Author/Authors :
G.، نويسنده , , S. Chen; Christenson، نويسنده , , John M.; D.، نويسنده , , Y. Yang، نويسنده ,
Abstract :
Two preconditioned transpose-free quasi-minimal residual methods
(TFQMR) (Freund, SIAM J. Sci. Stat. Comput. 14, 470 1993) and quasiminimal
residual variant of the biconjugate gradient stabilized algorithm
(QMRCGSTAB) (Chan et ai., SIAM J. Sci. Stat. Comput. IS. 338 1994) are
applied to solve the non-symmetric linear systems of equations which are
derived from the time dependent two-dimensional two-energy-group neutron
diffusion equations by finite difference approximation. We compare the
TFQM Rand QM RCGST AB methods with the other popular method such as
the generalized minimal residual method (GMRES), the conjugate gradient
square method (CGS), and biconjugate gradient stabilized algorithm (BiCGST
AB). In order to accelerate the TFQM Rand QM RCGST AB we use the
preconditioning technique. Two of the preconditioners are based on pointwise
incomplete factorization: the incomplete factorization (ILU) and the modified
incomplete factorization (MILU). Another two based on the block tridiagonal
structure of the coefficient matrix are blockwise and modified blockwise
incomplete factorizations, BILU and MBlLU which are suitable for the system
of partial differential equations such as two-energy-group neutron diffusion
equations. Finally, the last two are the alternating-direction implicit (ADI)
and block successive overrelaxation (BSOR) preconditioners which are derived
from the basic iterative schemes. Comparisons are made by these methods
combined with different preconditioners to solve a sequence of time steps
reactor transient problems. Numerical results indicate that the preconditioner
significantly affects the convergent rate TFQMR and QMRCGST AB methods
in three typical reactor kinetics test problems. Numerical experiments indicate
that preconditioned QMRCGST AB with the preconditioner MBILU requires
fewer iterations than other methods in the three typical reactor kinetics test
problems. Moreover, numerical results indicate that a good preconditioner can
significantly improve the total iteration number (i.e. rate of convergence) of
these generalized conjugate gradient methods, TFQM R, QM RCGST AB, CGS,