Post-combustion artificial neural network modeling of nickel-producing multiple hearth furnace

Author:

Góngora Deynier Montero1,Van Caneghem Jo2,Haeseldonckx Dries2,Leyva Ever Góngora1,Mendoza Mercedes Ramírez3,Dutta Abhishek2

Affiliation:

1. Universidad de Moa, Holguín, Cuba

2. KU Leuven, Campus Groep T, Andreas Vesaliusstraat 13, 3000, Leuven, Belgium

3. Universidad de Oriente, Santiago de Cuba, Cuba

Abstract

AbstractIn a nickel-producing multiple hearth furnace, there is a problem associated to the automatic operation of the temperature control loops in two of the hearths, since the same flow of air is split into two branches. A neural model of the post-combustion sub-process is built and served to increase the process efficiency of the industrial furnace. Data was taken for a three-months operating time period to identify the main variables characterizing the process and a model of multilayer perceptron type is built. For the validation of this model, process data from a four-months operating time period in 2018 was used and prediction errors based on a measure of closeness in terms of a mean square error criterion measured through its weights for the temperature of two of the hearths (four and six) versus the air flow to these hearths. Based on a rigorous testing and analysis of the process, the model is capable of predicting the temperature of hearth four and six with errors of 0.6 and 0.3 °C, respectively. In addition, the emissions by high concentration of carbon monoxide in the exhaust gases are reduced, thus contributing to the health of the ecosystem.

Funder

Vlaamse Interuniversitaire Raad

Publisher

Walter de Gruyter GmbH

Subject

General Chemical Engineering

Reference106 articles.

1. Borroso de la Postcombustión en un Horno de Múltiples Hogares,2002a

2. A Catalyst Selection Method for Hydrogen Production through Water-Gas Shift Reaction Using Artificial Neural Networks;Journal of Environmental Management,2019

3. A Generalized Neural Net Kinetic Rate Equation;Chemical Engineering and Science,1993

4. Adaptive Neural Net (ANN) Models for Desulphurization of Hot Metal and Steel;Steel Research,1994

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