Validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beams
The architecture and weights of an artificial neural network model that predicts time-dependent deflection have been developed and optimized. To satisfy the serviceability limit states, a concrete structure must be serviceable and perform its intended function throughout its working life. Excessive...
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Online Access: | http://dx.doi.org/10.1080/23311916.2018.1477485 |
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doaj-88703c6034a945feb58a77bef2ca46472021-03-02T14:46:47ZengTaylor & Francis GroupCogent Engineering2331-19162018-01-015110.1080/23311916.2018.14774851477485Validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beamsFaiq M. S. Al-Zwainy0Rana I. K. Zaki1Atheer Mahmood Al-saadi2Huda F. Ibraheem3College of Engineering, Al-Nahrain UniversityCollege of Engineering, Al-Nahrain UniversityMinistry of Construction and HousingAl-Iraqia UniversityThe architecture and weights of an artificial neural network model that predicts time-dependent deflection have been developed and optimized. To satisfy the serviceability limit states, a concrete structure must be serviceable and perform its intended function throughout its working life. Excessive deflection should not impair the function of the structure or be aesthetically unacceptable. Cracks should not be unsightly or wide enough to lead to durability problems. Design for the serviceability limit states involves making reliable predictions of the instantaneous and time-dependent deflection of reinforced concrete beams. This is complicated by the nonlinear behavior of concrete caused mainly by cracking, tension stiffening, creep, and shrinkage. This paper provides a statistical approach for predicting the time-dependent deflection of reinforced concrete beams at service loads and outlines a validity of the proposed method in comparison with the American Concrete Institute (ACI) method.http://dx.doi.org/10.1080/23311916.2018.1477485time-dependent deflectionbeamsreinforced concretestatistical analysisartificial neural networksvariabilityparametric study |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Faiq M. S. Al-Zwainy Rana I. K. Zaki Atheer Mahmood Al-saadi Huda F. Ibraheem |
spellingShingle |
Faiq M. S. Al-Zwainy Rana I. K. Zaki Atheer Mahmood Al-saadi Huda F. Ibraheem Validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beams Cogent Engineering time-dependent deflection beams reinforced concrete statistical analysis artificial neural networks variability parametric study |
author_facet |
Faiq M. S. Al-Zwainy Rana I. K. Zaki Atheer Mahmood Al-saadi Huda F. Ibraheem |
author_sort |
Faiq M. S. Al-Zwainy |
title |
Validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beams |
title_short |
Validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beams |
title_full |
Validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beams |
title_fullStr |
Validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beams |
title_full_unstemmed |
Validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beams |
title_sort |
validity of artificial neural modeling to estimate time-dependent deflection of reinforced concrete beams |
publisher |
Taylor & Francis Group |
series |
Cogent Engineering |
issn |
2331-1916 |
publishDate |
2018-01-01 |
description |
The architecture and weights of an artificial neural network model that predicts time-dependent deflection have been developed and optimized. To satisfy the serviceability limit states, a concrete structure must be serviceable and perform its intended function throughout its working life. Excessive deflection should not impair the function of the structure or be aesthetically unacceptable. Cracks should not be unsightly or wide enough to lead to durability problems. Design for the serviceability limit states involves making reliable predictions of the instantaneous and time-dependent deflection of reinforced concrete beams. This is complicated by the nonlinear behavior of concrete caused mainly by cracking, tension stiffening, creep, and shrinkage. This paper provides a statistical approach for predicting the time-dependent deflection of reinforced concrete beams at service loads and outlines a validity of the proposed method in comparison with the American Concrete Institute (ACI) method. |
topic |
time-dependent deflection beams reinforced concrete statistical analysis artificial neural networks variability parametric study |
url |
http://dx.doi.org/10.1080/23311916.2018.1477485 |
work_keys_str_mv |
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