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Corrosion resistance optimization of Sn-additional low-alloy high strength steel by data-driven identification and field exposure verification

Yang Liu, Xiaojia Yang, Bingqin Wang, Zifan Wang, Xuequn Cheng, Xiaogang Li

2023Journal of Materials Research and Technology21 citationsDOIOpen Access PDF

Abstract

Corrosion resistance is a critical consideration in the selection of materials for various applications. In this study, we employed a data-driven approach using machine learning techniques and a large dataset of corrosion data to design and test four different low-alloy steels with varying amounts of tin (Sn) microalloying (0.1 wt.%, 0.2 wt.%, 0.3 wt.% and Sn-free) for improved corrosion resistance in Beijing outdoor atmosphere. Using experimental methods such as corrosion morphology and rust layer analysis, X-ray diffraction (XRD), X-ray photoelectron spectroscopy (XPS) and potentiodynamic polarization measurements, we verified that the 0.2 wt.% Sn microalloying steel exhibited the best corrosion resistance. Our findings demonstrate the potential of data-driven approaches and machine learning techniques, such as the use of corrosion big data, in the identification and optimization of optimal alloy compositions of corrosion-resistant materials for outdoor environments.

Topics & Concepts

CorrosionMaterials scienceAlloyMetallurgyX-ray photoelectron spectroscopyPolarization (electrochemistry)Alloy steelTinChemical engineeringPhysical chemistryChemistryEngineeringHydrogen embrittlement and corrosion behaviors in metalsCorrosion Behavior and InhibitionNon-Destructive Testing Techniques
Corrosion resistance optimization of Sn-additional low-alloy high strength steel by data-driven identification and field exposure verification | Litcius