A platform for research: civil engineering, architecture and urbanism
Influencing factors analysis for drinking water steel pipe pitting corrosion using artificial neural network
Steel is a metal, and thus, it undergoes corrosion over time. The comprehensive analysis of the factors influencing corrosion can aid in developing strategies, such as new ways to avoid corrosive environments. This study explored the factors influencing pitting corrosion in steel water pipes in South Korea between 1988–2020, using artificial neural networks. Partial dependence plots and variable importance are used to identify the degree of influence of the 12 corrosion-influencing factors. Pipe age had the highest importance and strongest influence on corrosion among the corrosion-influencing factors. Soil resistivity strongly influenced external corrosion, especially at values less than 5,000 Ω-cm, and the influence of sulfide concentration on external corrosion was also relatively strong. Water alkalinity exhibited the strongest influence on internal corrosion. This study will serve as reference data for developing corrosion depth prediction models and will contribute to understanding corrosive environments when laying new pipelines and improving existing ones.
Influencing factors analysis for drinking water steel pipe pitting corrosion using artificial neural network
Steel is a metal, and thus, it undergoes corrosion over time. The comprehensive analysis of the factors influencing corrosion can aid in developing strategies, such as new ways to avoid corrosive environments. This study explored the factors influencing pitting corrosion in steel water pipes in South Korea between 1988–2020, using artificial neural networks. Partial dependence plots and variable importance are used to identify the degree of influence of the 12 corrosion-influencing factors. Pipe age had the highest importance and strongest influence on corrosion among the corrosion-influencing factors. Soil resistivity strongly influenced external corrosion, especially at values less than 5,000 Ω-cm, and the influence of sulfide concentration on external corrosion was also relatively strong. Water alkalinity exhibited the strongest influence on internal corrosion. This study will serve as reference data for developing corrosion depth prediction models and will contribute to understanding corrosive environments when laying new pipelines and improving existing ones.
Influencing factors analysis for drinking water steel pipe pitting corrosion using artificial neural network
Kim, Kibum (author) / Kang, Heechang (author) / Kim, Taehyeon (author) / Iseley, David Thomas (author) / Choi, Jaeho (author) / Koo, Jayong (author)
Urban Water Journal ; 20 ; 550-563
2023-05-28
14 pages
Article (Journal)
Electronic Resource
Unknown
Environmental Factors Influencing Pitting Critical Potential of Carbon Steel
British Library Online Contents | 2002
|Influencing Factors of Crude Oil Corrosion Based on Artificial Neural Network
British Library Online Contents | 2011
|British Library Online Contents | 2011
|Seismic Fragility Analysis of Steel Pipe Pile Wharves with Random Pitting Corrosion
DOAJ | 2023
|Corrosion Analysis of a Steel Drinking Water Pipe in an Indoor Environment
British Library Online Contents | 2012
|