Published: Nov. 4, 2016
Event Description:
Alireza Doostan, Department of Aerospace Engineering Sciences, Â鶹ӰԺ

Uncertainty Quantification Using Low-fidelity DataÌý

Realistic analysis and design of multi-disciplinary engineering systems require not onlyÌý
a fine understanding and modeling of the underlying physics and their interactions but also recognition of intrinsic uncertainties and their influences on the quantities of interest.Ìý
Uncertainty Quantification (UQ) is an emerging discipline that attempts to addressÌý
the latter issue: It aims at a meaningful characterization of uncertainties from the available measurements, as well as efficient propagation of these uncertainties throughÌý
the governing equations for a quantitative validation of model predictions.Ìý

The use of model reduction has become widespread as a means to reduce computational cost for UQ of PDE systems. This talk introduces a model reduction technique that exploits the low-rank structure of the stochastic solution of interest – when exists – for fastÌý
propagation of high-dimensional uncertainties. To construct this low-rank approximation, the proposed method utilizes models with lower fidelities (hence cheaper to simulate) than the intended high-fidelity model. Using realizations of the lower fidelity solution, a set of reduced basis and an interpolation rule are identified and applied to a small setÌý
of high-fidelity realizations to obtain the low-rank, bi-fidelity approximation, which in turn will be employed to generate statistics of the high-fidelity solution. The talk will then focus on the convergence analysis of the method and discuss a verifiable condition forÌý
the low-fidelity model to lead to accurate, bi-fidelity approximation. Numerical examples will be presented to illustrate the performance of this approach.Ìý

This is a joint work with Hillary Fairbanks (CU Â鶹ӰԺ), Jerrad Hampton (CU Â鶹ӰԺ), and Akil Narayan (U of Utah).
Ìý

Location Information:
ÌýÌý()
1111 Engineering DRÌý
Â鶹ӰԺ, COÌý
Room:Ìý245
Contact Information:
Name: Ian Cunningham
Phone: 303-492-4668
Email:Ìýamassist@colorado.edu