product-process optimization strategies.Recently, there have been significant advances in process sensors and in model-based monitoring and control methodologies, leading to enormous opportunities for improved performance of food manufacturing processes and for the quality of food products with the adoption of PAT. Improvements in process efficiency, reduced product variability, enhanced traceability, process understanding, and decreased risk of contamination are some of the benefits arising from the introduction of a PAT strategy in the food industry.
Process Analytical Technology for the Food Industry reviews established and emerging PAT tools with potential application within the food processing industry. The book will also serve as a reference for industry, researchers, educators, and students by providing a comprehensive insight into the objectives, challenges, and benefits of adopting a Process Analytical Technology strategy in the food industry.

List of contents

Benefits and challenges of adopting PAT for the food industry.- Multivariate Data Analysis (Chemometrics).- Management Systems.- Infrared spectroscopy.- Raman Spectroscopy.- Magnetic Resonance Imaging and Nuclear Magnetic Resonance Spectroscopy.- Computer vision.- Thermal imaging.- Hyperspectral Imaging.- Diagnostic ultrasound.- Emerging PAT technologies.- Food industry perspectives on the implementation of a PAT strategy.

About the author

Dr P. J. Cullen, Dublin Institute of Technology, Ireland

Summary

The Process Analytical Technology (PAT) initiative aims to move from a paradigm of ‘testing quality in’ to ‘building quality in by design’. It can be defined as the optimal application of process analytical technologies, feedback process control strategies, information management tools, and/or product–process optimization strategies.Recently, there have been significant advances in process sensors and in model-based monitoring and control methodologies, leading to enormous opportunities for improved performance of food manufacturing processes and for the quality of food products with the adoption of PAT. Improvements in process efficiency, reduced product variability, enhanced traceability, process understanding, and decreased risk of contamination are some of the benefits arising from the introduction of a PAT strategy in the food industry.
Process Analytical Technology for the Food Industry reviews established and emerging PAT tools with potential application within the food processing industry. The book will also serve as a reference for industry, researchers, educators, and students by providing a comprehensive insight into the objectives, challenges, and benefits of adopting a Process Analytical Technology strategy in the food industry.

Product details

Assisted by P. J. Cullen (Editor), P.J. Cullen (Editor), Colett Fagan (Editor), Colette Fagan (Editor), P J Cullen (Editor), Colm O'Donnell (Editor), Colm P. O'Donnell (Editor)
Publisher Springer, Berlin
 
Languages English
Product format Hardback
Released 22.11.2013
 
EAN 9781493903108
ISBN 978-1-4939-0310-8
No. of pages 301
Dimensions 163 mm x 21 mm x 241 mm
Weight 579 g
Illustrations VIII, 301 p. 107 illus., 45 illus. in color.
Series Food Engineering Series
Food Engineering Series
Subject Natural sciences, medicine, IT, technology > Technology > Chemical engineering

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