Forecasting of demand using ARIMA model
2018; SAGE Publishing; Volume: 10; Linguagem: Inglês
10.1177/1847979018808673
ISSN1847-9790
AutoresJamal Fattah, Latifa Ezzine, Zineb Aman, Haj El Moussami, Abdeslam Lachhab,
Tópico(s)Energy Load and Power Forecasting
ResumoThe 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.
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