Data Mining: Techniques and Applications in the Manufacturing Industry

Data mining and knowledge discovery in databases are increasingly attracting a significant number of academics, professionals, and the attention of the media. It is regarded by many industrial organisations as an important tool in knowledge discovery with the potential for substantial profits. Howev...

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Main Author: Al-Nimer, Thaer
Format: Dissertation (University of Nottingham only)
Language:English
Published: 2006
Subjects:
Online Access:https://eprints.nottingham.ac.uk/20415/
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author Al-Nimer, Thaer
author_facet Al-Nimer, Thaer
author_sort Al-Nimer, Thaer
building Nottingham Research Data Repository
collection Online Access
description Data mining and knowledge discovery in databases are increasingly attracting a significant number of academics, professionals, and the attention of the media. It is regarded by many industrial organisations as an important tool in knowledge discovery with the potential for substantial profits. However, data mining is a relatively new field that has emerged as a result of advancements in many different subjects such as statistics and computing and has only recently began to attract the attention it deserves. As a result, this dissertation provides an overview of this emerging field and demonstrates the potential applications of data mining that can be applied to many domains, in particular to the manufacturing industry. The work starts with distinguishing between the different components of working knowledge. These components are then related to the knowledge discovery process by illustrating the components of this iterative process. Data mining, which is one of the steps in the knowledge discovery process, is then described by discussing the requirements, challenges, techniques, and specific applications in different domains. Finally, two data mining applications in manufacturing will be proposed for future research. The first model tackles the productions strategy decision issues that manufacturers encounter. The production strategies discussed include make-to-order, assemble-to-order, stock-to-order and engineer-to-order strategies. The second model enhances the efficiency of the supply chain by assessing the supplier's risk and facilitating a better outsourcing policy.
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spelling nottingham-204152018-01-05T00:50:34Z https://eprints.nottingham.ac.uk/20415/ Data Mining: Techniques and Applications in the Manufacturing Industry Al-Nimer, Thaer Data mining and knowledge discovery in databases are increasingly attracting a significant number of academics, professionals, and the attention of the media. It is regarded by many industrial organisations as an important tool in knowledge discovery with the potential for substantial profits. However, data mining is a relatively new field that has emerged as a result of advancements in many different subjects such as statistics and computing and has only recently began to attract the attention it deserves. As a result, this dissertation provides an overview of this emerging field and demonstrates the potential applications of data mining that can be applied to many domains, in particular to the manufacturing industry. The work starts with distinguishing between the different components of working knowledge. These components are then related to the knowledge discovery process by illustrating the components of this iterative process. Data mining, which is one of the steps in the knowledge discovery process, is then described by discussing the requirements, challenges, techniques, and specific applications in different domains. Finally, two data mining applications in manufacturing will be proposed for future research. The first model tackles the productions strategy decision issues that manufacturers encounter. The production strategies discussed include make-to-order, assemble-to-order, stock-to-order and engineer-to-order strategies. The second model enhances the efficiency of the supply chain by assessing the supplier's risk and facilitating a better outsourcing policy. 2006 Dissertation (University of Nottingham only) NonPeerReviewed application/pdf en https://eprints.nottingham.ac.uk/20415/1/Microsoft_Word_-_06MSclixta3.pdf Al-Nimer, Thaer (2006) Data Mining: Techniques and Applications in the Manufacturing Industry. [Dissertation (University of Nottingham only)] (Unpublished) Data Mining Knowledge Discovery in Data Base knowledge Extraction Knowledge Process Manufacturing.
spellingShingle Data Mining
Knowledge Discovery in Data Base
knowledge Extraction
Knowledge Process
Manufacturing.
Al-Nimer, Thaer
Data Mining: Techniques and Applications in the Manufacturing Industry
title Data Mining: Techniques and Applications in the Manufacturing Industry
title_full Data Mining: Techniques and Applications in the Manufacturing Industry
title_fullStr Data Mining: Techniques and Applications in the Manufacturing Industry
title_full_unstemmed Data Mining: Techniques and Applications in the Manufacturing Industry
title_short Data Mining: Techniques and Applications in the Manufacturing Industry
title_sort data mining: techniques and applications in the manufacturing industry
topic Data Mining
Knowledge Discovery in Data Base
knowledge Extraction
Knowledge Process
Manufacturing.
url https://eprints.nottingham.ac.uk/20415/