A Data-Parallel Line Relaxation Method for the Navier-Stokes Equations
by
Wright, M.J., D. Bose, and G.V. Candler
in
AIAA Journal, Vol. 36, No. 9, pp. 1603-1609, Sept., 1998.
Category: Journal Article
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Abstract:
The Gauss-Seidel line relaxation method is modified for the simulation of viscous flows on massively parallel computers. The resulting data-parallel line relaxation method is shown to have good convergence properties for a series of test cases. The new method requires significantly more memory than the previously developed data-parallel relaxation methods, but it reaches a steady-state solution in much less time for all cases tested to date. In addition, the data-parallel line relaxation method shows good convergence properties even on the high-cell-aspect-ratio grids required to simulate high-Reynolds-number flows. The new method is implemented using message passing on the Cray T3E, and the parallel performance of the method on this machine is discussed. The data-parallel line relaxation method combines the fast convergence of the Gauss-Seidel line relaxation method with a high parallel efficiency and thus shows promise for large-scale simulation of viscous flows
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