Physics-Informed Neural Network for Nonlinear Bending Analysis of Nano-Beams: A Systematic Hyperparameter Optimization
Loading...

Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
MDPI
Open Access Color
GOLD
Green Open Access
No
OpenAIRE Downloads
OpenAIRE Views
Publicly Funded
No
Abstract
This paper investigates the nonlinear bending analysis of nano-beams using the physics-informed neural network (PINN) method. The nonlinear governing equations for the bending of size-dependent nano-beams are derived from Hamilton's principle, incorporating nonlocal strain gradient theory, and based on Euler-Bernoulli beam theory. In the PINN method, the solution is approximated by a deep neural network, with network parameters determined by minimizing a loss function that consists of the governing equation and boundary conditions. Despite numerous reports demonstrating the applicability of the PINN method for solving various engineering problems, tuning the network hyperparameters remains challenging. In this study, a systematic approach is employed to fine-tune the hyperparameters using hyperparameter optimization (HPO) via Gaussian process-based Bayesian optimization. Comparison of the PINN results with available reference solutions shows that the PINN, with the optimized parameters, produces results with high accuracy. Finally, the impacts of boundary conditions, different loads, and the influence of nonlocal strain gradient parameters on the bending behavior of nano-beams are investigated.
Description
Fallah, Ali/0000-0002-7744-4246;
ORCID
Keywords
Physics-Informed Neural Networks, Hyperparameter Optimization, Nano-Beams, Nonlinear Bending Analysis, Nonlocal Strain Gradient Theory
Fields of Science
Citation
WoS Q
Q2
Scopus Q
Q4

OpenCitations Citation Count
N/A
Source
Mathematical and Computational Applications
Volume
30
Issue
4
Start Page
72
End Page
PlumX Metrics
Citations
Scopus : 1
Captures
Mendeley Readers : 3
SCOPUS™ Citations
2
checked on Feb 10, 2026
Web of Science™ Citations
2
checked on Feb 10, 2026
Page Views
2
checked on Feb 10, 2026
Google Scholar™


