Neural Network Prediction in a System for Optimizing Simulations
M. Laguna and R. Martí
IIE Transactions, vol. 34, no. 3, pp. 273-282 (2002)

Abstract
Neural networks have been widely used for both prediction and
classification. Backpropagation is commonly used for training neural
networks, although the limitations associated with this technique are well
documented. Global search techniques such as simulated annealing,
genetic algorithms and tabu search have also been used for this purpose.
The developers of these training methods, however, have focused on accuracy
rather than training speed in order to assess the merit of new proposals.
While speed is not important in settings where training can be done off-line,
the situation changes when the neural network must be trained and used
on-line. This is the situation when a neural network is used in the
context of optimizing a simulation. In this paper, we describe a
training procedure capable of achieving a sufficient accuracy level within
a limited training time. The procedure is first compared with results
from the literature. We then use data from the simulation of a jobshop
to compare the performance of the proposed method with several training
variants from a commercial package.

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