Analysis of Environmental Factors Affecting the Atmospheric Corrosion Rate of Low-Alloy Steel Using Random Forest-Based Models

As one of the factors (e.g., material properties, surface quality, etc.) influencing the corrosion processes, researchers have always been exploring the role of environmental factors to understand the mechanism of atmospheric corrosion. This study proposes a random forest algorithm-based modeling me...

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Main Authors: Luchun Yan, Yupeng Diao, Kewei Gao
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:Materials
Subjects:
Online Access:https://www.mdpi.com/1996-1944/13/15/3266
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spelling doaj-8aa9148bd0db4c7ab1ae083c8b4bbd042020-11-25T02:35:09ZengMDPI AGMaterials1996-19442020-07-01133266326610.3390/ma13153266Analysis of Environmental Factors Affecting the Atmospheric Corrosion Rate of Low-Alloy Steel Using Random Forest-Based ModelsLuchun Yan0Yupeng Diao1Kewei Gao2School of Materials Science and Engineering, University of Science and Technology Beijing, Beijing 100083, ChinaSchool of Materials Science and Engineering, University of Science and Technology Beijing, Beijing 100083, ChinaSchool of Materials Science and Engineering, University of Science and Technology Beijing, Beijing 100083, ChinaAs one of the factors (e.g., material properties, surface quality, etc.) influencing the corrosion processes, researchers have always been exploring the role of environmental factors to understand the mechanism of atmospheric corrosion. This study proposes a random forest algorithm-based modeling method that successfully maps both the steel’s chemical composition and environmental factors to the corrosion rate of low-alloy steel under the corresponding environmental conditions. Using the random forest models based on the corrosion data of three different atmospheric environments, the environmental factors were proved to have different importance sequence in determining the environmental corrosivity of open and sheltered exposure test conditions. For each exposure test site, the importance of environmental features to the corrosion rate is also ranked and analyzed. Additionally, the feasibility of the random forest model to predict the corrosion rate of steel samples in the new environment is also demonstrated. The volume and representativeness of the corrosion data in the training data are considered to be the critical factors in determining its prediction performance. The above results prove that machine learning provides a useful tool for the analysis of atmospheric corrosion mechanisms and the evaluation of corrosion resistance.https://www.mdpi.com/1996-1944/13/15/3266atmospheric corrosionlow-alloy steelatmospheric exposure testfeature importancerandom forestmachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Luchun Yan
Yupeng Diao
Kewei Gao
spellingShingle Luchun Yan
Yupeng Diao
Kewei Gao
Analysis of Environmental Factors Affecting the Atmospheric Corrosion Rate of Low-Alloy Steel Using Random Forest-Based Models
Materials
atmospheric corrosion
low-alloy steel
atmospheric exposure test
feature importance
random forest
machine learning
author_facet Luchun Yan
Yupeng Diao
Kewei Gao
author_sort Luchun Yan
title Analysis of Environmental Factors Affecting the Atmospheric Corrosion Rate of Low-Alloy Steel Using Random Forest-Based Models
title_short Analysis of Environmental Factors Affecting the Atmospheric Corrosion Rate of Low-Alloy Steel Using Random Forest-Based Models
title_full Analysis of Environmental Factors Affecting the Atmospheric Corrosion Rate of Low-Alloy Steel Using Random Forest-Based Models
title_fullStr Analysis of Environmental Factors Affecting the Atmospheric Corrosion Rate of Low-Alloy Steel Using Random Forest-Based Models
title_full_unstemmed Analysis of Environmental Factors Affecting the Atmospheric Corrosion Rate of Low-Alloy Steel Using Random Forest-Based Models
title_sort analysis of environmental factors affecting the atmospheric corrosion rate of low-alloy steel using random forest-based models
publisher MDPI AG
series Materials
issn 1996-1944
publishDate 2020-07-01
description As one of the factors (e.g., material properties, surface quality, etc.) influencing the corrosion processes, researchers have always been exploring the role of environmental factors to understand the mechanism of atmospheric corrosion. This study proposes a random forest algorithm-based modeling method that successfully maps both the steel’s chemical composition and environmental factors to the corrosion rate of low-alloy steel under the corresponding environmental conditions. Using the random forest models based on the corrosion data of three different atmospheric environments, the environmental factors were proved to have different importance sequence in determining the environmental corrosivity of open and sheltered exposure test conditions. For each exposure test site, the importance of environmental features to the corrosion rate is also ranked and analyzed. Additionally, the feasibility of the random forest model to predict the corrosion rate of steel samples in the new environment is also demonstrated. The volume and representativeness of the corrosion data in the training data are considered to be the critical factors in determining its prediction performance. The above results prove that machine learning provides a useful tool for the analysis of atmospheric corrosion mechanisms and the evaluation of corrosion resistance.
topic atmospheric corrosion
low-alloy steel
atmospheric exposure test
feature importance
random forest
machine learning
url https://www.mdpi.com/1996-1944/13/15/3266
work_keys_str_mv AT luchunyan analysisofenvironmentalfactorsaffectingtheatmosphericcorrosionrateoflowalloysteelusingrandomforestbasedmodels
AT yupengdiao analysisofenvironmentalfactorsaffectingtheatmosphericcorrosionrateoflowalloysteelusingrandomforestbasedmodels
AT keweigao analysisofenvironmentalfactorsaffectingtheatmosphericcorrosionrateoflowalloysteelusingrandomforestbasedmodels
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