Monte Carlo Algorithm for Solving Integral Equations with Polynomial Non-Linearity. Parallel Implementation


Autoria(s): Dimov, Ivan; Gurov, Todor
Data(s)

10/12/2013

10/12/2013

2000

Resumo

An iterative Monte Carlo algorithm for evaluating linear functionals of the solution of integral equations with polynomial non-linearity is proposed and studied. The method uses a simulation of branching stochastic processes. It is proved that the mathematical expectation of the introduced random variable is equal to a linear functional of the solution. The algorithm uses the so-called almost optimal density function. Numerical examples are considered. Parallel implementation of the algorithm is also realized using the package ATHAPASCAN as an environment for parallel realization.The computational results demonstrate high parallel efficiency of the presented algorithm and give a good solution when almost optimal density function is used as a transition density.

Supported by the Ministry of Education, Science and Technology of Bulgaria under Grants # MM 449/94 and # I 501/95 as well as by EC under INCO-Copernicus Project #960237 - STABLE.

Identificador

Pliska Studia Mathematica Bulgarica, Vol. 13, No 1, (2000), 117p-132p

0204-9805

http://hdl.handle.net/10525/2165

Idioma(s)

en

Publicador

Institute of Mathematics and Informatics Bulgarian Academy of Sciences

Palavras-Chave #Monte Carlo Algorithm #Almost Optimal Density Function
Tipo

Article