Title of article :
Nyquist Plots Prediction Using Neural Networks in Corrosion Inhibition of Steel by Schiff Base
Author/Authors :
Akbarzade, Kazem Abadan Faculty of Petroleum Engineering - Petroleum University of Technology - Abadan, I.R. IRAN , Danaee, Iman Abadan Faculty of Petroleum Engineering - Petroleum University of Technology - Abadan, I.R. IRAN
Abstract :
The corrosion inhibition effect of N,N′-bis(n-Hydroxybenzaldehyde)-1,3-
Propandiimine on mild steel has been investigated in 1 M HCl using electrochemical impedance
spectroscopy. A predictive model was presented for Nyquist plots using an artificial neural network.
The proposed model predicted the imaginary impedance based on the real part of the impedance
as a function of time. The model took into account the variations of the real impedance and immersion
time of steel in a corrosive environment, considering constant corrosion inhibitor concentrations.
The best-fit training data set was obtained with eleven neurons in the hidden layer for Schiff base
inhibitor, which made it possible to predict the efficiency. On the validation data set, simulations
and experimental data test were in good agreement. The developed model can be used
for the prediction of the real and imaginary parts of the impedance as a function of time.
Keywords :
Inhibitor , Corrosion , Neural network , Impedance
Journal title :
Astroparticle Physics