Title: Spring 2003
1MA557/MA578/CS557Lecture 32
- Spring 2003
- Prof. Tim Warburton
- timwar_at_math.unm.edu
2Heat Equation
- Recall Lecture 17 where we derived the
advection-diffusion equation in 1D. - The same type of derivation for the diffusion
process of a concentrate C yields in 2D
3Discretization of the Laplacian
- The LDG, semidiscrete, equation satisfies
- Zero Dirichlet boundary conditions (concentration
pinned to zero at boundary) - Zero Neumann boundary conditions (insulated
boundaries)
4Heat Equation
- Our first approach will be an explicit time
integration of the equation (using zero Neumann
bc)
5Explicit Numerical Heat Equation
- The trouble is that the discrete diffusion matrix
has a large spectral radius - We do know that (using the integration by parts
formula for the DG operator) that the operator is
non-positive. - We also need to fit the eigenspectrum in the
appropriate stability region
6(No Transcript)
7We also know that all the eigenvalues are
non-positive real numbers and dtrho(A) must fit
in the stability region..
8Comment
- We have shown that using an explicit time
integration scheme may require very small time
steps - The root cause of this is that information
diffuses through the data domain very quickly.. - We will investigate some schemes which solve
globally coupled systems.
9Backwards Euler Time Integration
- Suppose we consider the backwards Euler scheme
- Iterator
10Backwards Euler Time Integration
- Suppose we consider the backwards Euler scheme
- Thus the only conditions for stability are
- However, accuracy depends on dt. The
discretization of the time derivative has a first
order truncation error
11Crank-Nicholson
- We replace the right hand side of the discrete
scheme with
12Diagonalize
- If we apply a change of basis so that the
inv(M)L is diagonal then we decouple the
iterator into a sequence of independent scalar
iterators
13Quick Result
- We can bound the iteration multiplier
- As long as both the eigenvalues and dt are
non-negative then the multiplier is bounded by
one and the scheme is stable. - We have previously shown that L is a non-negative
operator.
14Crank-Nicholson Accuracy
- We can briefly compute the temporal accuracy
15ESDIRK4
- A new implicit RK scheme with a lower triangle
Butcher tableau has been proposed by Carpenter et
al. http//fun3d.larc.nasa.gov/papers/carpenter.pd
f - The linear system to invert at each sub stage is
the same. - The RK scheme comes with an embedded scheme to
provide sth order and (s-1)th order time
approximations
164th Order ESDIRK4 Implicit RK Schemeinitializer
5 stages
- Iterator (Ctilde are intermediate values of C,
Chat6 is the embedded 3rd order approximation of
Cn1)
174th Order ESDIRK4 Implicit RK Scheme
- Iterator (Ctilde are intermediate values of C,
Chat5 is the embedded 3rd order approximation of
Cn1)
184th Order ESDIRK4 Implicit RK Scheme
- If L is a linear operator then
19Coefficients
- Gamma 1/4
- a21 1/4
- a31 8611/62500
- a32 -1743/31250
- a41 5012029/34652500
- a42 -654441/2922500
- a43 174375/388108
- a51 15267082809/155376265600
- a52 -71443401/120774400
- a53 730878875/902184768
- a54 2285395/8070912
b1 82889/524892 b2 0 b3
15625/83664 b4 69875/102672 b5 -2260/8211
bhat1 4586570599/29645900160 bhat2 0 bhat3
178811875/945068544 bhat4 814220225/1159782912
bhat5 -3700637/11593932 bhat6 61727/225920
20Implementation Details
- As they are computed we are required to store
Ctilde1, Ctilde2, , Ctilde6 until the end of the
6th ESDIRK stage. - Each stage 2,3,4,5,6 requires the solution of the
same linear system, with different data on the
right hand side. - Chat6 may be computed without solving a linear
system. - The systems can be solved using an iterative (say
conjugate gradient) method. i.e. the L matrix
does not need to be computed and stored. - We need to be able to compute (MdtgammaL)x
for a given vector x. - Ctilde6-Chat6 will give an estimate of the
difference between a 3rd order and the 4th order
approximation in time. This can be used to
estimate the error made in this time step and can
suggest a change in dt.
21Solving the System
- We are going to use an iterative method to solve
the following sequence of symmetric matrix
problems
22Summary of Temporal Implicit Schemes
- Backwards Euler is unconditionally stable for
non-negative diffusion parameter D (i.e. any
dtgt0) and first order in dt. - Crank-Nicholson is unconditionally stable for
non-negative diffusion parameter D (i.e. any
dtgt0) and second order in dt. - ESDIRK4 generalizes to fourth order in dt.
23Homework 10
- Q1) Modify/use the umDIFFUSION.zip files to solve
the diffusion equation with the following time
integrators - a) Backwards Euler
- b) Crank-Nicholsonc) ESDIRK4
- Q2) Create a domain and determine convergence
rates in h for p1,3,5,7 for a small dt (i.e.
make sure the convergence does not bottom out
above 1e-10). Repeat for two of the above time
integrators. - Q3) Choose p7 and h small and verify rates of
convergence in dt for integration to some fixed
time T. Use the one time integrator you did not
use in Q2.
24Homework 10
- This homework can be completed in pairs or
individually. - This homework is due Monday 04/21/03
- Remember no more than 5 email questions will be
replied to for this homework.
25Driver for Backwards Euler Diffusion
Scheme(umDIFFUSIONdemo.m)
26Time Loop (umDIFFUSIONrun.m)
- 1-12) Set parameters
- 14-16) Set initial conditions
- 19) Set solver parameters
- 22-40) Time stepping loop
- 28) Solves linear system using conjugate
gradient - 32-40) Plot solution and compute integral
of C
27umDIFFUSIONop.m
- Set up storage for computing (MC dtgammaD
LC)
28umDIFFUSIONop.m
- 15-25) compute qx,qy using Neumann bcs
- 27-40) compute div(qx,qy) using Dirichlet
bcs - 42-48) compute (MCgammadtDLC)
29Demo Run
30Discussion of Final Project
- Now is the time to ready your final projects.
- Submit a one page description of the PDE you
intend to discretize with DG by 04/21/03 - This is a proposal and may be rejected
requiring a resubmission or assignment of a set
of PDEs. - Include
- List of PDEs to be discretized
- List boundary conditions and initial conditions
to be discretized - Relevance to your own research (if any)
- List of group members (max 3, with one proposal
per group) - Interesting issues (application of PML, creation
of specific PML, specific physical
application/model)