Optimization of back propagation algorithm and GAS-assisted ANN models for hot metal desulphurization

Deo, Brahma ; Datta, Amlan ; Kukreja, Basant ; Rastogi, Ravi ; Deb, Kalyanmoy (1994) Optimization of back propagation algorithm and GAS-assisted ANN models for hot metal desulphurization Steel research, 65 (12). pp. 528-533. ISSN 0177-4832

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Abstract

Adaptive neural net (ANN) model of hot metal desulphurization is first optimized by various search methods including the golden section search and Davies-Swann-Campey methods. Logarithmic preprocessing of input data leads to a further improvement in generalizaton ability of the net. Genetic adaptive search (GAS) method is used to optimize the mathematical model for desulphurization and when the input data are preprocessed with this optimized model and fed into an artificial neural net, the generalization ability of the net becomes even better. Best results are obtained when using GAS to optimize the interconnection weights during the training phase, while training data are proprocessed through a mathematical model already optimized by GAS.

Item Type:Article
Source:Copyright of this article belongs to Düsseldorf Verlag Stahleisen.
Keywords:Desulfurization; Molten Steel; Mathematical Model; Optimization; Backpropagation; Adaptive Algorithm; Genetic Algorithm; Neural Network
ID Code:75157
Deposited On:22 Dec 2011 03:07
Last Modified:22 Dec 2011 03:09

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