Back to Search Start Over

Novel informational bat-ANN model for predicting punching shear of RC flat slabs without shear reinforcement.

Authors :
Faridmehr, I.
Nehdi, M.L.
Hajmohammadian Baghban, M.
Source :
Engineering Structures. Apr2022, Vol. 256, pN.PAG-N.PAG. 1p.
Publication Year :
2022

Abstract

• Estimating punching shear strength of RC flat slabs using existing methods is associated with high inaccuracy. • New computational intelligence model predicts punching shear strength with superior accuracy. • Novel hybrid Bat-ANN model identified influential design parameter not normally considered by design codes. • Novel hybrid Bat-ANN captures influence of key design parameters. • New model could be integrated in automated design platform for RC structures. While design codes provide guidelines to prevent brittle punching shear failures in flat reinforced concrete (RC) slabs, they are associated with high inaccuracy. This study scrutinizes existing design provisions, highlighting its features and limitations. Sensitivity analysis is then used to identify the influential mechanical and geometric parameters. Subsequently, an artificial neural network coupled with a metaheuristic Bat algorithm (Bat-ANN) is used to develop a hybrid model for estimating punching shear strength. Several statistical metrics revealed that the Bat-ANN model achieved superior predictive accuracy. The novel hybrid model was deployed to assess the influence of key parameters affecting punching shear strength, including the slab effective depth, concrete strength, reinforcement ratio, reinforcement yield strength, and width of the square loaded area. The analysis identified the importance of the flexural reinforcement, which is not typically considered in estimating punching shear strength. Subsequently, using the supervised machine learning method through the EUREQA software, a new regression expression was proposed to estimate the punching shear resistance of flat slabs. This hybrid computational intelligence model could be integrated in future automated design platforms of RC structures. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01410296
Volume :
256
Database :
Academic Search Index
Journal :
Engineering Structures
Publication Type :
Academic Journal
Accession number :
155814620
Full Text :
https://doi.org/10.1016/j.engstruct.2022.114030