基于回归和物联网的库存管理系统在需求预测中的应用——以半导体制造企业为例

IF 0.8 Q3 ENGINEERING, MULTIDISCIPLINARY International Journal of Engineering Research in Africa Pub Date : 2022-05-20 DOI:10.4028/p-8ntq24
Asmae El Jaouhari, Z.A. Alhilali, Jabir Arif, Soumaya Fellaki, Mohamed Amejwal, Khaoula Azzouz
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引用次数: 8

摘要

需求预测的准确性对供应链系统的绩效有着重要影响,而供应链系统又对公司绩效有着重大影响。准确的预测将使组织能够最大限度地利用其资源。同步客户订单以支持生产对于按时完成订单至关重要。然而,事实上,许多组织报告说,他们的预测方法并没有像他们希望的那样有效,因为订单会因客户需求而定期更改。本文的目的是提出一种基于物联网(IoT)的库存管理系统(IMS),该系统将多元线性回归因果法(MLR)与遗传算法(GA)相结合,以尽可能提高客户对未来时期需求预测的准确性,并实现工业4.0的智能库存。根据从一家专门从事低批量、高混合合同制造设备和服务集成的半导体公司收集的数据,建议的基于物联网的IMS表明,库存生产力和效率可以提高,并且对订单波动具有弹性。
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Demand Forecasting Application with Regression and IoT Based Inventory Management System: A Case Study of a Semiconductor Manufacturing Company
The accuracy of demand forecasting has a significant impact on the supply chain system's performance, which in turn has a major effect on company performance. Accurate forecasting will allow the organization to make the best use of its resources. The synchronization of customer orders to support production is critical for on-time order fulfillment. However, In fact many organizations report that their forecasting method is not working as effectively as they had hoped because orders regularly alter due to client demands. The purpose of this paper is to present an Internet of Things (IoT)-based inventory management system (IMS) that combines a causal method of multiple linear regressions (MLR) with genetic algorithms (GA) to improve the accuracy of demand forecasting in the future period by the customer as closely as feasible and enable smart inventory for Industry 4.0. Based on the data gathered from a semiconductor company that specializes in low-volume, high-mix contract manufacturing equipment and services integration, the suggested IoT-based IMS indicates that inventory productivity and efficiency could be enhanced, and it is resilient to order fluctuation.
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来源期刊
CiteScore
1.80
自引率
14.30%
发文量
62
期刊介绍: "International Journal of Engineering Research in Africa" is a peer-reviewed journal which is devoted to the publication of original scientific articles on research and development of engineering systems carried out in Africa and worldwide. We publish stand-alone papers by individual authors. The articles should be related to theoretical research or be based on practical study. Articles which are not from Africa should have the potential of contributing to its progress and development.
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