• 제목/요약/키워드: Clustered VRP

검색결과 2건 처리시간 0.015초

선행제약을 고려한 권역단위 공병장애물 설치경로 최적화 모형 (Optimization Routing Model for Installation of Clustered Engineering Obstacles with Precedence Constraint)

  • 유동근;김수환
    • 산업경영시스템학회지
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    • 제47권2호
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    • pp.65-73
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    • 2024
  • This paper presents a path planning optimization model for the engineering units to install obstacles in the shortest time during wartime. In a rapidly changing battlefield environment, engineering units operate various engineering obstacles to fix, bypass, and delay enemy maneuvers, and the success of the operation lies in efficiently planning the obstacle installation path in the shortest time. Existing studies have not reflected the existence of obstacle material storage that should be visited precedence before installing obstacles, and there is a problem that does not fit the reality of the operation in which the installation is continuously carried out on a regional basis. By presenting a Mixed Integrer Programming optimization model reflecting various constraints suitable for the battlefield environment, this study attempted to promote the efficient mission performance of the engineering unit during wartime.

배달과 수집을 수행하는 차량경로문제 휴리스틱에 관한 연구: 수도권 레미콘 운송사례 (Heuristic for the Pick-up and Delivery Vehicle Routing Problem: Case Study for the Remicon Truck Routing in the Metropolitan Area)

  • 지창훈;김미이;이영훈
    • 경영과학
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    • 제24권2호
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    • pp.43-56
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    • 2007
  • VRP(Vehicle Routing Problem) is studied in this paper, where two different kinds of missions are to be completed. The objective is to minimize the total vehicle operating distance. A mixed integer programming formulation and a heuristic algorithm for a practical use are suggested. A heuristic algorithm consists of three phases such as clustering, constructing routes, and adjustment. In the first phase, customers are clustered so that the supply nodes are grouped with demand nodes to be served by the same vehicle. Vehicle routes are generated within the cluster in the second phase. Clusters and routes are adjusted in the third phase using the UF (unfitness) rule designed to determine the customers and the routes to be moved properly. It is shown that the suggested heuristic algorithm yields good performances within a relatively short computational time through computational experiment.