Meta-Heuristic Tuned With Gudermannian Neural Network for the Singular Neumann, Dirichlet and Neumann-Robin Boundary Conditions
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Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
Springernature
Abstract
The purpose of the current study is to design a feed forward Gudermannian neural networks for a singular Lane-Emden model based Neumann, Neumann-Robin and Dirichlet boundary conditions arising in numerous physical systems. The procedure based on the GNNs is exploited through the optimization of global and local search methods, i.e., genetic algorithm and active-set technique. A fitness function is constructed using the model and its boundary conditions, while the efficiency of the scheme is observed through the optimization with the hybridization of global and local search schemes. Four different nonlinear variants of the singular Lane-Emden model based Neumann, Neumann-Robin and Dirichlet boundary conditions have been numerically presented to validate the efficiency and accuracy of the model. The comparison of the obtained and exact results is used to verify the validity of the designed procedure. Moreover, different statistical measures have been implemented to certify the reliability of the proposed technique.
Description
Keywords
Lane-Emden, Gudermannian Neural Networks, Neumann-Robin And Dirichlet, Hybrid Scheme, Active-Set Technique, Genetic Algorithm
Turkish CoHE Thesis Center URL
WoS Q
N/A
Scopus Q
Q3
Source
Volume
8
Issue
8