Publication | Closed Access
Prediction and analysis of compressive strength of recycled aggregate thermal insulation concrete based on GA-BP optimization network
30
Citations
8
References
2020
Year
Search OptimizationReinforcement MaterialEngineeringCement-based Construction MaterialCivil EngineeringConcrete TechnologyReinforced ConcreteMechanical EngineeringGa-bp Optimization NetworkNeural NetworkGenetic AlgorithmGeneralization PerformanceUltra-high-performance ConcreteCompressive StrengthStructural MechanicsCivil Engineering Materials
Purpose This paper aims to predict the 28-day compressive strength of recycled thermal insulation concrete more accurately. Design/methodology/approach The initial weights and thresholds of BP neural network are improved by genetic algorithm on MATLAB 2014 a platform. Findings Genetic algorithm–back propagation (GA-BP) neural network is more stable. The generalization performance of the complex is better. Originality/value The GA-BP neural network based on the training sample data can better realize the strength prediction of recycled aggregate thermal insulation concrete and reduce the complex orthogonal experimental process. GA-BP neural network is more stable. The generalization performance of the complex is better.
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