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Performance analysis of demand planning approaches for aggregating, forecasting and disaggregating interrelated demands

机译:需求计划方法的性能分析,用于汇总,预测和分解相互关联的需求

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摘要

A synchronized and responsive flow of materials, information, funds, processes and services is the goal of supply chain planning. Demand planning, which is the very first step of supply chain planning, determines the effectiveness of manufacturing and logistic operations in the chain. Propagation and magnification of the uncertainty of demand signals through the supply chain, referred to as the bullwhip effect, is the major cause of ineffective operation plans. Therefore, a flexible and robust supply chain forecasting system is necessary for industrial planners to quickly respond to the volatile demand. Appropriate demand aggregation and statistical forecasting approaches are known to be effective in managing the demand variability. This paper uses the bivariate VAR(1) time series model as a study vehicle to investigate the effects of aggregating, forecasting and disaggregating two interrelated demands. Through theoretical development and systematic analysis, guidelines are provided to select proper demand planning approaches. A very important finding of this research is that disaggregation of a forecasted aggregated demand should be employed when the aggregated demand is very predictable through its positive autocorrelation. Moreover, the large positive correlation between demands can enhance the predictability and thus result in more accurate forecasts when statistical forecasting methods are used.
机译:物料,信息,资金,流程和服务的同步响应流是供应链计划的目标。需求计划是供应链计划的第一步,它决定了供应链中制造和物流运作的有效性。通过供应链传播和放大需求信号的不确定性(称为牛鞭效应)是导致无效运营计划的主要原因。因此,灵活而强大的供应链预测系统对于工业计划人员来说是必需的,以快速响应不断变化的需求。已知适当的需求汇总和统计预测方法可以有效地管理需求变化。本文使用双变量VAR(1)时间序列模型作为研究工具来研究汇总,预测和分解两个相互关联的需求的影响。通过理论发展和系统分析,提供了指南以选择适当的需求计划方法。这项研究的一个非常重要的发现是,当通过正自相关非常可预测总需求时,应采用预测总需求的分解。此外,需求之间的大正相关性可以增强可预测性,从而在使用统计预测方法时可以得到更准确的预测。

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