Results in Engineering (Sep 2024)
Improved static and impact properties of UHPFRC retrofitted with PU grout materials: Experiments and ML algorithms
Abstract
This study addresses the inherent brittleness of ultra-high-performance fiber re-inforced concrete (UHPFRC) by introducing a U-shaped specimen and investigating the impact strength of U-shaped UHPFRC retrofitted with polyurethane (PU) grout overlays. A drop-weight impact test was conducted on the U-shaped specimens utilizing a 2.1 kg weight. Various PU overlay thicknesses (5 mm, 10 mm, and 15 mm) were applied to the specimens. Machine learning techniques, specifically artificial neural networks (ANN) and support vector regression (SVR) were utilized to analyze the experimental data. Results indicate that UHPFRC cast with PU grout overlaid exhibit decrease in flexural strength compare to reference specimens. On the other hand, significance improvement in impact resistance were observed, with overlaid thickness. The addition of 5 mm, 10 mm, and 15 mm PU grout layers substantially improved the first crack strength of UHPFRC-5PU, UHPFRC-10PU, and UHPFRC-15PU specimens by 94 %, 340.3 %, and 600 %, respectively, compared to UHPFRC-0PU. Machine learning models accurately predicted failure crack strength (N2), with ANN and SVR achieving determination correlation (R2) values of 0.9838 and 0.9816 during the training and testing phases, respectively.