Article ID Journal Published Year Pages File Type
1135544 Computers & Industrial Engineering 2008 11 Pages PDF
Abstract

Learning is a decrease in the time to perform an operation due to repetition and is an important consideration when forecasting process times or product costs. This paper presents a new method for calculating the learning rate for a family of parts using a matrix-based approach to organize historical data on production times. By calculating a single learning rate for the entire family, the data on individual parts is pooled, creating a larger sample size and reducing the variance of the estimate. Applying this method to forecasting costs of a family of jet engine parts shows that it provides much more accurate estimates than the previously available method of taking a weighted average of individual parts’ learning rates. The matrix-based method also allows for calculation of first-unit costs more reliably (since the estimates are less affected by outliers in a larger sample) and for calculation of confidence limits on the estimates, to provide users with information on the reliability of the estimates.

Related Topics
Physical Sciences and Engineering Engineering Industrial and Manufacturing Engineering
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