June 12, 2007
NEW ORNL THEORY AIMS TO EXPLAIN
RECENT TEMPERATURE, CLIMATE EXTREMES
Using
an ocean of data, sophisticated mathematical models and supercomputing
resources, researchers at the Department of Energy's Oak Ridge National
Laboratory are putting climate models to the test with particular focus
on
weather extremes.
Ultimately,
the new methodology developed by Auroop Ganguly and colleagues could
help
determine to what extent there is a connection between human activity
and
climate change. For now, however, researchers are concentrating on how
climate
models fare when compared to actual observations recorded between 1940
and 2005
and whether there are any connections between the extremes.
"Once
we understand the nature of these connections our hope is that we will
be able
to determine if there is a relation between two extreme weather events
- like
heat waves and droughts," said Ganguly, a member of the Computational
Sciences and Engineering Division. "We may then be able to determine
whether there will be more intense storms, hurricanes or floods, and
this
information could perhaps be used as an early warning tool or to help
develop
policies."
While
traditional climate models may not be especially useful for predicting
extremes
in general and rainfall extremes in particular, the statistical
approach
outlined in the journal Advances in Water Resources represents a big
step in
the direction of modeling rainfall extremes from observations and
climate model
simulations. Ganguly, who led the research team, believes the technique
opens a
world of possibilities.
"The
methodology can have widespread use," Ganguly said. "In addition to
water resources, hydrologic sciences, climate and ecology, the
applications can
include geospatial intelligence and security."
Using
this new tool, researchers can relate extremes of a space and time
variable
like a 100-year rainfall at two locations or two time periods as well
as relate
the extremes of two or more variables such as 100-year precipitation
extremes
and heat waves. A 100-year event is one of such magnitude that over a
long
period of time - much longer than 100 years - the average time between
such
events is equal or greater to 100 years.
"For
example," Ganguly said, "if 100-year events at two locations occur
simultaneously, and if our measure says they are completely
independent, then
their simultaneous occurrence becomes a 100 times 100 -- or 10,000-year
event
-- and therefore can be used to predict change more confidently. If,
however,
our method says the events at the two locations are completely
dependent, then
the simultaneous occurrence remains a 100-year event overall."
In
the paper, the researchers use this new approach to evaluate the
performance of
climate model simulations in terms of rainfall extremes, looking
specifically
at the dependence structure among these extremes. What they found is
that while
the dependence patterns appear to be visually similar and have
significant
commonalities, important differences do exist in terms of the
magnitude, extent
and directionality of the dependence.
Additional
authors of the paper are Gabriel Kuhn and Shiraj Khan, who completed
most of
the work as postgraduates at ORNL's Computational Sciences and
Engineering
Division, and Marcia Branstetter of the Computer Science and
Mathematics
Division. The research was funded by ORNL's Laboratory Directed
Research and
Development program. UT-Battelle manages Oak Ridge National Laboratory
for the
Department of Energy.
##
Contact:
Ron Walli
wallira@ornl.gov
865-576-0226
DOE/Oak Ridge
National Laboratory
This
text derived from:
http://www.ornl.gov/info/press_releases/get_press_release.cfm?ReleaseNumber=mr20070612-00
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