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Application of Data Mining in Manufacturing Quality Data

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5 Author(s)
Keqin Wang ; Sch. of Manage., Northwestern Polytech. Univ., Xi'an ; Shurong Tong ; Benoit Eynard ; Lionel Roucoules
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Knowledge on product quality is one of the most important knowledge sources throughout the product lifecycle for the efficiency and effectiveness of product design decisions. To provide quality related knowledge, this paper proposed one data mining based knowledge discovery approach. This approach can extract knowledge on product quality from large volume of quality related manufacturing data. The effectiveness of this approach is illustrated and validated by an example adapted from literature. Finally, some conclusions and future works are discussed.

Published in:

2007 International Conference on Wireless Communications, Networking and Mobile Computing

Date of Conference:

21-25 Sept. 2007