Engineering punching shear strength of flat slabs predicted by nature-inspired metaheuristic optimized regression system

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5 Scopus citations

Abstract

Reinforced concrete (RC) flat slabs, a popular choice in construction due to their flexibility, are susceptible to sudden and brittle punching shear failure. Existing design methods often exhibit significant bias and variability. Accurate estimation of punching shear strength in RC flat slabs is crucial for effective concrete structure design and management. This study introduces a novel computation method, the jellyfish-least square support vector machine (JS-LSSVR) hybrid model, to predict punching shear strength. By combining machine learning (LSSVR) with jellyfish swarm (JS) intelligence, this hybrid model ensures precise and reliable predictions. The model’s development utilizes a real-world experimental data set. Comparison with seven established optimizers, including artificial bee colony (ABC), differential evolution (DE), genetic algorithm (GA), and others, as well as existing machine learning (ML)-based models and design codes, validates the superiority of the JS-LSSVR hybrid model. This innovative approach significantly enhances prediction accuracy, providing valuable support for civil engineers in estimating RC flat slab punching shear strength.

Original languageEnglish
Pages (from-to)551-567
Number of pages17
JournalFrontiers of Structural and Civil Engineering
Volume18
Issue number4
DOIs
StatePublished - Apr 2024

Keywords

  • jellyfish search
  • machine learning
  • punching shear strength
  • reinforced concrete flat slabs
  • support vector machine

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