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An intelligent computational iBCMO-DNN algorithm for stochastic thermal buckling analysis of functionally graded porous microplates using modified strain gradient theory.

Authors :
Tran, Van-Thien
Nguyen, Trung-Kien
Nguyen-Xuan, H.
Source :
Journal of Thermal Stresses; 2024, Vol. 47 Issue 9, p1188-1227, 40p
Publication Year :
2024

Abstract

The authors propose an intelligent computational method using the deep feedforward neural network integrated with an improved balance composite motion optimization algorithm to formulate a so-called iBCMO-DNN for solving the stochastic thermal buckling problems of functionally graded porous microplates. In the present approach, the deterministic behaviors of the functionally graded porous microplates were firstly analyzed by the combination of a unified higher-order shear deformation theory, modified strain gradient theory, and Ritz-type series solutions, and then stochastic responses under uncertainty of material properties are obtained by the iBCMO-DNN algorithm. The deep neural network with the long short-term memory model is used as a surrogate method to replace the time-consuming computational model, while the improved balance composite motion optimization is used to search for the optimal solutions. The obtained numerical results for various boundary conditions, uncertainty parameters, and three types of temperature distribution indicated that the proposed method achieves its accuracy and effectiveness in predicting stochastic thermal buckling of the functionally graded porous microplates. The improved balance composite motion optimization algorithm demonstrates a computational time ∼1.7 times faster than its predecessor. Furthermore, integrating a deep neural network into the improved algorithm reduces computational time to about 2/5 compared to the method without it. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01495739
Volume :
47
Issue :
9
Database :
Complementary Index
Journal :
Journal of Thermal Stresses
Publication Type :
Academic Journal
Accession number :
179483187
Full Text :
https://doi.org/10.1080/01495739.2024.2368054