Two stage AI framework for strength prediction and generative LLM for geopolymer concrete
摘要
Geopolymer concrete is a low carbon alternative promising replacement for the conventional Portland cement, yet its mix design process still depends to a great extent on lengthy laboratory testing. This article presents a new two stage artificial intelligence system aimed at speeding up the identification of high performance geopolymer concrete formulations through the combination of generative and predictive models. The initial phase includes training a number of machine learning models such as a Genetic Algorithm optimized XGBoost (GA XGBoost), TabTransformer and Levenberg Marquardt optimised Artificial Neural Network (ANN LM) on a set of 820 Geopolymer concrete mixes drawn from scientific literature to make predictions for compressive strength. Among the compressive strength predicting models GA XGBoost performed better in terms of predictive accuracy with an R