Advances in Nano Research

Volume 16, Number 6, 2024, pages 623-638

DOI: 10.12989/anr.2024.16.6.623

Thermal post-buckling measurement of the advanced nanocomposites reinforced concrete systems via both mathematical modeling and machine learning algorithm

Minggui Zhou, Gongxing Yan, Danping Hu and Haitham A. Mahmoud

Abstract

This study investigates the thermal post-buckling behavior of concrete eccentric annular sector plates reinforced with graphene oxide powders (GOPs). Employing the minimum total potential energy principle, the plates' stability and response under thermal loads are analyzed. The Haber-Schaim foundation model is utilized to account for the support conditions, while the transform differential quadrature method (TDQM) is applied to solve the governing differential equations efficiently. The integration of GOPs significantly enhances the mechanical properties and stability of the plates, making them suitable for advanced engineering applications. Numerical results demonstrate the critical thermal loads and post-buckling paths, providing valuable insights into the design and optimization of such reinforced structures. This study presents a machine learning algorithm designed to predict complex engineering phenomena using datasets derived from presented mathematical modeling. By leveraging advanced data analytics and machine learning techniques, the algorithm effectively captures and learns intricate patterns from the mathematical models, providing accurate and efficient predictions. The methodology involves generating comprehensive datasets from mathematical simulations, which are then used to train the machine learning model. The trained model is capable of predicting various engineering outcomes, such as stress, strain, and thermal responses, with high precision. This approach significantly reduces the computational time and resources required for traditional simulations, enabling rapid and reliable analysis. This comprehensive approach offers a robust framework for predicting the thermal post-buckling behavior of reinforced concrete plates, contributing to the development of resilient and efficient structural components in civil engineering.

Key Words

advanced nanocomposites; concrete eccentric systems; machine learning algorithm; TDQM; thermal post buckling

Address

Minggui Zhou: School of Intelligent Construction, Luzhou vocational and technical college, Luzhou 646000, Sichuan, China Gongxing Yan: School of Intelligent Construction, Luzhou vocational and technical college, Luzhou 646000, Sichuan, China/ Luzhou Key Laboratory of Intelligent Construction and Low-carbon Technology, Luzhou 646000, China Danping Hu: School of Intelligent Construction, Luzhou vocational and technical college, Luzhou 646000, Sichuan, China/ Luzhou Key Laboratory of Intelligent Construction and Low-carbon Technology, Luzhou 646000, China Haitham A. Mahmoud: Industrial Engineering Department, College of Engineering, King Saud University, Riyadh 11421, Saudi Arabia