Numerical Simulation of Stochastic Di erential Equations


Autoria(s): Nsengiyumva, Alain Christian
Data(s)

25/11/2013

25/11/2013

2013

Resumo

Stochastic differential equation (SDE) is a differential equation in which some of the terms and its solution are stochastic processes. SDEs play a central role in modeling physical systems like finance, Biology, Engineering, to mention some. In modeling process, the computation of the trajectories (sample paths) of solutions to SDEs is very important. However, the exact solution to a SDE is generally difficult to obtain due to non-differentiability character of realizations of the Brownian motion. There exist approximation methods of solutions of SDE. The solutions will be continuous stochastic processes that represent diffusive dynamics, a common modeling assumption for financial, Biology, physical, environmental systems. This Masters' thesis is an introduction and survey of numerical solution methods for stochastic differential equations. Standard numerical methods, local linearization methods and filtering methods are well described. We compute the root mean square errors for each method from which we propose a better numerical scheme. Stochastic differential equations can be formulated from a given ordinary differential equations. In this thesis, we describe two kind of formulations: parametric and non-parametric techniques. The formulation is based on epidemiological SEIR model. This methods have a tendency of increasing parameters in the constructed SDEs, hence, it requires more data. We compare the two techniques numerically.

Identificador

http://www.doria.fi/handle/10024/93801

URN:NBN:fi-fe201311217382

Idioma(s)

en

Palavras-Chave #Stochastic differential equations #Euler-Maruyama method #Milstein method #Runge-Kutta method #Shoji-Ozaki schemes #Kalman filter #Extended Kalman filter #Epidemic models
Tipo

Master's thesis

Diplomityö