Upcoming Events
Surrogate Approximation of the Grad-Shafranov Free Boundary Problem via Stochastic Collocation on Sparse Grids
Aug 27, 2021, 10:00 - 11:00 AM
Dear all,
After a short break, we will resume CMAI activities starting next week, in particular our weekly Colloquium. Our first speaker for Fall 2021 is Prof. Howard Elman (University of Maryland). More details about the talk and the zoom link are available below. Thanks to all our distinguished speakers, we now have over 1000 registered participants (and growing) in our Colloquium.
The next CMAI Colloquium will be on
Date: | Friday August 27, 2021 at 10:00 am (Eastern Time) |
Speaker: | Department of Computer Science, Institute for Advanced Computer Studies (UMIACS) University of Maryland College Park |
Title: | Surrogate Approximation of the Grad-Shafranov Free Boundary Problem via Stochastic Collocation on Sparse Grids |
Zoom Link: | |
Abstract: | In magnetic confinement fusion devices, the equilibrium configuration of a plasma is determined by the balance between the hydrostatic pressure in the fluid and the magnetic forces generated by an array of external coils and the plasma itself. The location of the plasma is not known a priori and must be obtained as the solution to a free boundary problem. The partial differential equation that determines the behavior of the combined magnetic field depends on a set of physical parameters (location of the coils, intensity of the electric currents going through them, magnetic permeability, etc.) that are subject to uncertainty and variability. The confinement region is in turn a function of these stochastic parameters as well. In this work, we consider variations on the current intensities running through the external coils as the dominant source of uncertainty. This leads to a parameter space of dimension equal to the number of coils in the reactor. With the aid of a surrogate function built on a sparse grid in parameter space, a Monte Carlo strategy is used to explore the effect that stochasticity in the parameters has on important features of the plasma boundary. The use of the surrogate function reduces the time required for the Monte Carlo simulations by factors that range between 7 and over 30. Joint work with Jiaxing Liang (Applied Mathematics Program, University of Maryland) and Tonatiuh Sánchez-Vizuet (Department of Mathematics, University of Arizona). |