Marine steel corrosion prediction and zonation using feature extraction and machine learning in the seas around China
Marine steel corrosion prediction and zonation using feature extraction and machine learning in the seas around China
To reduce the losses caused by the marine corrosion of steel, it is important to establish a prediction model to determine the corrosion rate of steel in depth-varying aggressive marine environments. The use of statistical feature extraction methods and machine learning modeling for marine steel corrosion prediction and zoning in the seas around China is investigated. In this study, 856 samples were collected. Mean and standard deviation were selected as environmental characteristics and corrosion loss time-varying relationships were log-transformed. Subsequently, four main supervised machine learning (ML) algorithms including Decision Tree (DT), Random Forest (RF), Gradient Boosting (GB), and XGBoost were explored for predicting corrosion loss in different depth-varying marine exposure zones. The GB model showed the best prediction accuracy and generalization ability with MSE, RMSE, MAE, and R2 values of 0.08, 0.43, 0.19, and 0.92, respectively. The spatial and temporal distribution of corrosion loss and zoning map in the seas around China were obtained. According to the corrosion zoning map of the splash zone, the South China Sea has a higher degree of corrosion, particularly in its northwestern region.
Yang, Jiazhi
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Zou, Dujian
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Zhang, Ming
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Que, Zichao
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Liu, Tiejun
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Zhou, Ao
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Li, Ye
86d13351-982d-46c3-9347-22794f647f86
6 November 2024
Yang, Jiazhi
8a65b37b-2983-4bf2-8e52-b863cfca4003
Zou, Dujian
f932d3d9-b218-4268-a86e-0bb63aec1e31
Zhang, Ming
fb6be749-9892-4426-81f6-8934f21d78ee
Que, Zichao
c1f34f6d-4f51-4fb1-b390-2e04857caadc
Liu, Tiejun
07e72a65-be75-4b13-b54d-9ed949c93470
Zhou, Ao
5b42c2a4-26b2-416e-ab3c-446f1ece7a20
Li, Ye
86d13351-982d-46c3-9347-22794f647f86
Yang, Jiazhi, Zou, Dujian, Zhang, Ming, Que, Zichao, Liu, Tiejun, Zhou, Ao and Li, Ye
(2024)
Marine steel corrosion prediction and zonation using feature extraction and machine learning in the seas around China.
Ocean Engineering, 314 (Pt. 1), [119649].
(doi:10.1016/j.oceaneng.2024.119649).
Abstract
To reduce the losses caused by the marine corrosion of steel, it is important to establish a prediction model to determine the corrosion rate of steel in depth-varying aggressive marine environments. The use of statistical feature extraction methods and machine learning modeling for marine steel corrosion prediction and zoning in the seas around China is investigated. In this study, 856 samples were collected. Mean and standard deviation were selected as environmental characteristics and corrosion loss time-varying relationships were log-transformed. Subsequently, four main supervised machine learning (ML) algorithms including Decision Tree (DT), Random Forest (RF), Gradient Boosting (GB), and XGBoost were explored for predicting corrosion loss in different depth-varying marine exposure zones. The GB model showed the best prediction accuracy and generalization ability with MSE, RMSE, MAE, and R2 values of 0.08, 0.43, 0.19, and 0.92, respectively. The spatial and temporal distribution of corrosion loss and zoning map in the seas around China were obtained. According to the corrosion zoning map of the splash zone, the South China Sea has a higher degree of corrosion, particularly in its northwestern region.
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Marine steel corrosion prediction and zonation using feature extraction and machine learning in the seas around China
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Accepted/In Press date: 26 October 2024
e-pub ahead of print date: 6 November 2024
Published date: 6 November 2024
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Local EPrints ID: 497944
URI: http://eprints.soton.ac.uk/id/eprint/497944
ISSN: 0029-8018
PURE UUID: 9f8d6bd4-6976-471a-8cd4-7f97700b62c9
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Date deposited: 05 Feb 2025 17:31
Last modified: 22 Aug 2025 02:47
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Author:
Jiazhi Yang
Author:
Dujian Zou
Author:
Ming Zhang
Author:
Zichao Que
Author:
Tiejun Liu
Author:
Ao Zhou
Author:
Ye Li
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