Predicting the capacity of perfobond rib shear connector using an ANN model and GSA method

Due to recent advances in the field of artificial neural networks (ANN) and the global sensitivity analysis (GSA) method, the application of these techniques in structural analysis has become feasible. A connector is an important part of a composite beam, and its shear strength can have a significan...

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Veröffentlicht in:Frontiers of Structural and Civil Engineering 2022, Vol.16 (10), p.1233-1248
Hauptverfasser: SUN, Guorui, SHI, Jun, DENG, Yuang
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SHI, Jun
DENG, Yuang
description Due to recent advances in the field of artificial neural networks (ANN) and the global sensitivity analysis (GSA) method, the application of these techniques in structural analysis has become feasible. A connector is an important part of a composite beam, and its shear strength can have a significant impact on structural design. In this paper, the shear performance of perfobond rib shear connectors (PRSCs) is predicted based on the back propagation (BP) ANN model, the Genetic Algorithm (GA) method and GSA method. A database was created using push-out test test and related references, where the input variables were based on different empirical formulas and the output variables were the corresponding shear strengths. The results predicted by the ANN models and empirical equations were compared, and the factors affecting shear strength were examined by the GSA method. The results show that the use of ANN model optimization by GA method has fewer errors compared to the empirical equations. Furthermore, penetrating reinforcement has the greatest sensitivity to shear performance, while the bonding force between steel plate and concrete has the least sensitivity to shear strength.
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subjects ANN model
Artificial neural networks
Back propagation networks
Cities
Civil Engineering
Composite beams
Connectors
Countries
Empirical equations
Engineering
Genetic algorithms
global sensitivity analysis
Mathematical models
Neural networks
Optimization
perfobond rib shear connector
Regions
Research Article
Sensitivity analysis
Shear strength
Steel plates
Structural analysis
Structural design
Structural engineering
title Predicting the capacity of perfobond rib shear connector using an ANN model and GSA method
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