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GA를 이용한 복수 애로공정 생산방식제어Production Control in Multiple Bottleneck Processes using Genetic Algorithm

Other Titles
Production Control in Multiple Bottleneck Processes using Genetic Algorithm
Authors
류일환이정호이종환
Issue Date
2018
Publisher
한국산업경영시스템학회
Keywords
CONWIP; DBR; Multi Control Method; Bottleneck; Genetic Algorithm
Citation
한국산업경영시스템학회지, v.41, no.1, pp.102 - 109
Journal Title
한국산업경영시스템학회지
Volume
41
Number
1
Start Page
102
End Page
109
URI
https://scholarworks.bwise.kr/kumoh/handle/2020.sw.kumoh/420
ISSN
2005-0461
Abstract
This paper seeks to present a multi-control method that can contribute to effective control of the production line with multiple bottleneck processes. The multi-control method is the production system that complements shortcomings of CONWIP and DBR, and it is designed to determine the raw material input according to the WIP level of two bottleneck processes and WIP level of total process. The effectiveness of the production system developed by applying the multi-control method was verified by the following three procedures. Raw material input conditions of the multi-control method are as follows. First, raw materials are go into the production line when the number of the total process WIP is lower than established number of WIP in total process and first process is idle. Second, raw materials are introduced when the number of WIP of two bottleneck processes is lower than the established number of WIP of each bottleneck process. Third, raw materials are introduced when the first process and in front of bottleneck process are idle even if the number of WIP in the total process is less than established number of WIP of the total process. The production line with two bottleneck processes was selected as the condition for production environment, and the production process modeling of CONWIP, DBR and multi-control production method was defined according to the production condition. And the optimum limited WIP level suitable for each system was obtained by applying a genetic algorithm to determine the total limited number of WIP of CONWIP, the limited number of WIP of DBR bottleneck process, the number of WIP in the total process of multi-control method and the limited number of WIP of bottleneck process. The limited number of WIP of CONWIP, DBR and multi-control method obtained by the genetic algorithm were applied to ARENA modeling, which is simulation software, and a simulation was conducted to derive result values on the basis of three criteria such as production volume, lead time and number of goods in-progress.
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