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제조라인 통합 설계 및 분석(I) - 디지털 가상생산 기술 적용을 위한 모델링 & 시뮬레이션 자동화 시스템
최상수(SangSu Choi),현정호(Jeongho Hyeon),장용(Yong Jang),이범기(Bumgee Lee),박양호(Yangho Park),강형석(HyoungSeok Kang),전찬모(Chanmo Jun),정진우(Jinwoo Jung),노상도(Sang Do Noh) (사)한국CDE학회 2014 한국CDE학회 논문집 Vol.19 No.2
In manufacturing companies, different types of production have been developed based on diverse production strategies and differentiated technologies. The production systems have become smart, factories are filled with unmanned manufacturing lines, and sustainable manufacturing technologies are under development. Nowadays, the digital manufacturing technology is being adopted and used in manufacturing industries. When this technology is applied, a lot of efforts, time and cost are required and training professionals in-house is limited. In this paper, we introduce e-FEED system (electronic based Front End Engineering and Design) that is the integrated design and analysis system for optimized manufacturing line development on virtual environment. This system provides the functions that can be designed easily using library and template based on standardized modules and analyzed automatically the logistic and capacity simulation by one-click and verified the result using visual reports. Also, we can review the factory layout using automatically created 3D virtual factory and increase the knowledge reuse by e-FEED system.
손숙영(SookYoung Son),Bernardo Nugroho Yahya,송민석(Minseok Song),최상수(SangSu Choi),현정호(JeongHo Hyeon),이범기(BumGee Lee),장용(Yong Jang),성낙윤(NakYun Sung),신연식(YeonSik Sin) (사)한국CDE학회 2014 한국 CAD/CAM 학회 학술발표회 논문집 Vol.2014 No.2
As ‘big data’ becomes a key issue of the IT industry, there has been a lot of research work conducted for the unstructured data analysis in the service or IT industry. However, one of the main industries of Korea is manufacturing, and it usually produces structured rather than unstructured data. Therefore, developing a systematic analysis methodology for the structured data analysis is needed, especially for a manufacturing data analysis. Accurate manufacturing data analysis provides useful information for a competitive production capacity, which will influence on the productivity and competitiveness of a company. A Manufacturing Execution System (MES) is a computerized system used in the manufacturing industry. It extracts manufacturing related information automatically, which is useful for manufacturing manager to make better decisions. Manufacturing data analysis is able to be performed by using MES. Process Mining aims at extracting useful knowledge by analyzing event logs which are gathered from information systems (e.g. ERP, MES, and CRM). Manufacturing data analysis with process mining techniques can derive not only manufacturing process models, but also several performance measures related to processes, resources, and equipment. In this paper, we propose a framework for analyzing manufacturing processes using process mining techniques with the aim of deriving useful information from manufacturing transaction logs. Furthermore, we conducted a case study of the Samsung Electro-Mechanic (SEM) manufacturing process to prove the proposed framework.