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Numerical modeling of rebar-matrix bond behaviors of nano-SiO2 and PVA fiber reinforced geopolymer composites

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Abstract Geopolymer composites represent promising alternatives to ordinary Portland cement materials, whose properties can be improved by mixing polyvinyl alcohol (PVA) fibers and nano-SiO2 (NS). In this study, bond tests… Click to show full abstract

Abstract Geopolymer composites represent promising alternatives to ordinary Portland cement materials, whose properties can be improved by mixing polyvinyl alcohol (PVA) fibers and nano-SiO2 (NS). In this study, bond tests and numerical modeling were conducted to investigate the effects of PVA fibers and NS on the rebar-matrix bond behaviors of geopolymer composites. A modified mathematical model derived from the Harajli model and a finite element numerical model based on the Mori-Tanaka homogenization and the Tsai-Hill failure criterion were proposed. The prediction results of the numerical and modified mathematical models were compared to those of an existing model and the experiment. The results showed that PVA fibers and NS can effectively improve the bond strength and toughness of the geopolymer composites and that the bond behavior is optimized when the PVA fiber content is within 0.6%–0.8% and the NS content is 1.5%–2%. The numerical and modified mathematical models can effectively reflect the rebar-matrix bond behaviors of the NS and PVA fiber reinforced geopolymer composites. The proposed numerical model exhibits high prediction accuracy, providing an effective guide and reference for predicting the bond behaviors of rebar and geopolymer composites.

Keywords: rebar matrix; matrix bond; bond behaviors; geopolymer composites; pva fiber; bond

Journal Title: Ceramics International
Year Published: 2021

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