Abstract :
In this article we survey r-adaptive (or moving grid) methods for solving timedependent
partial differential equations (PDEs). Although these methods
have received much less attention than their h- and p-adaptive counterparts,
particularly within the finite element community, we review the substantial
progress that has been made in developing more robust and reliable algorithms
and in understanding the basic principles behind these methods, and
we give some numerical examples illustrative of the wide classes of problems
for which these methods are suitable alternatives to the traditional ones.
More specifically, we first examine the basic geometric properties of moving
meshes in both one and higher spatial dimensions, and discuss the discretization
process for PDEs on such moving meshes (both structured and unstructured).
In particular, we consider the issues of mesh regularity, equidistribution,
alignment, and associated variational methods. An overview is given of
the general interpolation error analysis for a function or a truncation error
on such an adaptive mesh. Guided by these principles, we show how to design
effective moving mesh strategies. We then examine in more detail how
these strategies can be implemented in practice. The first class of methods
which we consider are based upon controlling mesh density and hence are
called position-based methods. These make use of a so-called moving mesh
PDE (MMPDE) approach and variational methods, as well as optimal transport
methods. This is followed by an analysis of methods which have a more
Lagrange-like interpretation, and due to this focus are called velocity-based
methods. These include the moving finite element method (MFE), the geometric
conservation law (GCL) methods, and the deformation map method.
Finally, we present a number of specific types of examples for which the use of
a moving mesh method is particularly effective in applications. These include
scale-invariant problems, blow-up problems, problems with moving fronts and
problems in meteorology. We conclude that, whilst r-adaptive methods are
still in their relatively early stages of development, with many outstanding
questions remaining, they have enormous potential and indeed can produce
an optimal form of adaptivity for many problems