A quantitative analysis model is proposed to describe the content evolution of corrosion products in concrete structures subjected to sulfate or chloride attack. The model is inspired by the idea of the long short-term memory (LSTM) algorithm in the machine learning field. To establish a relationship between engineering data and theoretical computations, training samples of the model were generated by solving the rate equations of sulfate corrosion reactions in concrete with wide-range initial conditions and validated by the existing experimental data. The Pearson correlation coefficient was used to determine the model features. The model performance was comprehensively evaluated and the results show that the proposed model has sufficient accuracy and feasibility. It could effectively predict the contents of corrosion products during sulfate attack using several input values rather than the initial contents of all chemical constituents. The proposed model builds a bridge between experimental methods and theoretical predictions, adequately inheriting the advantages of each.
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1 August 2025
Research Article|
November 11 2024
Long short-term memory model for quantitative analysis of corrosion products in concrete Available to Purchase
Tao Li;
School of Environment and Architecture,
University of Shanghai for Science and Technology
, Shanghai, China
Corresponding author Li Tao (litao@usst.edu.cn)
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Jin Xu;
Jin Xu
School of Environment and Architecture,
University of Shanghai for Science and Technology
, Shanghai, China
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Hai-Han Huang
Hai-Han Huang
School of Environment and Architecture,
University of Shanghai for Science and Technology
, Shanghai, China
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Corresponding author Li Tao (litao@usst.edu.cn)
Publisher: Emerald Publishing
Received:
May 03 2024
Accepted:
October 29 2024
Online ISSN: 1751-7605
Print ISSN: 0951-7197
Funding
Funding Group:
- Award Group:
- Funder(s): National Natural Science Foundation for General Projects of China
- Award Id(s): 51378377
- Funder(s):
- Funding Statement(s): Support from the National Natural Science Foundation for General Projects of China (grant number 51378377) is gratefully acknowledged.
© 2025 Emerald Publishing Limited
2025
Emerald Publishing Limited
Licensed re-use rights only
Advances in Cement Research (2025) 37 (8): 448–462.
Article history
Received:
May 03 2024
Accepted:
October 29 2024
Citation
Li T, Xu J, Huang H (2025), "Long short-term memory model for quantitative analysis of corrosion products in concrete". Advances in Cement Research, Vol. 37 No. 8 pp. 448–462, doi: https://doi.org/10.1680/jadcr.24.00079
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