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Forecasting of demand using ARIMA model:

机译:使用ARIMA模型预测需求:

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摘要

The work presented in this article constitutes a contribution to modeling and forecasting the demand in a food company, by using time series approach. Our work demonstrates how the historical demand data could be utilized to forecast future demand and how these forecasts affect the supply chain. The historical demand information was used to develop several autoregressive integrated moving average (ARIMA) models by using Box–Jenkins time series procedure and the adequate model was selected according to four performance criteria: Akaike criterion, Schwarz Bayesian criterion, maximum likelihood, and standard error. The selected model corresponded to the ARIMA (1, 0, 1) and it was validated by another historical demand information under the same conditions. The results obtained prove that the model could be utilized to model and forecast the future demand in this food manufacturing. These results will provide to managers of this manufacturing reliable guidelines in making decisions.
机译:本文介绍的工作通过使用时间序列方法,为对食品公司的需求进行建模和预测做出了贡献。我们的工作证明了历史需求数据可用于预测未来需求以及这些预测如何影响供应链。历史需求信息通过Box-Jenkins时间序列程序用于开发几个自回归综合移动平均值(ARIMA)模型,并根据四个性能标准选择了适当的模型:Akaike准则,Schwarz Bayesian准则,最大似然和标准误差。所选模型对应于ARIMA(1、0、1),并在相同条件下通过另一个历史需求信息进行了验证。所得结果证明该模型可用于对该食品生产的未来需求进行建模和预测。这些结果将为该制造商的管理者提供可靠的决策依据。

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