혼성 유전알고리듬을 이용한 단일기간 재고품목의 통합 생산-분배계획 해법

Integrated Production-Distribution Planning for Single-Period Inventory Products Using a Hybrid Genetic Algorithm

  • 박양병 (경희대학교 테크노공학대학 기계 산업시스템공학부)
  • Park, Yang-Byung (Mechanical and Industrial Systems Engineering, College of Advanced Technology, Kyung Hee University)
  • 투고 : 20030300
  • 심사 : 20030600
  • 발행 : 2003.09.30

초록

Many firms are trying to optimize their production and distribution functions separately, but possible savings by this approach may be limited. Nowadays, it is more important to analyze these two functions simultaneously by trading off the costs associated with the whole. In this paper, I treat a production and distribution planning problem for single-period inventory products comprised of a single production facility and multiple customers, with the aim of optimally coordinating important and interrelated decisions of production sequencing and vehicle routing. Then, I propose a hybrid genetic algorithm incorporating several local optimization techniques, HGAP, for integrated production-distribution planning. Computational results on test problems show that HGAP is effective and generates substantial cost savings over Hurter and Buer's decoupled planning approach in which vehicle routing is first developed and a production sequence is consequently derived. Especially, HGAP performs better on the problems where customers are dispersed with multi-item demand than on the problems where customers are divided into several zones based on single-item demand.

키워드

참고문헌

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