This paper develops meshless methods for probabilistically describing discretisation error in the numerical solution of partial differential equations. This construction enables the solution of Bayesian inverse problems while accounting for the impact of the discretisation of the forward problem. In particular, this drives statistical inferences to be more conservative in the presence of significant solver error. Theoretical results are presented describing rates of convergence for the posteriors in both the forward and inverse problems. This method is tested on a challenging inverse problem with a nonlinear forward model
The Bayesian approach to inverse problems, in which the posterior probability distribution on an unk...
The interpretation of numerical methods, such as finite difference methods for differential equation...
We present a novel probabilistic finite element method (FEM) for the solution and uncertainty quanti...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
This paper develops a probabilistic numerical method for solution of partial differential equations ...
This paper develops a probabilistic numerical method for solution of partial differential equations ...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
© 2017 Author(s). This paper develops meshless methods for probabilistically describing discretisati...
The numerical solution of differential equations can be formulated as an inference problem to which ...
Numerical analysis of Bayesian inverse problems for hyperbolic partial differential equations is ana...
The local size of computational grids used in partial differential equation (PDE)-based probabilisti...
© 2019 Society for Industrial and Applied Mathematics. Over forty years ago average-case error was p...
The numerical solution of differential equations can be formulated as an inference problem to which ...
Several classes of MCMC methods for the numerical solution of Bayesian Inverse Problems for partial ...
The Bayesian approach to inverse problems, in which the posterior probability distribution on an unk...
The interpretation of numerical methods, such as finite difference methods for differential equation...
We present a novel probabilistic finite element method (FEM) for the solution and uncertainty quanti...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
This paper develops a probabilistic numerical method for solution of partial differential equations ...
This paper develops a probabilistic numerical method for solution of partial differential equations ...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
This paper develops meshless methods for probabilistically describing discretisation error in the nu...
© 2017 Author(s). This paper develops meshless methods for probabilistically describing discretisati...
The numerical solution of differential equations can be formulated as an inference problem to which ...
Numerical analysis of Bayesian inverse problems for hyperbolic partial differential equations is ana...
The local size of computational grids used in partial differential equation (PDE)-based probabilisti...
© 2019 Society for Industrial and Applied Mathematics. Over forty years ago average-case error was p...
The numerical solution of differential equations can be formulated as an inference problem to which ...
Several classes of MCMC methods for the numerical solution of Bayesian Inverse Problems for partial ...
The Bayesian approach to inverse problems, in which the posterior probability distribution on an unk...
The interpretation of numerical methods, such as finite difference methods for differential equation...
We present a novel probabilistic finite element method (FEM) for the solution and uncertainty quanti...