Neural network-based prediction of the long-term time-dependent mechanical behavior of laminated composite plates with arbitrary hygrothermal effects

Autor: Sunyoung Im, Maenghyo Cho, Chien Truong-Quoc, Jang-Woo Han, Sy-Ngoc Nguyen
Rok vydání: 2021
Předmět:
Zdroj: Journal of Mechanical Science and Technology. 35:4643-4654
ISSN: 1976-3824
1738-494X
DOI: 10.1007/s12206-021-0932-2
Popis: Recurrent neural network (RNN)-based accelerated prediction was achieved for the long-term time-dependent behavior of viscoelastic composite laminated Mindlin plates subjected to arbitrary mechanical and hygrothermal loading. Time-integrated constitutive stress-strain relation was simplified via Laplace transform to a linear system to reduce the computational storage. A fast converging smooth finite element method named cell-based smoothed discrete shear gap was employed to enhance the data generation procedure for straining RNNs with a sparse mesh. This technique is applicable under varying hygrothermal conditions for real engineering structure problems with fluctuating temperature and moisture. Hence, accurate RNN-based long-term deformation prediction for laminated structures was realized using the history of environmental temperature and moisture condition.
Databáze: OpenAIRE