Applied Sciences (Jul 2023)

The Machine-Learning-Based Prediction of the Punching Shear Capacity of Reinforced Concrete Flat Slabs: An Advanced M5P Model Tree Approach

  • Marwa Hameed Abdallah,
  • Zainab Abdulrdha Thoeny,
  • Sadiq N. Henedy,
  • Nadia Moneem Al-Abdaly,
  • Hamza Imran,
  • Luís Filipe Almeida Bernardo,
  • Zainab Al-Khafaji

DOI
https://doi.org/10.3390/app13148325
Journal volume & issue
Vol. 13, no. 14
p. 8325

Abstract

Read online

Reinforced concrete (RC) flat slabs are widely employed in modern construction, and accurately predicting their load-carrying capacity is crucial for ensuring safety and reliability. Existing design methods and empirical equations still exhibit discrepancies in determining the ultimate load capacity of flat slabs. This study aims to develop a robust machine learning model, specifically the M5P model tree, for predicting the punching shear capacity of a RC flat slab without shear reinforcement. A comprehensive dataset of 482 experimentally tested flat slabs without shear reinforcement was gathered through an extensive literature review and utilized for the development of the M5P model. The model takes into account influential parameters, such as slab thickness, longitudinal reinforcement ratios, and concrete strength. The performance of the proposed M5P model was compared with existing design codes and other empirical models. The comparison highlights that the developed M5P model tree provides a more accurate and reliable prediction of the punching shear capacity of RC flat slabs. This study contributes to the advancement of structural engineering knowledge and has the potential to improve the design and safety assessment of concrete flat slab structures.

Keywords