Investigation of the parameters influencing progress of concrete carbonation depth by using artificial neural networks

Author:

Akpinar P.ORCID,Uwanuakwa I. D.ORCID

Abstract

Carbonation is a deleterious concrete durability problem which may alter concrete microstructure and yield initiation of corrosion in reinforcing steel bars. Previous studies focused on the use of Artificial Neural Networks (ANN) for the prediction of concrete carbonation depth and to minimize the need for destructive and elaborated civil engineering laboratory tests. This study aims to provide improved accuracy of simulation and prediction of carbonation with an ANN architecture including eighteen input parameters employing alternative Scaled Conjugate Gradient (SCG) function. After ensuring a promising value of the coefficient of correlation as high as 0.98, the influence of proposed input parameters on the progress of carbonation depth was studied. The results of this parametric analysis were observed to successfully comply with the conventional civil engineering experience. Hence, the employed ANN model can be used as an efficient tool to study in detail and to provide insights into the carbonation problem in concrete.

Publisher

Editorial CSIC

Subject

Mechanics of Materials,General Materials Science,Building and Construction

Reference84 articles.

1. Afandi N (2008). Whistleblowing in the public administration environment (Unpublished master's dissertation). King Abdulaziz University, Jeddah.

2. Akoto M, Allida D (2017). Relationship of school climate and organizational commitment of secondary school teachers in West Kenya. Baraton Interdisciplinary Research Journal 7:1-9.

3. Aldridge JM, Fraser BJ (2016). Teachers' views of their school climate and its relationship with teacher self-efficacy and job satisfaction. Learning Environments Research 19(2):291-307.

4. Alqarni SA (2015). Determinants of organizational silence behavior among faculty at King Abdul Aziz University and its relationship to some organizational variables. Future of Arab Education 96(22):297-386. https://search.mandumah.com/Record/704696

5. Alwehabie A (2014). The effect of the organizational climate on the organizational silence in Qassim. Jordanian Journal for Business Administration 10(3):363-389. Available @: https://search.mandumah.com/Record/607195

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