Advances in Nano Research

Volume 18, Number 2, 2025, pages 143-162

DOI: 10.12989/anr.2025.18.2.143

A shear deformable numerical approaches for the static analysis of bi-directional functionally graded beams

Muhittin Turan, Volkan Kahya, Ecren Uzun Yaylaci and Murat Yaylaci

Abstract

This paper introduces a highly accurate and computationally efficient shear deformable finite element model for the static analysis of bi-directional functionally graded beams (BD-FGBs) with various boundary conditions grounded in the first-order shear deformation theory (FSDT). The model, featuring ten degrees of freedom across five nodes, excels in capturing both axial and shear deformations with remarkable precision while maintaining a streamlined formulation. In a novel approach, Artificial Neural Network (ANN) methods are also employed alongside the finite element analysis, offering a dual-method investigation into the static behavior of BD-FGBs. This paper aims to further advance the understanding of BD-FGM beams by exploring their static behavior under diverse loading conditions and boundary constraints, employing advanced finite element methods and artificial neural network techniques. The material properties are modeled through power-law distributions, and the governing equations are derived from Lagrange's principle. Displacements and stresses were computed under different boundary conditions (BCs), slenderness ratios (L/h), and power-law indices (px, pz). Comparative analysis with existing literature reveals the superior suitability of the proposed finite element model for static analysis, while the ANN approach further reinforces its potential as a robust, complementary tool. The innovative combination of these methods promises to offer significant contributions to the field and provides new insights into the behavior of BD-FGBs under static loads.

Key Words

bi-directional FGBs; finite element; FSDT; power-law rule; static analysis

Address

Muhittin Turan: Department of Civil Engineering, Bayburt University, 69010 Bayburt, Turkey Volkan Kahya: Department of Civil Engineering, Karadeniz Technical University, 61080, Trabzon, Turkey Ecren Uzun Yaylaci: Faculty of Fisheries, Recep Tayyip Erdogan University, 53100, Rize, Turkey Murat Yaylaci: Department of Civil Engineering, Recep Tayyip Erdogan University, 53100, Rize, Turkey/ Turgut Kiran Maritime Faculty, Recep Tayyip Erdogan University, 53900, Rize, Turkey/ Murat Yaylaci-Luzeri R&D Engineering Company, 53100, Rize, Turkey