Publication | Open Access
Prediction of Concrete Compressive Strength by Evolutionary Artificial Neural Networks
167
Citations
21
References
2015
Year
EngineeringMechanical EngineeringStructural PerformanceStructural MechanicsStructural OptimizationStructural EngineeringGeotechnical EngineeringGenetic AlgorithmUltra-high-performance ConcreteCompressive StrengthConcrete TechnologyFiber-reinforced Cement CompositeCylindrical Concrete PartsCement-based Construction MaterialEvolving Neural NetworkCivil EngineeringConstruction EngineeringConcrete Compressive StrengthArtificial Neural Network
Compressive strength of concrete has been predicted using evolutionary artificial neural networks (EANNs) as a combination of artificial neural network (ANN) and evolutionary search procedures, such as genetic algorithms (GA). In this paper for purpose of constructing models samples of cylindrical concrete parts with different characteristics have been used with 173 experimental data patterns. Water-cement ratio, maximum sand size, amount of gravel, cement, 3/4 sand, 3/8 sand, and coefficient of soft sand parameters were considered as inputs; and using the ANN models, the compressive strength of concrete is calculated. Moreover, using GA, the number of layers and nodes and weights are optimized in ANN models. In order to evaluate the accuracy of the model, the optimized ANN model is compared with the multiple linear regression (MLR) model. The results of simulation verify that the recommended ANN model enjoys more flexibility, capability, and accuracy in predicting the compressive strength of concrete.
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