Simultaneous scheduling of parts and automated guided vehicles in an FMS environment using adaptive genetic algorithm

被引:0
作者
J. Jerald
P. Asokan
R. Saravanan
A. Delphin Carolina Rani
机构
[1] SASTRA (Deemed University),School of Mechanical Engineering
[2] National Institute of Technology,Department of Production Engineering
[3] JJ College of Engg. & Technology,Department of Mechanical Engineering
[4] PR Engg. College,Department of Computer Science & Engg.
来源
The International Journal of Advanced Manufacturing Technology | 2006年 / 29卷
关键词
Adaptive genetic algorithm; Automatic guided vehicles; Flexible manufacturing system; Genetic algorithm and scheduling;
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摘要
Automated Guided Vehicles (AGVs) are among various advanced material handling techniques that are finding increasing applications today. They can be interfaced to various other production and storage equipment and controlled through an intelligent computer control system. Both the scheduling of operations on machine centers as well as the scheduling of AGVs are essential factors contributing to the efficiency of the overall flexible manufacturing system (FMS). An increase in the performance of the FMS under consideration would be expected as a result of making the scheduling of AGVs an integral part of the overall scheduling activity. In this paper, simultaneous scheduling of parts and AGVs is done for a particular type of FMS environment by using a non-traditional optimization technique called the adaptive genetic algorithm (AGA). The problem considered here is a large variety problem (16 machines and 43 parts) and combined objective function (minimizing penalty cost and minimizing machine idle time). If the parts and AGVs are properly scheduled, then the idle time of the machining center can be minimized; as such, their utilization can be maximized. Minimizing the penalty cost for not meeting the delivery date is also considered in this work. Two contradictory objectives are to be achieved simultaneously by scheduling parts and AGVs using the adaptive genetic algorithm. The results are compared to those obtained by conventional genetic algorithm.
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页码:584 / 589
页数:5
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