2022
DOI: 10.1108/acmm-07-2021-2516
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Application of machine learning in predicting pitting corrosion – electrochemical data around the open circuit potential

Abstract: Purpose The purpose of this study is to confirm the idea that observing the electrochemical data of a steel polarized around its open circuit potential can provide insight into its performance against pitting corrosion. To confirm this idea a two-step work was carried out. The authors collected electrochemical data through experiments and exploited them through machine learning by building neural networks capable of predicting the behaviour of the steel against the pitting corrosion. Design/methodology/appro… Show more

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Cited by 2 publications
(2 citation statements)
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“…Particle swarm optimization (PSO) is a type of evolutionary algorithm that has been widely applied in the field of corrosion along with other artificial intelligence algorithms (Boucherit et al , 2022; Lin et al , 2023).…”
Section: Methodsmentioning
confidence: 99%
“…Particle swarm optimization (PSO) is a type of evolutionary algorithm that has been widely applied in the field of corrosion along with other artificial intelligence algorithms (Boucherit et al , 2022; Lin et al , 2023).…”
Section: Methodsmentioning
confidence: 99%
“…In terms of corrosion science research, the application of AI mainly focuses on corrosion protection materials and methods (Belayadi et al , 2019; Coşkun and Karahan, 2018; Feiler et al , 2020; Jafari et al , 2011; Jiménez-Come et al , 2012; Mousavifard et al , 2015; Wen et al , 2009; Zadeh Shirazi and Mohammadi, 2017), corrosion image recognition (Ahuja and Shukla, 2018; Hoang and Tran, 2019; Petricca et al , 2016; Tian et al , 2019; Yao et al , 2019) and corrosion life prediction (Al-Shehri, 2019; Alani and Faramarzi, 2014; Chae et al , 2020; Guzman Urbina and Aoyama, 2018; Zhi et al , 2020). Compared with traditional methods, AI shows unique advantages (Boucherit et al , 2022; Boucherit et al , 2019; Boucherit and Arbaoui, 2021). Its efficient and in-depth data processing method can rapidly advance the research process (Butler et al , 2018; Kumari et al , 2017; Wang et al , 2019; Zhao et al , 2021).…”
Section: Introductionmentioning
confidence: 99%