Fr. 135.00

Identifying Product and Process State Drivers in Manufacturing Systems Using Supervised Machine Learning

English · Paperback / Softback

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Description

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The book reports on a novel approach for holistically identifying the relevant state drivers of complex, multi-stage manufacturing systems. This approach is able to utilize complex, diverse and high-dimensional data sets, which often occur in manufacturing applications, and to integrate the important process intra- and interrelations. The approach has been evaluated using three scenarios from different manufacturing domains (aviation, chemical and semiconductor). The results, which are reported in detail in this book, confirmed that it is possible to incorporate implicit process intra- and interrelations on both a process and programme level by applying SVM-based feature ranking. In practice, this method can be used to identify the most important process parameters and state characteristics, the so-called state drivers, of a manufacturing system. Given the increasing availability of data and information, this selection support can be directly utilized in, e.g., quality monitoring and advanced process control. Importantly, the method is neither limited to specific products, manufacturing processes or systems, nor by specific quality concepts.

List of contents

Introduction.- Developments of manufacturing systems with a focus on product and process quality.- Current approaches with a focus on holistic information management in manufacturing.- Development of the product state concept.- Application of machine learning to identify state drivers.- Application of SVM to identify relevant state drivers.- Evaluation of the developed approach.- Recapitulation.

Summary

The book reports on a novel approach for holistically identifying the relevant state drivers of complex, multi-stage manufacturing systems. This approach is able to utilize complex, diverse and high-dimensional data sets, which often occur in manufacturing applications, and to integrate the important process intra- and interrelations. The approach has been evaluated using three scenarios from different manufacturing domains (aviation, chemical and semiconductor). The results, which are reported in detail in this book, confirmed that it is possible to incorporate implicit process intra- and interrelations on both a process and programme level by applying SVM-based feature ranking. In practice, this method can be used to identify the most important process parameters and state characteristics, the so-called state drivers, of a manufacturing system. Given the increasing availability of data and information, this selection support can be directly utilized in, e.g., quality monitoring and advanced process control. Importantly, the method is neither limited to specific products, manufacturing processes or systems, nor by specific quality concepts.

Product details

Authors Thorsten Wuest
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 01.01.2016
 
EAN 9783319386980
ISBN 978-3-31-938698-0
No. of pages 272
Dimensions 155 mm x 15 mm x 235 mm
Weight 447 g
Illustrations XVIII, 272 p. 139 illus., 10 illus. in color.
Series Springer Theses
Springer Theses
Subjects Natural sciences, medicine, IT, technology > Technology > Miscellaneous

B, Künstliche Intelligenz, Artificial Intelligence, Computer-Aided Design (CAD), Management spezifischer Bereiche, engineering, Operations Management, Industrial Engineering, Industrial and Production Engineering, Management of specific areas, Production engineering, Production management, Computational Intelligence, Computer-Aided Engineering (CAD, CAE) and Design, Computer-aided engineering

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