Time: 16:00 to 17:00
Place: 216 McBryde
Speaker: Dacian Daescu of the University of Minnesota
Title: Adjoint-based techniques for the analysis of large-scale uncertain systems
The adjoint modeling is presented as a feasible tool to evaluate the sensitivity of a scalar response function with respect to a large number of model parameters. The use of a second order adjoint model to obtain Hessian information is shown to be of benefit for ill conditioned optimization problems.
A research area of major interest is the design of an adaptive observational network. Expensive field-deployed resources (facilities and people) can be utilized more effectively and science success can be maximized by an optimal allocation of the observational resources. A new adjoint approach to the adaptive observations problem is presented and its potential benefits are illustrated in a comparative analysis with traditional methods based on singular vectors and gradient sensitivity.
Numerical results are shown for nonlinear chemical reactions systems and atmospheric circulation models.
Return to