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Process Planning Method under Make-to-Order Production System using Data Mining  

Oh, Kyung-Mo (Zerone Information Technology co. Ltd)
Park, Chang-Kwon (Department of Industrial Engineering, University of Ulsan)
Publication Information
IE interfaces / v.18, no.2, 2005 , pp. 148-157 More about this Journal
Abstract
The manufacturing industry with Make-to-Order production system is difficult to decide the standard information for the product and the demand is variable to estimate. In this paper, we concerned with the process planning method using data mining in the manufacturing industry with Make-to-Order environment. The subject of our study is the industry transformer plant which is received an diverse order of customer and then produced the product. Currently, process planning method is classified the standard information by hand based on the acquired knowledge through the experience. The standard information stored the various information, such as work sequence, time and so on. This process planning method needs an experts which possesses the field experience for several years. For the product specification which is varied in each order, current process planning method is not efficient due to need many times To solve this problem, we extract the information using data mining process for each processing time, and then construct the knowledge base. We propose a method which is the process planning of the industry transformer product in Make-to-Order environment using the knowledge base.
Keywords
process planning; Make-to-Order production; data mining; standard information;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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