A Hybrid Genetic Algorithm for the Single Machine Scheduling Problem

被引:0
|
作者
David M. Miller
Hui-Chuan Chen
Jessica Matson
Qiang Liu
机构
[1] University of Alabama,Commerce and Business Administration
[2] University of Alabama,College of Engineering
[3] Tennessee Tech,College of Engineering
[4] McKesson HBOC Co.,undefined
来源
Journal of Heuristics | 1999年 / 5卷
关键词
sequencing; scheduling; genetic algorithm;
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摘要
A hybrid genetic algorithm (HGA) is proposed for the single machine, single stage, scheduling problem in a sequence dependent setup time environment within a fixed planning horizon (SSSDP). It incorporates the elitist ranking method, genetic operators, and a hill-climbing technique in each searching area. To improve the performance and efficiency, hill climbing is performed by uniting the Wagner-Whitin Algorithm with the problem-specific knowledge. The objective of the HGA is to minimize the sum of setup cost, inventory cost, and backlog cost. The HGA is able to obtain a superior solution, if it is not optimal, in a reasonable time. The computational results of this algorithm on real life SSSDP problems are promising. In our test cases, the HGA performed up to 50% better than the Just-In-Time heuristics and 30% better than the complete batching heuristics.
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页码:437 / 454
页数:17
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