Demand forecasting using a hybrid model based on artificial neural networks: A study case on electrical products

IF 2.4 Q2 ENGINEERING, INDUSTRIAL
H. Quiñones, Oscar Rubiano, Wilfredo Alfonso
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引用次数: 0

Abstract

Purpose: This work aims to evaluate demand forecasting models to determine if using exogenous factors and machine learning techniques helps improve performance compared to univariate statistical models, allowing manufacturing companies to manage demand better.Design/methodology/approach: We implemented a multivariate Auto-Regressive Moving Average with eXogenous input (ARMAX) statistical model and a Neural Network-ARMAX (NN-ARMAX) hybrid model for forecasting. Later, we compared both to a standard univariate statistical model to forecast the demand for electrical products in a Colombian manufacturing company.Findings: The outcomes demonstrated that the NN-ARMAX model outperformed the other two. Indeed, demand management improved with the reduction of overstock and out-of-stock products.Research limitations/implications: The findings and conclusions in this work are limited to Colombian manufacturing companies that sell electrical products to the construction industry. Moreover, the experts from the company that provided us with the data also selected the external factors based on their own experiences, i.e., we might have disregarded potential factors.Practical implications: This work suggests that a model using neural networks and including exogenous variables can improve demand forecasting accuracy, promoting this approach in manufacturing companies dealing with demand planning issues.Originality/value: The findings in this work demonstrate the convenience of using the proposed hybrid model to improve demand forecasting accuracy and thus provide a reliable basis for its implementation in supply chain planning for the electrical/construction sector in Colombian manufacturing companies. 
基于人工神经网络的混合模型需求预测——以电气产品为例
目的:本工作旨在评估需求预测模型,以确定与单变量统计模型相比,使用外生因素和机器学习技术是否有助于提高绩效,从而使制造公司能够更好地管理需求。设计/方法/方法:我们实现了一个带有外生输入的多元自回归移动平均(ARMAX)统计模型和一个神经网络-ARMAX (NN-ARMAX)混合模型用于预测。随后,我们将两者与标准的单变量统计模型进行比较,以预测哥伦比亚制造公司对电气产品的需求。结果表明,NN-ARMAX模型优于其他两种模型。事实上,随着库存过剩和缺货产品的减少,需求管理得到了改善。研究局限/启示:本研究的发现和结论仅限于向建筑行业销售电气产品的哥伦比亚制造公司。此外,提供数据的公司的专家也根据自己的经验选择了外部因素,即我们可能忽略了潜在因素。实际意义:这项工作表明,使用神经网络和包括外生变量的模型可以提高需求预测的准确性,促进这种方法在制造公司处理需求计划问题。原创性/价值:本工作的发现证明了使用所提出的混合模型提高需求预测准确性的便利性,从而为其在哥伦比亚制造公司的电气/建筑部门的供应链规划中实施提供了可靠的基础。
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来源期刊
International Journal of Industrial Engineering and Management
International Journal of Industrial Engineering and Management Business, Management and Accounting-Business, Management and Accounting (miscellaneous)
CiteScore
5.00
自引率
17.20%
发文量
22
审稿时长
21 weeks
期刊介绍: International Journal of Industrial Engineering and Management (IJIEM) is an interdisciplinary international academic journal published quarterly. IJIEM serves researchers in the industrial engineering, manufacturing engineering and management fields. The major aims are: To collect and disseminate information on new and advanced developments in the field of industrial engineering and management; To encourage further progress in engineering and management methodology and applications; To cover the range of engineering and management development and usage in their use of managerial policies and strategies. Thus, IJIEM invites the submission of original, high quality, theoretical and application-oriented research; general surveys and critical reviews; educational or training articles including case studies, in the field of industrial engineering and management. The journal covers all aspects of industrial engineering and management, particularly: -Smart Manufacturing & Industry 4.0, -Production Systems, -Service Engineering, -Automation, Robotics and Mechatronics, -Information and Communication Systems, -ICT for Collaborative Manufacturing, -Quality, Maintenance and Logistics, -Safety and Reliability, -Organization and Human Resources, -Engineering Management, -Entrepreneurship and Innovation, -Project Management, -Marketing and Commerce, -Investment, Finance and Accounting, -Insurance Engineering and Management, -Media Engineering and Management, -Education and Practices in Industrial Engineering and Management.
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