Joint Replenishment Problem with Multisupplier using Hybrid Genetic Algorithm(<Special English Issue>Global Supply Chain Management)
スポンサーリンク
概要
- 論文の詳細を見る
The joint replenishment problem (JRP) involves determining a replenishment policy that minimizes the total cost of replenishing multiple items from a single supplier. In this paper, we propose a new approach for the JRP where items are procured from multisupplier. In solution algorithms, the Genetic Algorithm (GA) and the Simulated Annealing (SA) are cooperatively used. In this method, the convergence of GA is improved by introducing the probability of SA as the criterion for acceptance of new trial solution. We use genetic algorithm for this problem. The purpose of the proposed algorithm in this paper is to minimize the total relevant costs per unit time. The effectiveness of the proposed algorithm is shown through a simulation study.
- 社団法人日本経営工学会の論文
- 2007-02-15
著者
-
Gen Mitsuo
Waseda Univ. Fukuoka Jpn
-
Gen Mitsuo
Waseda University
-
Yoo Myungryun
Musasi Institute Of Technology
関連論文
- Fuzzy Methods for Voice-Based Person Authentication
- Optimization and improvement in robot-based assembly line system by hybrid genetic algorithm (特集:進化技術とその応用)
- Hybrid Genetic Algorithm with Fuzzy Logic Controller for Obstacle Location-Allocation Problem
- Multimedia Task Scheduling using Proportion-based Genetic Algorithm
- Case Study on Optimal Routing in Logistics Network by Priority-based Genetic Algorithm (特集:産学連携による論文)
- An effective evolutionary approach for bicriteria shortest path routing problems (特集:進化技術とその応用)
- Joint Replenishment Problem with Multisupplier using Hybrid Genetic Algorithm(Global Supply Chain Management)
- Special Issue on "Intelligent and Evolutionary Systems"
- Evolutionary Computation Technology and its Application
- A Genetic Algorithm with Fuzzy Logic Controller for Design of Communication Networks
- Bicriteria Network Optimization Problem using Priority-based Genetic Algorithm