Evaluation of forecasting methods for intermittent parts demand in the field of aviation: a predictive model

Evaluation of forecasting methods for intermittent parts demand in the field of aviation: a predictive model

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Article ID: iaor20042736
Country: United Kingdom
Volume: 30
Issue: 14
Start Page Number: 2097
End Page Number: 2114
Publication Date: Dec 2003
Journal: Computers and Operations Research
Authors: ,
Keywords: forecasting: applications, maintenance, repair & replacement
Abstract:

Owing to the sporadic nature of demand for aircraft maintenance repair parts, airline operators perceive difficulties in forecasting and are still looking for superior forecasting methods. This paper deals with techniques applicable to predicting spare parts demand for airline fleets. The experimental results of 13 forecasting methods, including those used by aviation companies, are examined and clarified through statistical analysis. The general linear model approach is used to explain the variation attributable to different experimental factors and their interactions. Actual historical data for hard-time and condition-monitoring components from an airlines operator are used, in order to compare different forecasting methods when facing intermittent demand. The results confirm the continued superiority of the weighted moving average, Holt and Croston method for intermittent demand, whereas most commonly used methods by airlines are found to be questionable, consistently producing poor forecasting performance. We have, however, devised a new approach to forecasting evaluation, a predictive error-forecasting model which compares and evaluates forecasting methods based on their factor levels when faced with intermittent demand. A simple example is presented to illustrate the performance of the mathematical model. It is suggested that these findings may be applicable to other industrial sectors, which have similar demand patterns to those of airlines.

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