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Original Articles

Genetic Programming Evolved through Bi-Objective Genetic Algorithms Applied to a Blast Furnace

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Pages 776-782 | Received 29 Apr 2012, Accepted 26 Nov 2012, Published online: 08 Jul 2013
 

Abstract

In this study, a new Bi-objective Genetic Programming (BioGP) technique was developed that initially attempts to minimize training error through a single objective procedure and subsequently switches to bi-objective evolution to work out a Pareto-tradeoff between model complexity and accuracy. For a set of highly noisy industrial data from an operational ironmaking blast furnace (BF) this method was pitted against an Evolutionary Neural Network (EvoNN) developed earlier by the authors. The BioGP procedure was found to produce very competitive results for this complex modeling problem and because of its generic nature, opens a new avenue for data-driven modeling in many other domains.

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