Uncertainty Quantification for Multi-fidelity Simulations
Journal:
arXiv
Published Date:
Mar 11, 2025
Abstract
The work focuses on gathering high-fidelity and low-fidelity numerical
simulations data using Nektar++ (Solver based on Applied Mathematics) and XFOIL
respectively. The utilization of the higher polynomial distribution in
calculating the Coefficient of lift and drag has demonstrated superior accuracy
and precision. Further, Co-kriging Data fusion and Adaptive sampling technique
has been used to obtain the precise data predictions for the lift and drag
within the confined domain without conducting the costly simulations on HPC
clusters. This creates a methodology to quantifying uncertainty in
computational fluid dynamics by minimizing the required number of samples. To
minimize the reliability on high-fidelity numerical simulations in Uncertainty
Quantification, a multi-fidelity strategy has been adopted. The effectiveness
of the multi-fidelity deep neural network model has been validated through the
approximation of benchmark functions across 1-, 32-, and 100-dimensional,
encompassing both linear and nonlinear correlations. The surrogate modelling
results showed that multi-fidelity deep neural network model has shown
excellent approximation capabilities for the test functions and multi-fidelity
deep neural network method has outperformed Co-kriging in effectiveness. In
addition to that, multi-fidelity deep neural network model is utilized for the
simulation of aleatory uncertainty propagation in 1-, 32-, and 100 dimensional
function test, considering both uniform and Gaussian distributions for input
uncertainties. The results have shown that multi-fidelity deep neural network
model has efficiently predicted the probability density distributions of
quantities of interest as well as the statistical moments with precision and
accuracy. The Co-Kriging model has exhibited limitations when addressing
32-Dimension problems due to the limitation of memory capacity for storage and
manipulation.