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Modeling to Study the Effect of Environmental Parameters on Corrosion of Mild Steel in Seawater Using Neural Network
Author(s) -
Subir Paul
Publication year - 2012
Publication title -
isrn metallurgy
Language(s) - English
Resource type - Journals
ISSN - 2090-8717
DOI - 10.5402/2012/487351
Subject(s) - corrosion , seawater , artificial neural network , artificial seawater , salinity , materials science , metallurgy , environmental science , computer science , geology , artificial intelligence , oceanography
Prediction of corrosion rate of steel structure in seawater is a challenging task for design and corrosion engineers for existing as well as new structures, due to wide variation of its composition across the global marine environment. The major parameters influencing the rate are salinity, sulphate, dissolved oxygen, pH, and temperature. While the individual effects of these parameters on corrosion are known, the conjoint effect of the parameters together is complex and unpredictable. Endeavors have been made to model the corrosion rate from laboratory experimental data, using Artificial Neural Network to predict corrosion rate at any combinations of the above five parameters and to better understand the effects of these parameters jointly on corrosion behavior. 3D mappings clearly reveal the complex interrelationship between the variables and importance of conjoint effect of the variables rather than single variable on the corrosion rate of steel in seawater.

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