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AI-based prediction of strength and tensile properties of expansive soil stabilized with recycled ash and natural fibers

Abolfazl Baghbani

2023Materials research proceedings13 citationsDOIOpen Access PDF

Abstract

Abstract. This study investigated the uniaxial compressive strength (UCS) and split tensile strength of a mixture of soil and recycled ash and natural fibers using two different methods, partial least squares (PLS) and classification and regression random forest (CRRF). The study analyzed a dataset of 20 sets with five inputs and two outputs, and the importance of the input parameters was evaluated. The performance of the PLS and CRRF models was assessed, and it was found that the CRRF model outperformed the PLS model. The study also revealed the most and least important parameters in predicting the split tensile strength and UCS in both models. The findings of this study have implications for the use of soil and recycled ash mixtures with natural fibers in construction applications.

Topics & Concepts

Ultimate tensile strengthCompressive strengthExpansive clayExpansivePartial least squares regressionMaterials scienceFly ashGeotechnical engineeringRegression analysisComposite materialEnvironmental scienceMathematicsSoil scienceSoil waterStatisticsEngineeringGeotechnical Engineering and Soil StabilizationRecycled Aggregate Concrete PerformanceInnovative concrete reinforcement materials
AI-based prediction of strength and tensile properties of expansive soil stabilized with recycled ash and natural fibers | Litcius