Application of Principal Component Analysis Approach to Predict Shear Strength of Reinforced Concrete Beams with Stirrups

Citations

WEB OF SCIENCE

18
Citations

SCOPUS

23

초록

The reinforced concrete (RC) member's shear strength estimation has been experimentally studied in most cases due to its nonlinear behavior. Many empirical equations have been derived from the experimental data; however, even those adopted in the construction codes do not thoroughly and accurately describe their shear behavior. Theoretically explained equations, on the other hand, are aligned with the experiment; however, they are complicated to use in practice. As shear behavior research is data-driven, the machine learning technique is applicable. Herein, an artificial neural network (ANN) algorithm is trained with 776 experiment results collected from available publications. The raw data is preprocessed by principal component analysis (PCA) before the application of the ANN technique. The predictions of the trained algorithm using ANN with PCA are compared to those of formulae adopted in a few existing building codes. Finally, a parametric study is conducted, and the significance of each variable to the strength of RC members is analyzed.

키워드

shear strengthreinforced concrete beamartificial neural networkprincipal component analysisARTIFICIAL NEURAL-NETWORKSRC BEAMSDESIGN PROCEDURESTEELCAPACITYDEEP
제목
Application of Principal Component Analysis Approach to Predict Shear Strength of Reinforced Concrete Beams with Stirrups
저자
Koo, SeungbumShin, DongikKim, Changhyuk
DOI
10.3390/ma14133471
발행일
2021-07
유형
Article
저널명
Materials
14
13