Development and strength prediction of sustainable concrete having binary and ternary cementitious blends and incorporating recycled aggregates from demolished UAE buildings: Experimental and machine learning-based studies
•The potential structural applications of RCA sourced from construction and demolition wastes in the UAE were investigated.•The compressive and flexural strengths of concrete incorporating different RCA replacement levels and SCMs were investigated.•ANOVA was used to study the effect of different va...
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Veröffentlicht in: | Construction & building materials 2023-05, Vol.380, p.131278, Article 131278 |
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Zusammenfassung: | •The potential structural applications of RCA sourced from construction and demolition wastes in the UAE were investigated.•The compressive and flexural strengths of concrete incorporating different RCA replacement levels and SCMs were investigated.•ANOVA was used to study the effect of different variables on the strength of concrete with varying RCA replacement levels.•Machine learning-based predictive models were developed to accurately predict the compressive and flexural strengths of such green concrete.
This study investigates the mechanical properties of concrete mixes containing recycled concrete aggregate (RCA) from demolished buildings in Abu Dhabi, aiming to promote sustainable construction practices. Ground granulated blast-furnace slag and fly ash were used as supplementary cementitious materials in 70 concrete mixes, incorporating varying RCA replacement levels (0%, 20%, 40%, 60%, and 100%). Uniaxial compressive and flexural tests were conducted, revealing that concrete with 20% RCA can be utilized in structural applications, as its strength exceeded 45 MPa. Most ternary blend mixes achieved the target design strength, excluding 100% RCA mixes. Analysis of variance evaluated the significance of strength differences across RCA levels, and accurate machine learning-based models were developed for predicting the compressive and flexural strengths of eco-friendly concrete containing RCA. The findings encourage wider adoption of RCA in structural applications, contributing to more sustainable concrete practices in the construction industry. |
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ISSN: | 0950-0618 1879-0526 |
DOI: | 10.1016/j.conbuildmat.2023.131278 |