基于长短期记忆神经网络的仓库需求预测

K. Hodzic, H. Hasic, Emir Cogo, Ž. Jurić
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引用次数: 2

摘要

在现代市场中,将产品快速交付给客户是非常重要的。送货可以在现场进行,也可以送到客户家中。为了实现这一目标,重要的是要有足够的货物储存在仓库和准备交付。在仓库里堆满货物并不是一个好决定,因为空间有限,价格昂贵,而且收集订单会变得更加复杂。这就是为什么存储货物的数量与将来将要订购的产品单位的确切数量趋于一致是很重要的原因。需求预测试图解决这个问题。本文描述了基于长短期记忆递归神经网络的需求预测算法,并与前人的需求预测算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Warehouse Demand Forecasting based on Long Short-Term Memory neural networks
In modern market it is very important to deliver products to customers fast. That delivery can be on site or to customer's homes. In order to achieve that it is important to have enough goods stored in warehouses and prepared for delivery. It is not a good decision to clutter up warehouses with the goods because space is limited and expensive and it makes it more complicated to collect orders. Those are the reasons why it is important that number of stored goods converge to the exact number of product units that will be ordered in the future. Demand forecasting tries to solve that problem. In this work demand forecasting algorithm based on Long Short-Term Memory recurrent neural network is described and compared with demand forecasting algorithms developed by authors before.
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