Treffer: Atmospheric corrosion rate prediction of low-alloy steel using machine learning models

Title:
Atmospheric corrosion rate prediction of low-alloy steel using machine learning models
Source:
IOP Conference Series: Materials Science and Engineering ; volume 1248, issue 1, page 012050 ; ISSN 1757-8981 1757-899X
Publisher Information:
IOP Publishing
Publication Year:
2022
Document Type:
Fachzeitschrift article in journal/newspaper
Language:
unknown
DOI:
10.1088/1757-899x/1248/1/012050
DOI:
10.1088/1757-899X/1248/1/012050
DOI:
10.1088/1757-899X/1248/1/012050/pdf
Accession Number:
edsbas.62AEFD8E
Database:
BASE

Weitere Informationen

Corrosion mitigation is one of the indispensable needs in many industries and is currently being pursued by various methods like surface modification, corrosion inhibitor addition, and cathodic protection systems. Corrosion rate prediction can help in designing alloys with an optimized composition of materials such that it has a lower corrosion rate in the environment where they are exposed. Corrosion rate prediction can also help the manufacturers to plan the replacement of the sample used in advance. Machine learning, which is the science of making machines learn without being explicitly programmed and without using pre-determined equations, can help overcome challenges in predicting corrosion of various materials under a variety of environmental conditions. In this paper, three machine learning algorithms namely Support Vector Regression, Multiple Linear Regression, and Random Forest Regression are used to develop a Hybrid model to predict the corrosion rate of materials. Feature reduction is performed after feature importance calculation using Random Forest Regression model. The accuracy of the developed models were calculated using r 2 scores as an evaluation metric for different train-test split ratios. The input data for various conditions such as open, sheltered, coastal. Etc. are fed to the model and the performance was evaluated. The results show that the proposed Hybrid model outperforms the other baseline approaches with an accuracy of 91.46%, for predicting corrosion rate of materials.