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Slotting optimization of automated storage and retrieval system (AS/RS) for efficient delivery of parts in an assembly shop using genetic algorithm: A case Study

机译:自动存储和检索系统(AS / RS)的时隙优化,用于使用遗传算法在装配商店中有效地提供零件的高效交付:一个案例研究

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In recent years, the competitive pressure on manufacturing companies shifted them from mass production to mass customization to produce large variety of products. It is a great challenge for companies nowadays to produce customized mixed flow mode of production to meet customized demand on time. Due to large variety of products, the storage system to deliver variety of products to production lines influences on the timely production of variety of products, as investigated from by simulation study of an inefficient storage system of a real Company, in the current research. Therefore, current research proposed a slotting optimization model with mixed model sequence to assemble in consideration of the final flow lines to optimize whole automated storage and retrieval system (AS/RS) and distribution system in the case company. Current research is aimed to minimize vertical height of centre of gravity of AS/RS and total time spent for taking the materials out from the AS/RS simultaneously. Genetic algorithm is adopted to solve the proposed problem and computational result shows significant improvement in stability and efficiency of AS/RS as compared to the existing method used in the case company.
机译:近年来,制造业公司的竞争压力将它们从大规模生产转移到大规模定制,以生产各种产品。现在为公司生产定制的混合流动模式是一项巨大的挑战,以满足定制的需求。由于种类繁多的产品,存储系统提供的及时生产各种产品的多种产品生产线的影响,如一个真正的公司的低效存储系统的模拟研究从调查,在目前的研究。因此,目前的研究提出了一种具有混合模型序列的时隙优化模型,以考虑最终流动线来优化案例公司中的整个自动化存储和检索系统(AS / RS)和分配系统。目前的研究旨在最大限度地减少AS / RS的重心的垂直高度,并在同时将材料从AS / RS中取出。采用遗传算法解决了所提出的问题,与案例公司中使用的现有方法相比,计算结果表明AS / Rs的稳定性和效率显着提高。

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