The Bayesian approach to inverse problems is of paramount importance in quantifying uncertainty about the input to, and the state of, a system of interest given noisy observations. Herein we consider the forward problem of the forced 2D Navier-Stokes equation. The inverse problem is to make inference concerning the forcing, and possibly the initial condition, given noisy observations of the velocity field. We place a prior on the forcing which is in the form of a spatially-correlated and temporally-white Gaussian process, and formulate the inverse problem for the posterior distribution. Given appropriate spatial regularity conditions, we show that the solution is a continuous function of the forcing. Hence, for appropriately chosen spatial ...
We study Bayesian data assimilation (filtering) for time-evolution Partial differential equations (P...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
The Bayesian approach to inverse problems is of paramount importance in quantifying uncertainty abou...
The Bayesian approach to inverse problems is of paramount importance in quantifying uncertainty abou...
the date of receipt and acceptance should be inserted later Abstract The Bayesian approach to invers...
We consider a non-linear Bayesian data assimilation model for the periodic two-dimensional Navier-S...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
We consider the inverse problem of estimating the initial condition of a partial differential equati...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
We study Bayesian data assimilation (filtering) for time-evolution Partial differential equations (P...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
The Bayesian approach to inverse problems is of paramount importance in quantifying uncertainty abou...
The Bayesian approach to inverse problems is of paramount importance in quantifying uncertainty abou...
the date of receipt and acceptance should be inserted later Abstract The Bayesian approach to invers...
We consider a non-linear Bayesian data assimilation model for the periodic two-dimensional Navier-S...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
In this paper we establish a mathematical framework for a range of inverse problems for functions, g...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
We consider the inverse problem of estimating the initial condition of a partial differential equati...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
We study Bayesian data assimilation (filtering) for time-evolution Partial differential equations (P...
We consider the inverse problem of estimating an unknown function u from noisy measurements y of a k...
Inverse problems are often ill posed, with solutions that depend sensitively on data. In any numeric...