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Performance evaluation of In-Deep Class Storage for Flow-Rack AS/RS

机译:Flow-Rack AS / RS的深层存储性能评估

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This article presents a new storage-retrieval method called In-Deep Class Storage, designed for Flow-Rack AS/RS. Class-based storage is a well-known method that has an extensive literature; our method is based on the fact that it is more efficient to dedicate the front layers of each bin to the class of the most popular items rather than dedicating whole bins close to the drop-off station. Clearly, this idea is not trivial to implement due to the dynamic behaviour of such racks. Thus, two separate algorithms have been defined, one for storage and one for retrieval, enabling dynamic use of our approach, with the only hypothesis of a Pareto distribution of item demand. This article presents a simulation study designed to compare the performance of random storage and retrieval with the use of the algorithms. This study shows a significant improvement of the expected retrieval delay, the main performance indicator selected for the study.
机译:本文介绍了一种新的称为In-Deep Class Storage的存储检索方法,该方法专为Flow-Rack AS / RS设计。基于类的存储是一种众所周知的方法,具有广泛的文献资料。我们的方法基于这样一个事实,即将每个垃圾箱的前层专用于最受欢迎商品的类别,而不是将整个垃圾箱专用于送达站附近,这一点更为有效。显然,由于这种机架的动态行为,这种想法的实现并非易事。因此,已经定义了两种单独的算法,一种用于存储,一种用于检索,从而能够动态使用我们的方法,并且只有项目需求的帕累托分布。本文提出了一个仿真研究,旨在比较使用算法的随机存储和检索的性能。这项研究显示预期检索延迟的显着改善,这是为研究选择的主要性能指标。

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