Fog Computing and Industry 4.0 for Newsvendor Inventory Model Using Attention Mechanism and Gated Recurrent Unit

Logistics Pub Date : 2024-06-03 DOI:10.3390/logistics8020056
Joaquin Gonzalez, Liliana Avelar Sosa, Gabriel Bravo, O. Cruz-Mejía, J. Mejía-Muñoz
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Abstract

Background: Efficient inventory management is critical for sustainability in supply chains. However, maintaining adequate inventory levels becomes challenging in the face of unpredictable demand patterns. Furthermore, the need to disseminate demand-related information throughout a company often relies on cloud services. However, this method sometimes encounters issues such as limited bandwidth and increased latency. Methods: To address these challenges, our study introduces a system that incorporates a machine learning algorithm to address inventory-related uncertainties arising from demand fluctuations. Our approach involves the use of an attention mechanism for accurate demand prediction. We combine it with the Newsvendor model to determine optimal inventory levels. The system is integrated with fog computing to facilitate the rapid dissemination of information throughout the company. Results: In experiments, we compare the proposed system with the conventional demand estimation approach based on historical data and observe that the proposed system consistently outperformed the conventional approach. Conclusions: This research introduces an inventory management system based on a novel deep learning architecture that integrates the attention mechanism with cloud computing to address the Newsvendor problem. Experiments demonstrate the better accuracy of this system in comparison to existing methods. More studies should be conducted to explore its applicability to other demand modeling scenarios.
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使用注意机制和门控循环单元的新闻供应商库存模型的雾计算和工业 4.0
背景:高效的库存管理对供应链的可持续性至关重要。然而,面对不可预测的需求模式,保持足够的库存水平变得非常具有挑战性。此外,在整个公司传播与需求相关的信息往往需要依赖云服务。然而,这种方法有时会遇到带宽有限和延迟增加等问题。方法:为了应对这些挑战,我们的研究引入了一种结合机器学习算法的系统,以解决需求波动带来的库存相关不确定性问题。我们的方法包括使用关注机制来准确预测需求。我们将其与 Newsvendor 模型相结合,以确定最佳库存水平。该系统与雾计算相结合,便于在全公司范围内快速传播信息。实验结果在实验中,我们将提议的系统与基于历史数据的传统需求预测方法进行了比较,发现提议的系统始终优于传统方法。结论本研究介绍了一种基于新型深度学习架构的库存管理系统,该架构将注意力机制与云计算相结合,以解决新闻供应商问题。实验证明,与现有方法相比,该系统具有更高的准确性。应开展更多研究,探索其在其他需求建模场景中的适用性。
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