面向供应链需求管理的销售预测——一种新的模糊时间序列方法

S. Burney, S. Ali
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引用次数: 3

摘要

近十年来,供应链管理已成为研究人员研究的一个重要领域。它越来越重要的原因是它能够使企业具有战略竞争优势。供应链有各种各样的功能,需求管理是其中之一。它涉及组织通过维持所需的库存来满足顾客需求的能力。为了实现这一目标,组织需要通过使用销售模式预测销售来预测需求,以便有效地满足客户需求。模糊时间序列已被广泛用于预测问题。本文的目的是提出并实现一种新的模糊时间序列模型来预测供应链内的有效需求管理。该方法是由我们开发的,以前用于预测大学生入学率,与现有方法相比具有更好的准确性。本文将首先讨论什么是销售预测和需求管理,并解释模糊时间序列的基础知识。稍后将讨论所提出的框架,并将其应用于超市牛奶盒销售的月度时间序列样本,以进行销售预测。本文将重点介绍后续的研究领域,以总结本研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sales Forecasting for Supply Chain Demand Management - A Novel Fuzzy Time Series Approach
Supply chain management has become an important area of research among researchers in the past decade. The reason for its growing importance is its ability to enable businesses to have strategic competitive advantage. There are various supply chain functions and demand management is one of them. It deals with the organization's ability to meet the customer needs by maintaining the required inventory. In order to achieve this goal, organizations needs to predict the demand by forecasting sales using sales patterns in order to efficiently meet customer demands. Fuzzy time series has been extensively used for forecasting problems. The aim of this paper is to propose and implement a new fuzzy time series model to predict sales for efficient demand management within supply chain. This method was developed by us and previously used to predict university students' enrolment which had a better accuracy compared to existing methods. This paper will first discuss what sales forecasting and demand management is along with explaining the basics of fuzzy time series. Later the proposed framework will be discussed and applied to a sample monthly time series for milk cartons sales in a super market for sales forecasting. Later future research areas will be highlighted to conclude this research study.
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