Title of article :
Prediction of Corrosion Rate for Carbon Steel in Soil Environment by Artificial Neural Network and Genetic Algorithm
Author/Authors :
akhtari-goshayeshi, amir islamic azad university, najafabad branch - advanced materials research center - department of materials engineering, Najafabad, Iran , ghobadi, m. petroleum university of technology - abadan facility of petroleum engineering - department of technical inspection, Abadan, Iran , saebnoori, ehsan islamic azad university, najafabad branch - advanced materials research center - department of materials engineering, Najafabad, Iran , zarezadeh, alireza petroleum university of technology - abadan facility of petroleum engineering - department of safety engineering, Abadan, Iran , rostami, mohammad petroleum university of technology - abadan facility of petroleum engineering - department of chemical engineering, Abadan, Iran , nematollahi, mohammad isfahan university of technology - department of materials engineering, Isfahan, Iran
From page :
30
To page :
43
Abstract :
In this study, the corrosion rates for St37 carbon steel in some soil types with different conditions were measured. The effects of the parameters of moisture amount, soil particle size, and salt concentration were determined by the mass loss method. An Artificial Neural Network (ANN) model with three inputs and one output was established to simulate the experimental data. It was observed that the Levenberg–Marquardt algorithm with hyperbolic tangent sigmoid transfer function provided the best results in training with the lowest MSE and MAE compared to the other methods in the model. The R values for training, validation, and test were presented, and the value of 0.98684 was achieved for the complete data set, which demonstrates a high level of ANN performance. The Genetic Algorithm (GA) was also used to find optimum inputs for the target of minimum corrosion rate value. The results showed a good agreement between the model prediction and experimental values.
Keywords :
Artificial neural network (ANN) , Genetic algorithm (GA) , Optimum structure , Current efficiency , Corrosion Rate , Weight Loss , Soil Environment
Journal title :
Journal of Advanced Materials and Processing
Journal title :
Journal of Advanced Materials and Processing
Record number :
2645836
Link To Document :
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