Predictive analysis of the supply chain management using Machine learning approaches: Review and Taxonomy

X. Pham, Angelika Maag, Sunthatalingam Senthilananthan, Moshiur Bhuiyan
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引用次数: 2

Abstract

Currently, there are many literature reviews on the application of predictive analytics in Supply Chain Management (SCM). However, most of them focus only on some specific functions in supply chain management, including Procurement, Demand Management, Logistics and Transportation, or purely technical aspects. The purpose of this paper is twofold: first, it aims to provide an overview of the outstanding supply chain management functions (SCMF) that apply predictive analytics; and second, to highlight practical approaches, algorithms, or models in SCM via a comparative review of machine learning approach for aspect-based predictive analysis. For these purposes, details of relevant literature were gathered and reviewed. Accordingly, this article will present the data, algorithms, and models applied in predictive analytics along with its performance, SCM result taxonomy, which includes all the necessary components in the effective implementing of SCMF. Via the result of the recent related publications and papers (2018- 2020), Demand management and Procurement are the two main areas of SCM, in which predictive analytics is often applied. Particularly, accurate demand forecasting and sensing (Demand management) and sourcing risk management and supplier selection (Procurement) are among the foremost applications of BDA-enabled predictive models. This taxonomy not only helps scientists to have a steppingstone to provide more valuable articles in the future but also allows manufacturers to gain an in-depth understanding of these elaborate scenarios and better manage the supply chain management functions (SCMF) via the application of predictive analytics.
使用机器学习方法的供应链管理预测分析:回顾和分类法
目前,关于预测分析在供应链管理中的应用的文献综述很多。然而,他们大多只关注供应链管理中的一些具体功能,包括采购、需求管理、物流和运输,或者纯粹的技术方面。本文的目的是双重的:首先,它旨在提供应用预测分析的杰出供应链管理功能(SCMF)的概述;其次,通过对基于方面的预测分析的机器学习方法的比较回顾,突出SCM中的实用方法、算法或模型。为此,收集和回顾了相关文献的细节。因此,本文将介绍在预测分析中应用的数据、算法和模型,以及它的性能、SCM结果分类法,其中包括有效实现SCMF中所有必要的组件。通过最近相关出版物和论文(2018- 2020)的结果,需求管理和采购是SCM的两个主要领域,其中预测分析经常被应用。特别是,准确的需求预测和感知(需求管理)以及采购风险管理和供应商选择(采购)是bda支持的预测模型的最重要应用。这种分类法不仅可以帮助科学家在未来提供更有价值的文章,还可以让制造商深入了解这些复杂的场景,并通过预测分析的应用更好地管理供应链管理功能(SCMF)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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