Modelling input data interactions for the optimization of artificial neural networks used in the prediction of pitting corrosion

Author:

Boucherit Mohamed Nadir,Amzert Sid Ahmed,Arbaoui Fahd,Boukhari Yakoub,Brahimi Abdelkrim,Younsi Aziz

Abstract

Purpose This paper aims to predict the localized corrosion resistance by the application of artificial neural networks. It emphasizes the importance to take into account the relationships between the physical parameters before presenting them to the network. Design/methodology/approach The work was conducted in two phases. At the beginning, the authors executed an experimental program to measure pitting corrosion resistance of carbon steel in an aqueous environment. More than 900 electrochemical experiments were conducted in chemical solutions containing different concentrations of pitting agents, corrosion inhibitors and oxidant reagents. The obtained results were collected in a table where for a combination of the experimental parameters corresponds a pitting potential Epit obtained from the corresponding electrochemical experiment. In the second step, the authors used the experimental data to train different artificial neuron networks for predicting pitting potentials. Findings In this step, the authors considered the relationships that the chemical parameters are likely to have between them. Two types of relationships were taken into account: chemical equilibria which are controlled by the pH and the synergistic relationships that some corrosion inhibitors may have when they are in the presence of a chemical oxidant. Originality/value This comparative study shows that adjusting the input data by considering the physical relationships between them allows a better prediction of the pitting potential. The quality of the prediction, quantified by a regression factor, is qualitatively confirmed by a statistical distribution of the gap between experimental and calculated pitting potentials.

Publisher

Emerald

Subject

General Materials Science,General Chemical Engineering

Reference23 articles.

1. Tensorflow: large-scale machine learning on heterogeneous distributed systems,2016

2. Self-healing mechanism of an organosiloxane polymer film containing sodium silicate and cerium(III) nitrate for corrosion of scratched zinc surface in 0.5 M NaCl;Corrosion Science,2001

3. Lanthanide compounds as environmentally-friendly corrosion inhibitors of aluminium alloys: a review;Corrosion Science,1998

4. A study of carbon steels in basic pitting environments;Anti-Corrosion Methods and Materials,2005

5. Pitting corrosion in presence of inhibitors and oxidants;Anti-Corrosion Methods and Materials,2008

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