
Data Mining for Design and Manufacturing
Methods and Applications
D. Braha(Editor)
Springer (Publisher)
Published on 8. December 2010
Book
Paperback/Softback
XVIII, 524 pages
978-1-4419-5205-9 (ISBN)
Description
Data Mining for Design and Manufacturing: Methods and Applications
is the first book that brings together research and applications for data mining within design and manufacturing. The aim of the book is 1) to clarify the integration of data mining in engineering design and manufacturing, 2) to present a wide range of domains to which data mining can be applied, 3) to demonstrate the essential need for symbiotic collaboration of expertise in design and manufacturing, data mining, and information technology, and 4) to illustrate how to overcome central problems in design and manufacturing environments. The book also presents formal tools required to extract valuable information from design and manufacturing data, and facilitates interdisciplinary problem solving for enhanced decision making.
Audience: The book is aimed at both academic and practising audiences. It can serve as a reference or textbook for senior or graduate level students in Engineering, Computer, and Management Sciences who are interested in data mining technologies. The book will be useful for practitioners interested in utilizing data mining techniques in design and manufacturing as well as for computer software developers engaged in developing data mining tools.
Audience: The book is aimed at both academic and practising audiences. It can serve as a reference or textbook for senior or graduate level students in Engineering, Computer, and Management Sciences who are interested in data mining technologies. The book will be useful for practitioners interested in utilizing data mining techniques in design and manufacturing as well as for computer software developers engaged in developing data mining tools.
More details
Series
Edition
1st ed. Softcover of orig. ed. 2002
Language
English
Place of publication
New York
United States
Target group
Professional and scholarly
Research
Illustrations
XVIII, 524 p.
Dimensions
Height: 235 mm
Width: 155 mm
Thickness: 30 mm
Weight
820 gr
ISBN-13
978-1-4419-5205-9 (9781441952059)
DOI
10.1007/978-1-4757-4911-3
Schweitzer Classification
Other editions
Additional editions

Book
10/2001
Kluwer Academic Publishers
€160.49
Shipment within 15-20 days
Content
I: Overview of Data Mining.- 1 Data Mining: An Introduction.- 2 A Survey of Methodologies and Techniques for Data Mining and Intelligent Data Discovery.- II: Data Mining in Product Design.- 3 Data Mining in Scientific Data.- 4 Learning to Set Up Numerical Optimizations of Engineering Designs.- 5 Automatic Classification and Creation of Classification Systems Using Methodologies of "Knowledge Discovery in Databases (KDD)".- 6 Data Mining for Knowledge Acquisition in Engineering Design.- 7 A Data Mining-Based Engineering Design Support System: A Research Agenda.- III: Data Mining in Manufacturing.- 8 Data Mining for High Quality and Quick Response Manufacturing.- 9 Data Mining for Process and Quality Control in the Semiconductor Industry.- 10 Analyzing Maintenance Data Using Data Mining Methods.- 11 Methodology of Mining Massive Data Sets for Improving Manufacturing Quality/Efficiency.- 12 Intelligent Process Control System for Quality Improvement by Data Mining in the Process Industry.- 13 Data Mining by Attribute Decomposition with Semiconductor Manufacturing Case Study.- 14 Derivation of Decision Rules for the Evaluation of Product Performance Using Genetic Algorithms and Rough Set Theory.- 15 An Evaluation of Sampling Methods for Data Mining with Fuzzy C-Means.- 16 Colour Space Mining for Industrial Monitoring.- 17 Non-Traditional Applications of Data Mining.- 18 Fuzzy-Neural-Genetic Layered Multi-Agent Reactive Control of Robotic Soccer.- IV: Enabling Technologies for Data Mining in Design and Manufacturing.- 19 Method-Specific Knowledge Compilation.- 20 A Study of Technical Challenges in Relocation of a Manufacturing Site.- 21 Using Imprecise Analogical Reasoning to Refine the Query Answers for Heterogeneous Multidatabase Systems in Virtual Enterprises.- 22 TheUse of Process Capability Data in Design.