2023
DOI: 10.3390/buildings13071852
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Estimating the Concrete Ultimate Strength Using a Hybridized Neural Machine Learning

Abstract: Concrete is a highly regarded construction material due to many advantages such as versatility, durability, fire resistance, and strength. Hence, having a prediction of the compressive strength of concrete (CSC) can be highly beneficial. The new generation of machine learning models has provided capable solutions to concrete-related simulations. This paper deals with predicting the CSC using a novel metaheuristic search scheme, namely the slime mold algorithm (SMA). The SMA retrofits an artificial neural netwo… Show more

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