Machine learning techniques for prediction of ultimate strain of FRP-confined concrete

  • Tijani, Ibrahim A.
  • Lawal, Abiodun I.
  • Kwon, S.
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초록

It is widely known that axially loaded fiber-reinforced polymer (FRP) confined concrete presents significant and enhanced mechanical properties with reference to the unconfined concrete. Therefore, to predict the mechanical behavior of FRP-confined concrete two quantities-peak strength and ultimate strain are required. Despite the significant advances, the determination of the ultimate strain of FRP-confined concrete is one of the most challenging problems to be resolved. This is often attributed to our persistence in desiring the conventional methods as the sole technique to examine this phenomenon and the complex nature of the ultimate strain of FRP-confined concrete. To bridge the research gap, this study adopted two machine learning (ML) techniques-artificial neural network (ANN) and Gaussian process regression (GPR)-to analyze observations obtained from 627 datasets of FRP-confined concrete circular and non-circular sections under axial loading test. Besides, the techniques are also used to predict the ultimate strain of FRP-confined concrete. Seven parameters namely width/diameter of the specimens, corner radius ratio, the strength of concrete, FRP elastic modulus, FRP thickness, FRP tensile rupture strain, and the axial strain of unconfined concrete-are the input parameters used to predict the ultimate strain of FRP-confined concrete. The results of the current study highlight the merit of using AI techniques in structural engineering applications given their extraordinary ability to comprehend multidimensional phenomena of FRP-confined concrete structures with ease, low computational cost, and high performance over the existing empirical models.

키워드

artificial neural networkconcreteGaussian process regressionpredictionultimate strainCOMPRESSIVE BEHAVIORSTRENGTHCOLUMNSSQUAREMODELMEMBERSPERFORMANCEREGRESSION
제목
Machine learning techniques for prediction of ultimate strain of FRP-confined concrete
저자
Tijani, Ibrahim A.Lawal, Abiodun I.Kwon, S.
DOI
10.12989/sem.2022.84.1.101
발행일
2022-10-10
유형
Article
저널명
Structural Engineering and Mechanics, An Int'l Journal
84
1
페이지
101 ~ 111