Prediction of the Properties of Vibro-Centrifuged Variatropic Concrete in Aggressive Environments Using Machine Learning Methods

Author:

Beskopylny Alexey N.1ORCID,Stel’makh Sergey A.2ORCID,Shcherban’ Evgenii M.3ORCID,Razveeva Irina2,Kozhakin Alexey24,Pembek Anton5,Kondratieva Tatiana N.6ORCID,Elshaeva Diana2,Chernil’nik Andrei2ORCID,Beskopylny Nikita7

Affiliation:

1. Department of Transport Systems, Faculty of Roads and Transport Systems, Don State Technical University, 344003 Rostov-on-Don, Russia

2. Department of Unique Buildings and Constructions Engineering, Don State Technical University, 344003 Rostov-on-Don, Russia

3. Department of Engineering Geology, Bases, and Foundations, Don State Technical University, 344003 Rostov-on-Don, Russia

4. OOO VDK, SKOLKOVO, Bolshoi Boulevard, 42, 121205 Moscow, Russia

5. Chair of Quantum Statistics and Field Theory, Faculty of Physics, Lomonosov Moscow State University, Leninskiye Gory, 1, 119991 Moscow, Russia

6. Departments of Mathematics and Informatics, Faculty of IT-Systems and Technology, Don State Technical University, 344003 Rostov-on-Don, Russia

7. Department of Hardware and Software Engineering, Faculty of IT-Systems and Technology, Don State Technical University, 344003 Rostov-on-Don, Russia

Abstract

In recent years, one of the most promising areas in modern concrete science and the technology of reinforced concrete structures is the technology of vibro-centrifugation of concrete, which makes it possible to obtain reinforced concrete elements with a variatropic structure. However, this area is poorly studied and there is a serious deficiency in both scientific and practical terms, expressed in the absence of a systematic knowledge of the life cycle management processes of vibro-centrifuged variatropic concrete. Artificial intelligence methods are seen as one of the most promising methods for improving the process of managing the life cycle of such concrete in reinforced concrete structures. The purpose of the study is to develop and compare machine learning algorithms based on ridge regression, decision tree and extreme gradient boosting (XGBoost) for predicting the compressive strength of vibro-centrifuged variatropic concrete using a database of experimental values obtained under laboratory conditions. As a result of laboratory tests, a dataset of 664 samples was generated, describing the influence of aggressive environmental factors (freezing–thawing, chloride content, sulfate content and number of wetting–drying cycles) on the final strength characteristics of concrete. The use of analytical techniques to extract additional knowledge from data contributed to improving the resulting predictive properties of machine learning models. As a result, the average absolute percentage error (MAPE) for the best XGBoost algorithm was 2.72%, mean absolute error (MAE) = 1.134627, mean squared error (MSE) = 4.801390, root-mean-square error (RMSE) = 2.191208 and R2 = 0.93, which allows to conclude that it is possible to use “smart” algorithms to improve the life cycle management process of vibro-centrifuged variatropic concrete, by reducing the time required for the compressive strength assessment of new structures.

Funder

Russian Science Foundation

Publisher

MDPI AG

Reference59 articles.

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2. Reinforced Concrete under the Action of Carbonization and Chloride Aggression: A Probabilistic Model for Life Prediction;Leonovich;Sci. Tech.,2019

3. Kliukas, R., Lukoševičienė, O., Jaras, A., and Jonaitis, B. (2020). The Mechanical Properties of Centrifuged Concrete in Reinforced Concrete Structures. Appl. Sci., 10.

4. Refani, A.N., and Nagao, T. (2023). Corrosion Effects on the Mechanical Properties of Spun Pile Materials. Appl. Sci., 13.

5. Korolev, E.V., Bazhenov, Y.M., and Smirnov, V.A. (2011). Building Materials of Variatropic Frame Structure, National Research Moscow State University of Civil Engineering.

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