Adaptive importance sampling based neural network framework for reliability and sensitivity prediction for variable stiffness composite laminates with hybrid uncertainties
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Mathew, Tittu Varghese
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Adaptive importance sampling based neural network framework for reliability and sensitivity prediction for variable stiffness composite laminates with hybrid uncertainties
Abstract
In this work, we propose to leverage the advantages of both the Artificial Neural Network (ANN) based Second
Order Reliability Method (SORM) and Importance sampling to yield an Adaptive Importance Sampling based
ANN, with specific application towards failure probability and sensitivity estimates of Variable Stiffness
Composite Laminate (VSCL) plates, in the presence of multiple independent geometric and material uncertainties.
The performance function for the case studies is defined based on the fundamental frequency of the
VSCL plate. The accuracy in both the reliability estimates and sensitivity studies using the proposed method were
found to be in close agreement with that obtained using the ANN based brute-force Monte Carlo Simulations
(MCS) method, with a significant computational savings of 95%. Moreover, the importance of taking into account
the randomness in ply thickness for failure probability estimates is also highlighted quantitatively under
the sensitivity studies section.
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Artículo de publicación ISI Artículo de publicación SCOPUS
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URI: https://repositorio.uchile.cl/handle/2250/175868
DOI: 10.1016/j.compstruct.2020.112344
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Composite Structures 245 (2020) 112344
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