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http://dx.doi.org/10.15207/JKCS.2021.12.10.071

Reference Information Batch Application Model for Improving the Efficiency of MES  

Park, Sang-Hyock (Dept. of Computer Engineering, Kongju National University)
Park, Koo-Rack (Dept. of Computer Science & Engineering, Kongju National University)
Kim, Dong-Hyun (Dept. of IT Artificial Intelligence, Korea Nazarene University)
Chung, Koung-Rock (Dept. of Computer Engineering, Kongju National University)
Publication Information
Journal of the Korea Convergence Society / v.12, no.10, 2021 , pp. 71-79 More about this Journal
Abstract
In the manufacturing industry, there is a transition to multi-item production for reinforcement of competitiveness. Therefore, the hybrid manufacturing technology is increasing. Especially, many efforts in production quality improvement are made through the adoption of the manufacturing execution system and ERP, so it is necessary to operate MES for prompt and effective management. MES should improve ineffective parts in production activities while managing all stages related to production of products. If there is change in the process, the changed items should be reflected to the system. However, most manufacturing execution systems are operated passively and repetitively by system administrators. This study presents a model that system administrators can comprehensively apply reference information about production related requirements on specific line's equipment to the same equipment of other lines. The flexible response for application to production lines is possible thanks to the division of blanket application and selective application of reference information through proposed model.
Keywords
Manufacturing Execution System; MES; WPF; .NET; IT Convergence;
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