Investigation of ANN architecture for predicting shear strength of fiber reinforcement bars concrete beams.

Quang Hung Nguyen, Hai-Bang Ly, Thuy-Anh Nguyen, Viet-Hung Phan, Long Khanh Nguyen, Van Quan Tran
Author Information
  1. Quang Hung Nguyen: Thuyloi University, Hanoi, Vietnam.
  2. Hai-Bang Ly: University of Transport Technology, Hanoi, Vietnam.
  3. Thuy-Anh Nguyen: University of Transport Technology, Hanoi, Vietnam.
  4. Viet-Hung Phan: University of Transport and Communications, Hanoi, Vietnam.
  5. Long Khanh Nguyen: University of Transport Technology, Hanoi, Vietnam.
  6. Van Quan Tran: University of Transport Technology, Hanoi, Vietnam. ORCID

Abstract

In this paper, an extensive simulation program is conducted to find out the optimal ANN model to predict the shear strength of fiber-reinforced polymer (FRP) concrete beams containing both flexural and shear reinforcements. For acquiring this purpose, an experimental database containing 125 samples is collected from the literature and used to find the best architecture of ANN. In this database, the input variables consist of 9 inputs, such as the ratio of the beam width, the effective depth, the shear span to the effective depth, the compressive strength of concrete, the longitudinal FRP reinforcement ratio, the modulus of elasticity of longitudinal FRP reinforcement, the FRP shear reinforcement ratio, the tensile strength of FRP shear reinforcement, the modulus of elasticity of FRP shear reinforcement. Thereafter, the selection of the appropriate architecture of ANN model is performed and evaluated by common statistical measurements. The results show that the optimal ANN model is a highly efficient predictor of the shear strength of FRP concrete beams with a maximum R2 value of 0.9634 on the training part and an R2 of 0.9577 on the testing part, using the best architecture. In addition, a sensitivity analysis using the optimal ANN model over 500 Monte Carlo simulations is performed to interpret the influence of reinforcement type on the stability and accuracy of ANN model in predicting shear strength. The results of this investigation could facilitate and enhance the use of ANN model in different real-world problems in the field of civil engineering.

References

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MeSH Term

Corrosion
Elasticity
Models, Chemical
Monte Carlo Method
Neural Networks, Computer
Polymers
Shear Strength
Steel

Chemicals

Polymers
Steel

Word Cloud

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