一个用于第三方物流供应链预测的信息共享和成本意识的定制损失机器学习框架

IF 6.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Matteo Gabellini , Francesca Calabrese , Francesco Gabriele Galizia , Michele Ronchi , Alberto Regattieri
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引用次数: 0

摘要

供应链预测方法传统上是从制造业公司的角度发展起来的,制造业公司历来在供应链动态中占据主导地位。然而,第三方物流供应商(3pl)的重要性日益增加,需要根据其独特的运营需求量身定制预测方法。本文提出了一种新颖的预测框架,专门为第三方物流公司准确预测运输客户产品所需的卡车空间。与传统方法不同,该方法利用信息共享技术获得的数据来训练机器学习模型,直接预测卡车空间需求。此外,首次引入了定制的损失函数,明确地考虑了与高估和低估卡车利用率相关的不对称成本。该框架通过涉及在食品部门运营的第三方物流的实际案例研究进行了验证。结果表明,与传统预测技术相比,该方法有了显著的改进,强调了集成机器学习、信息共享和定制损失函数以提高预测准确性和成本效益的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An information-sharing and cost-aware custom loss machine learning framework for 3PL supply chain forecasting

An information-sharing and cost-aware custom loss machine learning framework for 3PL supply chain forecasting
Supply chain forecasting methods have traditionally been developed from the perspective of manufacturing companies, which historically held dominant roles within supply chain dynamics. However, the growing importance of third-party logistics providers (3PLs) calls for forecasting approaches tailored to their unique operational needs. This paper presents a novel forecasting framework specifically designed for 3PLs to accurately predict the truck space required for transporting their customers’ products. Unlike conventional methods, the proposed approach directly forecasts truck space demand by utilizing data obtained through information-sharing technologies to train machine learning models. Furthermore, a customized loss function is introduced for the first time, explicitly accounting for the asymmetric costs associated with overestimating and underestimating truck utilization. The framework was validated through a real-world case study involving a 3PL operating in the food sector. The results demonstrated significant improvements over traditional forecasting techniques, underscoring the benefits of integrating machine learning, information sharing, and a tailored loss function to enhance both predictive accuracy and cost-efficiency.
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来源期刊
Computers & Industrial Engineering
Computers & Industrial Engineering 工程技术-工程:工业
CiteScore
12.70
自引率
12.70%
发文量
794
审稿时长
10.6 months
期刊介绍: Computers & Industrial Engineering (CAIE) is dedicated to researchers, educators, and practitioners in industrial engineering and related fields. Pioneering the integration of computers in research, education, and practice, industrial engineering has evolved to make computers and electronic communication integral to its domain. CAIE publishes original contributions focusing on the development of novel computerized methodologies to address industrial engineering problems. It also highlights the applications of these methodologies to issues within the broader industrial engineering and associated communities. The journal actively encourages submissions that push the boundaries of fundamental theories and concepts in industrial engineering techniques.
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