by Thomas Sumner, Simons
Foundation
JUNE 26, 2019
For the first time,
astrophysicists have used artificial intelligence techniques to generate
complex 3-D simulations of the universe. The results are so fast, accurate and
robust that even the creators aren't sure how it all works.
"We can run these
simulations in a few milliseconds, while other 'fast' simulations take a couple
of minutes," says study co-author Shirley Ho, a group leader at the
Flatiron Institute's Center for Computational Astrophysics in New York City and
an adjunct professor at Carnegie Mellon University. "Not only that, but
we're much more accurate."
The speed and accuracy of the
project, called the Deep Density Displacement Model, or D3M for short, wasn't
the biggest surprise to the researchers. The real shock was that D3M could
accurately simulate how the universe would look if certain parameters were
tweaked—such as how much of the cosmos is dark matter—even though the model had
never received any training data where those parameters varied.
"It's like teaching image
recognition software with lots of pictures of cats and dogs, but then it's able
to recognize elephants," Ho explains. "Nobody knows how it does this,
and it's a great mystery to be solved."
Ho and her colleagues present
D3M June 24 in the Proceedings of the National Academy of Sciences. The
study was led by Siyu He, a Flatiron Institute research analyst.
Ho and He worked in
collaboration with Yin Li of the Berkeley Center for Cosmological Physics at
the University of California, Berkeley, and the Kavli Institute for the Physics
and Mathematics of the Universe near Tokyo; Yu Feng of the Berkeley Center for
Cosmological Physics; Wei Chen of the Flatiron Institute; Siamak Ravanbakhsh of
the University of British Columbia in Vancouver; and Barnabás Póczos of
Carnegie Mellon University.
Computer simulations like
those made by D3M have become essential to theoretical astrophysics. Scientists
want to know how the cosmos might evolve under various scenarios, such as if
the dark energy pulling the universe apart varied over time. Such studies
require running thousands of simulations, making a lightning-fast and highly
accurate computer model one of the major objectives of modern astrophysics.
D3M models how gravity shapes
the universe. The researchers opted to focus on gravity alone because it is by
far the most important force when it comes to the large-scale evolution of the
cosmos.
The most accurate universe
simulations calculate how gravity shifts each of billions of individual
particles over the entire age of the universe. That level of accuracy takes
time, requiring around 300 computation hours for one simulation. Faster methods can
finish the same simulations in about two minutes, but the shortcuts required
result in lower accuracy.
Ho, He and their colleagues
honed the deep neural
network that powers D3M by feeding it 8,000 different simulations from
one of the highest-accuracy models available. Neural networks take training
data and run calculations on the information; researchers then compare the
resulting outcome with the expected outcome. With further training, neural networks adapt
over time to yield faster and more accurate results.
After training D3M, the
researchers ran simulations of a box-shaped universe 600 million
light-years across and compared the results to those of the slow and fast
models. Whereas the slow-but-accurate approach took hundreds of hours of
computation time per simulation and the existing fast method took a couple of
minutes, D3M could complete a simulation in just 30 milliseconds.
D3M also churned out accurate
results. When compared with the high-accuracy model, D3M had a relative error
of 2.8 percent. Using the same comparison, the existing fast model had a
relative error of 9.3 percent.
D3M's remarkable ability to
handle parameter variations not found in its training data makes it an
especially useful and flexible tool, Ho says. In addition to modeling other
forces, such as hydrodynamics, Ho's team hopes to learn more about how the
model works under the hood. Doing so could yield benefits for the advancement
of artificial intelligence and machine learning, Ho says.
"We can be an interesting
playground for a machine learner to use to see why this model extrapolates so
well, why it extrapolates to elephants instead of just recognizing cats and
dogs," she says. "It's a two-way street between science and deep
learning."
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