The Finite Element Method for Fractional Order Viscoelasticity and the Stochastic Wave Equation
                
                        Doktorsavhandling, 2009
                
            
                    
                        This thesis can be considered as two parts. 
In the first part a hyperbolic type integro-differential 
equation with weakly singular kernel is considered, 
which is a model for dynamic fractional order viscoelasticity. In the second part, the finite element 
approximation of the linear stochastic wave equation is 
studied. The link between these two equations is that they 
are both treated as perturbations of the linear wave equation. 
Our study in the first part comprises investigating 
well-posedness of the model, and the analysis of the 
finite element approximation of the solution of the 
model problem. The equation, with homogeneous mixed 
Dirichlet and Neumann boundary conditions, is reformulated 
as an abstract Cauchy problem, and existence, uniqueness 
and regularity are  verified in the context of linear 
semigroup theory. From a practical viewpoint, the 
problems with mixed  homogeneous Dirichlet and non-homogeneous Neumann boundary conditions are of special 
importance. Therefore, the Galerkin method is used to prove 
existence, uniqueness and regularity of the solution of 
this type of problem. Then two variants of the continuous 
Galerkin finite element method are applied to the model 
problem. Stability properties of the discrete and the 
continuous problem are investigated. These are then used 
to obtain optimal order a priori estimates and global a 
posteriori error estimates. In a general framework, a 
space-time cellwise a posteriori error representation is 
also presented. The theory is illustrated by an example. 
The second part concerns the study of the semidiscrete 
finite element approximation of the linear stochastic wave 
equation with additive noise in a semigroup framework. 
Optimal error estimates for the deterministic problem are 
obtained under minimal regularity assumptions. 
These are used to prove strong convergence estimates for 
the stochastic problem. The theory presented here applies 
to multi-dimensional domains and correlated noise. 
Numerical examples illustrate the theory.
                    
                    
                            
                                linear viscoelasticity
                            
                            
                                continuous Galerkin method
                            
                            
                                fractional order viscoelasticity
                            
                            
                                Wiener process
                            
                            
                                fractional calculus
                            
                            
                                a posteriori error estimate
                            
                            
                                weakly singular kernel
                            
                            
                                a priori error estimate
                            
                            
                                stability
                            
                            
                                stochastic wave equation
                            
                            
                                finite element method
                            
                            
                                additive noise
                            
                            
                                strong convergence.
                            
                     
             
            
                    
                    
                        
                            
                        room Pascal, Department of Mathematical Sciences, Chalmers Tvargata 3, Chalmers University
                            Opponent: Dr. Omar Lakkis, Department of Mathematics, University of Sussex, England.