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Phuong Huynh, MIT: New
Software Drives Supercomputing on Cell Phone
September 1, 2010
Many engineering disciplines rely on
supercomputers to simulate complicated physical phenomena — how cracks
form in building materials, for instance, or fluids flow through
irregular channels. Now, researchers in MIT’s Department of Mechanical
Engineering have developed software that can perform such simulations on
an ordinary smart phone. Although the current version of the software is
for demonstration purposes, the work could lead to applications that let
engineers perform complicated calculations in the field, and even to
better control systems for vehicles or robotic systems.
New software that runs
on a smart phone can approximate in seconds computations that would take
a supercomputer hours. The software works for problems whose form is
know but whose particulars aren't; slider bars allow users to set the
values for which they want the problems solved. Image courtesy of David
Knezevic and Dinh Bao Phuong Huynh
The new software works in cases where the general form of a problem is
known in advance, but not the particulars. For instance, says Phuong
Huynh, a postdoc who worked on the project, a computer simulation of
fluid flow around an obstacle in a pipe could depend on a single
parameter: the radius of the obstacle. But for a given value of the
parameter, calculating the fluid flow could take an hour on a
supercomputer with 500 processing units. The researchers’ new software
can provide a very good approximation of the same calculation in a
matter of seconds.
“This is a very relevant situation,” says David Knezevic, another
postdoc in the department who helped lead the project. “Often in
engineering contexts, you know a priori that your problem is
parameterized, but you don’t know until you get into the field what
parameters you’re interested in.”
Each new problem the researchers’ software is called upon to solve
requires its own mathematical model. The models, however, take up very
little space in memory: A cell phone could hold thousands of them. The
software, which is available for download, comes preloaded with models
for nine problems, including heat propagation in objects of several
different shapes, fluid flow around a spherical obstacle, and the
effects of forces applied to a cracked pillar. As the researchers
develop models for new classes of problems, they post them on a server,
from which they can be downloaded.
Advance work
But while the models are small, creating them is a complicated process
that does in fact require a supercomputer. “We’re not trying to replace
a supercomputer,” Knezevic says. “This is a model of computation that
works in conjunction with supercomputing. And the supercomputer is
indispensable.”
Knezevic, his fellow postdoc Phuong Huynh, and Ford Professor of
Engineering Anthony T. Patera describe their approach in a forthcoming
issue of the journal Computers and Fluids. Once they have identified a
parameterized problem, they use a supercomputer to solve it for
somewhere between 10 and 50 different sets of values. Those values,
however, are carefully chosen to map out a large space of possible
solutions to the problem. The model downloaded to a smart phone finds an
approximate solution for a new set of parameters by reference to the
precomputed solutions.
The key to the system, Knezevic says, is the ability to quantify the
degree of error in an approximation of a supercomputing calculation, a
subject that Patera has been researching for almost a decade. As the
researchers build a problem model, they select parameters that will
successively minimize error, according to analytic techniques Patera
helped developed. The calculation of error bounds is also a feature of
the phone application itself. For each approximate solution of a
parameterized problem, the app also displays the margin of error. The
user can opt to trade speed of computation for a higher margin of error,
but the app can generally get the error under 1 percent in less than a
second.
Turning the tables
While the researchers’ software can calculate the behavior of a physical
system on the basis of its parameters, it could prove even more useful
by doing the opposite: calculating the parameters of a physical system
on the basis of its behavior. Instead of, say, calculating fluid flow
around an obstacle based on the obstacle’s size, the software could
calculate the size of the obstacle based on measurements of the fluid
flow at the end of a pipe. Ordinarily, that would require several
different computations on a supercomputer, trying out several different
sets of parameters. But if testing, say, 30 options on a supercomputer
would take 30 hours, it might take 30 seconds on a phone. Indeed, the
researchers have already developed a second application that calculates
such “inverse problems.”
In
the same way that a simulation of a physical system describes its
behavior on the basis of parametric measurements, control systems, of
the type that govern, say, automotive brake systems or autonomous
robots, determine devices’ behavior on the basis of sensor measurements.
Control-systems researchers spend a great deal of energy trying to come
up with practical approximations of complex physics in order to make
their systems responsive enough to work in real time. But Knezevic,
Huynh and Patera’s approach could make those approximations both more
accurate and easier to calculate.
Max Gunzberger, Frances Eppes Eminent Professor of Scientific Computing
at Florida State University says that the MIT researchers’ work has a
“cuteness aspect” that has already won it some attention. But “once you
get over the cuteness factor,” he says, “if you talk about serious
science or serious engineering, there’s a potential there,” Gunzberger
points out that while the researchers’ demo concentrates on fluid
mechanics, “there’s lots of other problems that their approach can be
applied to. They built the structure that they themselves or others can
start using to solve problems in different application areas.” |