Multilevel monte carlo methods for solution of stochastic differential equations and its applications /
طرق مونت كارلو متعددة المستويات لحل المعادلات التفاضلية العشوائية وتطبيقاتها
Shady Ahmed Nagy ; Supervised Mohamed A. Elbeltagy , Mohamed Wafa
- Cairo : Shady Ahmed Nagy , 2020
- 112 P. : charts , facimiles ; 30cm
Thesis (M.Sc.) - Cairo University - Faculty of Engineering - Department of Mathematics and Physics
Monte Carlo simulation is wide using in solving stochastic differential equations. Stochastic random samples represent by different random points in Monte Carlo random generation. The development of Multilevel Monte Carlo (MLMC) introduced by Giles to simulate different stochastic differential equations on different time grids by low cost and high convergence rate, also it minimizes the variance. We simulate and compare different type of stochastic differential equations on MLMC depending on Quasi-Monte Carlo of Halton sequence. We apply MLMC in diffrent types of ordinary SDEs as additive and multiplicative one to enhance cost by changing the random sample to be generated by different quasi-random numbers. Also, we use a different type of quasi-random numbers by Component by Component (CBC) algorithm that generates different random numbers by the concept of lattice rule. When we apply it in stochastic Burgers equations, theinstability appears in simulation by doesnt achieve the decreasing in cost despite the minimum time of CBC numbers that generate the stochastic samples