Neural network metamodeling for cycle time-throughput profiles in manufacturing

Neural network metamodeling for cycle time-throughput profiles in manufacturing

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Article ID: iaor20101885
Volume: 205
Issue: 1
Start Page Number: 172
End Page Number: 185
Publication Date: Aug 2010
Journal: European Journal of Operational Research
Authors:
Keywords: neural networks
Abstract:

This paper proposed a neural network (NN) metamodeling method to generate the cycle time (CT)–throughput (TH) profiles for single/multi-product manufacturing environments. Such CT–TH profiles illustrate the trade-off relationship between CT and TH, the two critical performance measures, and hence provide a comprehensive performance evaluation of a manufacturing system. The proposed methods distinct from the existing NN metamodeling work in three major aspects: First, instead of treating an NN as a black box, the geometry of NN is examined and utilized; second, a progressive model-fitting strategy is developed to obtain the simplest-structured NN that is adequate to capture the CT–TH relationship; third, an experiment design method, particularly suitable to NN modeling, is developed to sequentially collect simulation data for the efficient estimation of the NN models.

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