Evaluating Concrete Strength Under Various Curing Conditions Using Artificial Neural Networks

This study examines the impact of different curing methods on the compressive strength of concrete. It investigates techniques such as air curing, periodic water spraying, full water submersion, and polyethylene encasement. Artificial neural network models were employed to evaluate the compressive s...

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Main Authors: Al-Gburi Majid, Almssad Asaad, Al-Zuhairi Osamah Ibrahim
Format: Article
Language:English
Published: Sciendo 2024-12-01
Series:Nordic Concrete Research
Subjects:
Online Access:https://doi.org/10.2478/ncr-2024-0007
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author Al-Gburi Majid
Almssad Asaad
Al-Zuhairi Osamah Ibrahim
author_facet Al-Gburi Majid
Almssad Asaad
Al-Zuhairi Osamah Ibrahim
author_sort Al-Gburi Majid
collection DOAJ
description This study examines the impact of different curing methods on the compressive strength of concrete. It investigates techniques such as air curing, periodic water spraying, full water submersion, and polyethylene encasement. Artificial neural network models were employed to evaluate the compressive strength under each curing condition. A model for calculating compressive strength that considers surrounding conditions was created using an artificial neural network. The current study’s figures were generated using this model. The research thoroughly examined the impact of curing environments and concrete mix components on strength properties, taking into account factors such as temperature, the inclusion of additives such as fly ash and silica fume, adjustments in water-to-cement ratio, selection of aggregates, and the integration of various admixtures. One important discovery is that models that predict compressive strength based on 28-day water immersion do not accurately represent the actual strength because of the substantial impact of local curing conditions. Furthermore, concrete that was cured in polyethylene bags exhibited noticeable differences in moisture retention and temperature properties when compared to alternative methods. Understanding and evaluating curing conditions is crucial for accurate strength predictions. The study also found that compressive strength decreases with temperatures above 30°C and below 15°C.
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institution Kabale University
issn 2545-2819
language English
publishDate 2024-12-01
publisher Sciendo
record_format Article
series Nordic Concrete Research
spelling doaj-art-6e1ee73a27134bfcb9145a06f40e39ec2025-02-02T15:48:41ZengSciendoNordic Concrete Research2545-28192024-12-0171212310.2478/ncr-2024-0007Evaluating Concrete Strength Under Various Curing Conditions Using Artificial Neural NetworksAl-Gburi Majid0Almssad Asaad1Al-Zuhairi Osamah Ibrahim2Building and Construction Techniques Engineering, Northern Technical University, Mosul, IraqDepartment of Engineering and Chemical Sciences, Karlstad University, Karlstad, SwedenDepartment of Water Resources Engineering, College of Engineering, University of Baghdad, Baghdad, IraqThis study examines the impact of different curing methods on the compressive strength of concrete. It investigates techniques such as air curing, periodic water spraying, full water submersion, and polyethylene encasement. Artificial neural network models were employed to evaluate the compressive strength under each curing condition. A model for calculating compressive strength that considers surrounding conditions was created using an artificial neural network. The current study’s figures were generated using this model. The research thoroughly examined the impact of curing environments and concrete mix components on strength properties, taking into account factors such as temperature, the inclusion of additives such as fly ash and silica fume, adjustments in water-to-cement ratio, selection of aggregates, and the integration of various admixtures. One important discovery is that models that predict compressive strength based on 28-day water immersion do not accurately represent the actual strength because of the substantial impact of local curing conditions. Furthermore, concrete that was cured in polyethylene bags exhibited noticeable differences in moisture retention and temperature properties when compared to alternative methods. Understanding and evaluating curing conditions is crucial for accurate strength predictions. The study also found that compressive strength decreases with temperatures above 30°C and below 15°C.https://doi.org/10.2478/ncr-2024-0007concrete strengthartificial neural network modelsparametric analysistemperature effects
spellingShingle Al-Gburi Majid
Almssad Asaad
Al-Zuhairi Osamah Ibrahim
Evaluating Concrete Strength Under Various Curing Conditions Using Artificial Neural Networks
Nordic Concrete Research
concrete strength
artificial neural network models
parametric analysis
temperature effects
title Evaluating Concrete Strength Under Various Curing Conditions Using Artificial Neural Networks
title_full Evaluating Concrete Strength Under Various Curing Conditions Using Artificial Neural Networks
title_fullStr Evaluating Concrete Strength Under Various Curing Conditions Using Artificial Neural Networks
title_full_unstemmed Evaluating Concrete Strength Under Various Curing Conditions Using Artificial Neural Networks
title_short Evaluating Concrete Strength Under Various Curing Conditions Using Artificial Neural Networks
title_sort evaluating concrete strength under various curing conditions using artificial neural networks
topic concrete strength
artificial neural network models
parametric analysis
temperature effects
url https://doi.org/10.2478/ncr-2024-0007
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AT alzuhairiosamahibrahim evaluatingconcretestrengthundervariouscuringconditionsusingartificialneuralnetworks