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Title page for ETD etd-04042011-195930


Type of Document Dissertation
Author Duffy, Austen C.
Author's Email Address aduffy@math.fsu.edu
URN etd-04042011-195930
Title Massively Parallel Algorithms for CFD Simulation and Optimization on Heterogeneous Many-Core Architectures
Degree Doctor of Philosophy
Department Mathematics, Department of
Advisory Committee
Advisor Name Title
Mark Sussman Committee Chair
M. Yousuff Hussaini Committee Co-Chair
Kyle Gallivan Committee Member
Nick Cogan Committee Member
Robert van Engelen University Representative
Keywords
  • Adaptive Mesh Refinement
  • High Performance Computing
  • Computational Fluid Dynamics
  • Adjoint Methods
  • Multidirectional Search
  • Multigrid
  • Graphics Processing Unit
Date of Defense 2011-03-15
Availability unrestricted
Abstract
In this dissertation we provide new numerical algorithms for use in conjunction with simulation based design codes. These algorithms are designed and best suited to run on emerging heterogenous computing architectures

which contain a combination of traditional multi-core processors and new programmable many-core graphics processing units (GPUs). We have developed the following numerical algorithms (i) a new Multidirectional Search (MDS) method for PDE constrained optimization that utilizes a Multigrid (MG) strategy to accelerate convergence, this algorithm is well suited for use on GPU clusters due to its parallel nature and is more scalable than adjoint methods (ii) a new GPU accelerated point implicit solver

for the NASA FUN3D code (unstructured Navier-Stokes) that is written in the Compute Unified Device Architecture (CUDA) language, and which employs a novel GPU sharing model, (iii) novel GPU

accelerated smoothers (developed using PGI Fortran with accelerator compiler directives) used to accelerate the multigrid preconditioned conjugate gradient method (MGPCG) on a single rectangular grid, and (iv) an improved pressure projection solver for adaptive meshes that is based on the MGPCG method which requires fewer grid point calculations and has potential for better scalability on hetergeneous clusters. It is shown that a multigrid - multidirectional search (MGMDS) method can run up

to 5.5X faster than the MDS method when used on a one dimensional data assimilation problem. It is also shown that the new GPU accelerated point implicit solver of FUN3D is up to 5.5X times

faster than the CPU version and that the solver can perform up to 40% faster on a single GPU being shared by four CPU cores. It is found that GPU accelerated smoothers for the MGPCG method on

uniform grids can run over 2X faster than the non-accelerated versions for 2D problems, and that the new MGPCG pressure projection solver for adaptive grids is up to 4X faster than the previous MG algorithm.

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