In this paper, we present a formal quantification of uncertainty induced by numerical solutions of ordinary and partial differential equation models. Numerical solutions of differential equations contain inherent uncertainties due to the finite-dimensional approximation of an unknown and implicitly defined function. When statistically analysing models based on differential equations describing physical, or other naturally occurring, phenomena, it can be important to explicitly account for the uncertainty introduced by the numerical method. Doing so enables objective determination of this source of uncertainty, relative to other uncertainties, such as those caused by data contaminated with noise or model error induced by missing physical or ...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...
In this paper, we present a formal quantification of epistemic uncertainty induced by numerical solu...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...
This paper deals with the computation of some statistics of the solutions of linear and non linear P...
This paper advocates expansion of the role of Bayesian statistical inference when formally quantifyi...
Random differential equations arise to model smooth random phenomena. The error term, instead of bei...
We study a probabilistic numerical method for the solution of both\u000A boundary and initial value ...
A novel probabilistic numerical method for quantifying the uncertainty induced by the time integrati...
In this thesis we study partial differential equations with random inputs. The effects that differen...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
We study a probabilistic numerical method for the solution of both boundary and ini-tial value probl...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...
In this paper, we present a formal quantification of epistemic uncertainty induced by numerical solu...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...
In this paper, we present a formal quantification of uncertainty induced by numerical solutions of o...
This paper deals with the computation of some statistics of the solutions of linear and non linear P...
This paper advocates expansion of the role of Bayesian statistical inference when formally quantifyi...
Random differential equations arise to model smooth random phenomena. The error term, instead of bei...
We study a probabilistic numerical method for the solution of both\u000A boundary and initial value ...
A novel probabilistic numerical method for quantifying the uncertainty induced by the time integrati...
In this thesis we study partial differential equations with random inputs. The effects that differen...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
We study a probabilistic numerical method for the solution of both boundary and ini-tial value probl...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involv...