PREDICTION OF GEOPOLYMER CONCRETE COMPRESSIVE STRENGTH UTILIZING ARTIFICIAL NEURAL NETWORK AND NONDESTRUCTIVE TESTING
A promising substitute for regular concrete is geopolymer concrete.
Engineering mechanical parameters of geopolymer concrete,
including compressive strength, are frequently measured in the
laboratory or in-situ via experimental destructive tests, which calls for
a significant quantity of raw materials, a longer time to prepare the
samples, and expensive machinery. Thus, to evaluate compressive
strength, non-destructive testing is preferred. Therefore, the objective
of this research is to develop an artificial neural network model based
on the results of destructive and non-destructive tests to assess the
compressive strength of geopolymer concrete without needing further
destructive tests. According to the artificial neural network analysis
developed in this study, the compressive strength of geopolymer
concrete can be predicted rather accurately by combining the results
of the non-destructive with R
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of 0.9286.