Date
Thu, 30 Apr 2009
Time
14:00 - 15:00
Location
Comlab
Speaker
Prof. Andrew Stuart
Organisation
University of Warwick

Inverse problems are often ill-posed, with solutions that depend sensitively on data. Regularization of some form is often used to counteract this. I will describe an approach to regularization, based on a Bayesian formulation of the problem, which leads to a notion of well-posedness for inverse problems, at the level of probability measures.

The stability which results from this well-posedness may be used as the basis for understanding approximation of inverse problems in finite dimensional spaces. I will describe a theory which carries out this program.

The ideas will be illustrated with the classical inverse problem for the heat equation, and then applied to so more complicated inverse problems arising in data assimilation, such as determining the initial condition for the Navier-Stokes equation from observations.

Please contact us with feedback and comments about this page. Last updated on 03 Apr 2022 01:32.