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데이터마이닝을 활용한 해군함정 수리부속 수요예측 KCI 등재

Naval Vessel Spare Parts Demand Forecasting Using Data Mining

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한국산업경영시스템학회지 (Journal of Society of Korea Industrial and Systems Engineering)
한국산업경영시스템학회 (Society of Korea Industrial and Systems Engineering)
초록

Recent development in science and technology has modernized the weapon system of ROKN (Republic Of Korea Navy). Although the cost of purchasing, operating and maintaining the cutting-edge weapon systems has been increased significantly, the national defense expenditure is under a tight budget constraint. In order to maintain the availability of ships with low cost, we need accurate demand forecasts for spare parts. We attempted to find consumption pattern using data mining techniques. First we gathered a large amount of component consumption data through the DELIIS (Defense Logistics Intergrated Information System). Through data collection, we obtained 42 variables such as annual consumption quantity , ASL selection quantity, order-relase ratio. The objective variable is the quantity of spare parts purchased in f-year and MSE (Mean squared error) is used as the predictive power measure. To construct an optimal demand forecasting model, regression tree model, randomforest model, neural network model, and linear regression model were used as data mining techniques. The open software R was used for model construction. The results show that randomforest model is the best value of MSE. The important variables utilized in all models are consumption quantity, ASL selection quantity and order-release rate. The data related to the demand forecast of spare parts in the DELIIS was collected and the demand for the spare parts was estimated by using the data mining technique. Our approach shows improved performance in demand forecasting with higher accuracy then previous work. Also data mining can be used to identify variables that are related to demand forecasting.

목차
1. 서 론
 2. 이론적 고찰
  2.1 군 수요예측 관리실태
  2.2 수요예측분야 데이터마이닝
 3. 수리부속 수요예측 모형
  3.1 데이터 수집 및 변수 선정
  3.2 모델 구축
  3.3 결과 분석
 4. 결 론
 References
저자
  • 윤현민(국방대학교 국방과학학과) | Hyunmin Yoon (Department of Military Science, Korea National Defense University)
  • 김수환(국방대학교 국방과학학과) | Suhwan Kim (Department of Military Science, Korea National Defense University) Corresponding author