Improvements for iterative methods?
Abstract
Krylov subspace methods offer good possibilities for the solution of
large sparse linear systems of equations.For general systems, some of
the popular methods often show an irregular type of convergence
behavior and one may wonder whether that could be improved or not. Many
suggestions have been made for improvement and the question arises
whether these corrections are cosmetic or not. There is also the
question whether the irregularity shows inherent numerical instability.
In such cases one should take extra care in the application of
smoothing techniques. We will discuss strategies that work well and
strategies that might have been expected to work well.
Entropy Splitting for High-Order Numerical Simulation of Compressible Turbulence
Abstract
This work forms part of a larger research project to develop efficient
low-dissipative high-order numerical techniques for high-speed
turbulent flow simulation, including shock wave interactions with
turbulence. The requirements on a numerical method are stringent.For
the turbulence the method must be capable of resolving accurately a
wide range of length scales, whilst for shock waves the method must be
stable and not generate excessive local oscillations. Conventional
methods are either too dissipative, or incapable of shock capturing.
Higher-order ENO, WENO or hybrid schemes are too expensive for
practical computations. Previous work of Yee, Sandham & Djomehri
(1999) developed high-order shock-capturing schemes which minimize the
use of numerical dissipation away from shock
waves. The objective of the present study is to further minimize the
use of numerical dissipation for shock-free compressible turbulence
simulations.
Cheap Newton steps for discrete time optimal control problems: automatic differentiation and Pantoja's algorithm
Abstract
In 1983 Pantoja described a stagewise construction of the exact Newton
direction for a discrete time optimal control problem. His algorithm
requires the solution of linear equations with coefficients given by
recurrences involving second derivatives, for which accurate values are
therefore required.
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Automatic differentiation is a set of techniques for obtaining derivatives
of functions which are calculated by a program, including loops and
subroutine calls, by transforming the text of the program.
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In this talk we show how automatic differentiation can be used to
evaluate exactly the quantities required by Pantoja's algorithm,
thus avoiding the labour of forming and differentiating adjoint
equations by hand.
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The cost of calculating the newton direction amounts to the cost of
solving one set of linear equations, of the order of the number of
control variables, for each time step. The working storage cost can be made
smaller than that required to hold the solution.
Analysis of a mean field model of superconducting vortices
Preconditioning constrained systems
Abstract
The general importance of preconditioning in combination with an
appropriate iterative technique for solving large scale linear(ised)
systems is widely appreciated. For definite problems (where the
eigenvalues lie in a half-plane) there are a number of preconditioning
techniques with a range of applicability, though there remain many
difficult problems. For indefinite systems (where there are eigenvalues
in both half-planes), techniques are generally not so well developed.
Constraints arise in many physical and mathematical problems and
invariably give rise to indefinite linear(ised) systems: the incompressible
Navier-Stokes equations describe conservation of momentum in the
presence of viscous dissipation subject to the constraint of
conservation of mass, for transmission problems the solution on an
interior domain is often solved subject to a boundary integral which
imposes the exterior field, in optimisation the appearance of
constraints is ubiquitous...
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We will describe two approaches to preconditioning such constrained
systems and will present analysis and numerical results for each. In
particular, we will describe the applicability of these techniques to
approximations of incompressible Navier-Stokes problems using mixed
finite element approximation.
Arithmetic on the European Logarithmic Microprocessor
Abstract
As an alternative to floating-point, several workers have proposed the use
of a logarithmic number system, in which a real number is represented as a
fixed-point logarithm. Multiplication and division therefore proceed in
minimal time with no rounding error. However, the system can only offer an
overall advantage if addition and subtraction can be performed with speed
and accuracy at least equal to that of floating-point, but this has
hitherto been difficult to achieve. We will present a number of original
techniques by which this has now been accomplished. We will then
demonstrate by means of simulations that the logarithmic system offers
around twofold improvements in speed and accuracy, and finally will
describe a new European collaborative project which aims to develop a
logarithmic microprocessor during the next three years.
On the convergence of an implicitly restarted Arnoldi method
Abstract
We show that Sorensen's (1992) implicitly restarted Arnoldi method
(IRAM) (including its block extension) is non-stationary simultaneous
iteration in disguise. By using the geometric convergence theory for
non-stationary simultaneous iteration due to Watkins and Elsner (1991)
we prove that an implicitly restarted Arnoldi method can achieve a
super-linear rate of convergence to the dominant invariant subspace of
a matrix. We conclude with some numerical results the demonstrate the
efficiency of IRAM.
Error bounds for a difference scheme approximating viscosity solutions of mean curvature flow
Native spaces for the classical radial basis functions and their properties
Abstract
It has been known for some while now that every radial basis function
in common usage for multi-dimensional interpolation has associated with
it a uniquely defined Hilbert space, in which the radial basis function
is the `minimal norm interpolant'. This space is usually constructed by
utilising the positive definite nature of the radial function, but such
constructions turn out to be difficult to handle. We will present a
direct way of constructing the spaces, and show how to prove extension
theorems in such spaces. These extension theorems are at the heart of
improved error estimates in the $L_p$-norm.