Many real world problems are so complex that simplifications of these problems are needed. Otherwise the computing costs would be so high that specific problems, for example uncertainty quantification, could not be solved. In this paper we consider a system of coupled ODEs and discretise the subsystems in time with adaptive high order Runge–Kutta methods. This approach is called ”partitioned method”, and we use a Block Gauss-Seidel method for solving the final linear or non-linear systems. The motivation for using high order methods is the computation of very accurate numerical results. Moreover, these time integration methods are more effective than lower order methods, and in the case of the partitioned approach they need l...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
The important task of evaluating the impact of random parameters on the output of stochastic ordinar...
A novel probabilistic numerical method for quantifying the uncertainty induced by the time integrati...
Many real world problems are so complex that simplifications of these problems are needed. Otherw...
This thesis presents a reliable and efficient algorithm for combined model uncertainty and discretiz...
This thesis presents a reliable and efficient algorithm for combined model uncertainty and discretiz...
Abstract. Over the last few years there have been dramatic advances in our understanding of mathemat...
Abstract. Recently there has been a growing interest in designing efficient methods for the so-lutio...
This paper presents an iterative and decoupled perturbative stochastic Galerkin (SG) method for the ...
The stochastic Galerkin finite element method provides a powerful tool for computing high-order stoc...
Conservation laws with uncertain initial and boundary conditions are approximated using a generalize...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
We consider Uncertainty Quanti¿cation (UQ) by expanding the solution in so-called generalized Polyno...
We consider Uncertainty Quantification (UQ) by expanding the solution in so-called generalized Polyn...
We consider Uncertainty Quantification (UQ) by expanding the solution in so-called generalized Polyn...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
The important task of evaluating the impact of random parameters on the output of stochastic ordinar...
A novel probabilistic numerical method for quantifying the uncertainty induced by the time integrati...
Many real world problems are so complex that simplifications of these problems are needed. Otherw...
This thesis presents a reliable and efficient algorithm for combined model uncertainty and discretiz...
This thesis presents a reliable and efficient algorithm for combined model uncertainty and discretiz...
Abstract. Over the last few years there have been dramatic advances in our understanding of mathemat...
Abstract. Recently there has been a growing interest in designing efficient methods for the so-lutio...
This paper presents an iterative and decoupled perturbative stochastic Galerkin (SG) method for the ...
The stochastic Galerkin finite element method provides a powerful tool for computing high-order stoc...
Conservation laws with uncertain initial and boundary conditions are approximated using a generalize...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
We consider Uncertainty Quanti¿cation (UQ) by expanding the solution in so-called generalized Polyno...
We consider Uncertainty Quantification (UQ) by expanding the solution in so-called generalized Polyn...
We consider Uncertainty Quantification (UQ) by expanding the solution in so-called generalized Polyn...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
The important task of evaluating the impact of random parameters on the output of stochastic ordinar...
A novel probabilistic numerical method for quantifying the uncertainty induced by the time integrati...