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Regularization techniques for ill-posed inverse problems in data assimilation
Authors:C.J. Budd   M.A. Freitag  N.K. Nichols  
Affiliation:a Department of Mathematical Sciences, University of Bath, Bath BA2 7AY, UK;b Department of Mathematics, University of Reading, PO Box 220, Whiteknights, Reading RG6 6AX, UK
Abstract:Optimal state estimation from given observations of a dynamical system by data assimilation is generally an ill-posed inverse problem. In order to solve the problem, a standard Tikhonov, or L2, regularization is used, based on certain statistical assumptions on the errors in the data. The regularization term constrains the estimate of the state to remain close to a prior estimate. In the presence of model error, this approach does not capture the initial state of the system accurately, as the initial state estimate is derived by minimizing the average error between the model predictions and the observations over a time window. Here we examine an alternative L1 regularization technique that has proved valuable in image processing. We show that for examples of flow with sharp fronts and shocks, the L1 regularization technique performs more accurately than standard L2 regularization.
Keywords:Ill-posed inverse problems   Tikhonov and L1 regularization   Variational data assimilation   Nonlinear least-squares optimization   Model error   Burgers’   equation
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