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Modeling Of Pulping Of Sugar Maple Using Advanced Neural Network Learning

Authors :
W. D. Wan Rosli
Z. Zainuddin
R. Lanouette
S. Sathasivam
Publication Year :
2007
Publisher :
Zenodo, 2007.

Abstract

This paper reports work done to improve the modeling of complex processes when only small experimental data sets are available. Neural networks are used to capture the nonlinear underlying phenomena contained in the data set and to partly eliminate the burden of having to specify completely the structure of the model. Two different types of neural networks were used for the application of Pulping of Sugar Maple problem. A three layer feed forward neural networks, using the Preconditioned Conjugate Gradient (PCG) methods were used in this investigation. Preconditioning is a method to improve convergence by lowering the condition number and increasing the eigenvalues clustering. The idea is to solve the modified problem where M is a positive-definite preconditioner that is closely related to A. We mainly focused on Preconditioned Conjugate Gradient- based training methods which originated from optimization theory, namely Preconditioned Conjugate Gradient with Fletcher-Reeves Update (PCGF), Preconditioned Conjugate Gradient with Polak-Ribiere Update (PCGP) and Preconditioned Conjugate Gradient with Powell-Beale Restarts (PCGB). The behavior of the PCG methods in the simulations proved to be robust against phenomenon such as oscillations due to large step size.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....4eb17c57f3c4badd8c91aeef181b44b3
Full Text :
https://doi.org/10.5281/zenodo.1331322