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10279 Neural Network for Dispersion Strengthened Microalloyed Steel Sour Corrosion from Electrochemical Impedance Spectroscopy Laboratory Measurements

Product Number: 51300-10279-SG
ISBN: 10279 2010 CP
Author: Dario Garrido, Sergio Serna, Jose Hernandez, Yecenia Rojas, Monica Garcia, Bernardo Campillo
Publication Date: 2010
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$20.00
$20.00
Microalloyed pipeline steels mechanical resistance can be improved by dispersion strengthening. The enhancement of steel dispersion strengthening by tempering at a suitable temperature has been studied at various holding times at 3, 6, 8 and 10 hours. Depending on the elapsed time, microalloying elements that were still located within steel iron lattice can be re-diffused, thus developing different nanoparticle sizes, densities and distribution. The steel yield strength and sulphide stress cracking resistance were significantly improved under sour environment. A systematic electrochemical impedance spectroscopy (EIS) corrosion study was carried out. The objective of the present work was to predict corrosion results from EIS collected data from the different steel tempering times and exposure temperatures to sour environment (room temperature and 50 °C) by means of an artificial neural network (ANN). For the ANN, an approach based on Levenberg–Marquardt learning algorithm, hyperbolic tangent sigmoid transfer function, and a linear transfer function was used. The model takes into account of the variations of the real impedance, time and steel exposure temperature. The developed model can be used for prediction at short simulation times illustrating the utility of the ANN. On the validation data set, the simulations and the theoretical data tests were in good agreement with R2 > 0.98 for all experimental databases. These results suggest that ANN may play a key role in making lifetime predictions for components based on laboratory measurements.

Keywords: artificial neural network, sour corrosion, microalloyed steel, electrochemical impedance spectroscopy
Microalloyed pipeline steels mechanical resistance can be improved by dispersion strengthening. The enhancement of steel dispersion strengthening by tempering at a suitable temperature has been studied at various holding times at 3, 6, 8 and 10 hours. Depending on the elapsed time, microalloying elements that were still located within steel iron lattice can be re-diffused, thus developing different nanoparticle sizes, densities and distribution. The steel yield strength and sulphide stress cracking resistance were significantly improved under sour environment. A systematic electrochemical impedance spectroscopy (EIS) corrosion study was carried out. The objective of the present work was to predict corrosion results from EIS collected data from the different steel tempering times and exposure temperatures to sour environment (room temperature and 50 °C) by means of an artificial neural network (ANN). For the ANN, an approach based on Levenberg–Marquardt learning algorithm, hyperbolic tangent sigmoid transfer function, and a linear transfer function was used. The model takes into account of the variations of the real impedance, time and steel exposure temperature. The developed model can be used for prediction at short simulation times illustrating the utility of the ANN. On the validation data set, the simulations and the theoretical data tests were in good agreement with R2 > 0.98 for all experimental databases. These results suggest that ANN may play a key role in making lifetime predictions for components based on laboratory measurements.

Keywords: artificial neural network, sour corrosion, microalloyed steel, electrochemical impedance spectroscopy
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