ALBUQUERQUE,
N.M. — Taking issue with the perception that computer
models lack realism, a Sandia National Laboratories
researcher told his audience that simulations of
the nanoscale provide researchers more detailed results — not
less — than experiments alone.
The invited talk by Eliot Fang was delivered to
members of the Materials Research Society at its
recent semiannual general meeting.
Sandia is a National Nuclear Security Administration
laboratory.
Fang
derided the pejorative “garbage in, garbage
out” description of computer modeling — the belief
that inputs for computer simulations are so generic
that outcomes fail to generate the unexpected details
found only by actual experiment.
Fang
not only denied this truism but reversed it. “There's
another, prettier world beyond what the SEM [scanning
electron microscope] shows, and it's called simulation,” he
told his audience. “When you look through a microscope,
you don't see some things that modeling and simulation
show.”
This
change in the position of simulations in science — from
weak sister to an ace card — is a natural outcome
of improvements in computing, Fang says. “Fifteen
years ago, the Cray YMP [supercomputer] was the crown
jewel; it's now equivalent to a PDA we have in our
pocket.”
No
one denies that experiments are as important as
simulations — “equal partners, in fact,” says
Julia Phillips, director of Sandia's Physical, Chemical,
and Nanosciences Center.
But the Labs' current abilities to run simulations
with thousands, millions, and even billions of atoms
have led to insights that would otherwise not have
occurred, Fang says.
For example, one simulation demonstrated that a
tiny but significant amount of material had transferred
onto the tip of an atomic force microscope (AFM)
as it examined the surface of a microsystem.
“The probe tip changed something very, very tiny
on the surface of the material,” says Fang. “It was
almost not noticeable. But the property of the surface
became very different.”
Laboratory observation couldn't identify the cause
of the property change, but computer simulations
provided a reasonable explanation of the results.
As
for predicting the reliability of materials that
coat surfaces, Fang says, “We find that when we
compare our simulation models with data from the
experiments, we get a more complete understanding.”
Says
Sandia Fellow and materials researcher Jeff Brinker, “We
use simulations quite a bit in support of Sandia's
water purification program and the NIH Nano-Medicine
Center program. In all these cases I'm working
with theorists and modelers to guide the design
of synthetic nanopores so as to develop transport
behaviors approaching those of natural water or
ion channels that exist in cell membranes.”
How is this understanding achieved?
Models computationally link a variety of size and
time scales to create an experimental design.
“We use as much experimental information as possible
to validate our methods,” says Alex Slepoy from Sandia's
Multiscale Computational Materials Methods. “The
trick is picking a correct modeling strategy from
our toolbox of methods.”
Asked
whether simulations are merely more complex versions
of what a graphic artist produces — a product
of the imagination, in short, that cannot accurately
produce new details — Slepoy provisionally entertains
the idea: “A graphic artist has to make choices that
are somewhat subconscious: what size objects to represent,
how close-in to zoom, what details to include and
exclude, and are there people out there who liked
what he drew. So do we.
“But
there the similarity ends. For us in computer simulations,
the questions are more technical: Does the modeling
strategy agree with experiments and is it consistent
with established models? Does it have mathematical
consistency?”
A
further advance in accurate model development,
he says, is that “now we're developing automated
methods to tell us whether we've satisfied [accuracy]
requirements, rather than doing that by just manually
looking at results. The method automatically tunes
the model to satisfy the entire set of conditions
as we know them.”
There
is also the matter of cost, says Fang: “With
smart people developing numerical methods, models,
and algorithms to use computers to study real cases,
we find we can rerun calculations merely by changing
computer parameters. Thus the cost to push science
forward is much cheaper than running experiments — particularly
in nanoscience, where the realm is so small that
experiments are difficult to perform, testing devices
are not available, and data acquisition is a challenge.”
For
all these reasons, he says, “This is why at
CINT [the Sandia/Los Alamos Center for Integrated
Nanotechnology, funded by DOE's Office of Science],
theory and simulation is one of its five thrusts.
People view modeling and simulation as a critical
component of nanoscience.”
“We need to sit back and put our mindset in a different
mode,” he told his audience. “We're all too busy
doing [laboratory] research [instead of considering]
how we can leverage resources to push our science
to the next level.”
Modeling tools include: meso-scale (an intermediate
resolution capability functioning between the atomic
and macro scales), classical atomistics (classical
force-field theory), Density Functional Theory (a
one-electron approximation of quantum theory, where
an electron interacts with atoms but not with another
electron), and the full quantum model (electrons
interacting with other electrons and four or five
ions).
Sandia
is a multiprogram laboratory operated by Sandia
Corporation, a Lockheed Martin company, for the
U.S. Department of Energy's National Nuclear
Security Administration. Sandia has major R&D
responsibilities in national security, energy and
environmental technologies, and economic competitiveness.
Sandia news media contact: Neal Singer, nsinger@sandia.gov ,
(505) 845-7078 |