Automated Knowledge Discovery From Simulators

TBMG-2035

07/01/2007

Abstract
Content

A computational method, SimLearn, has been devised to facilitate efficient knowledge discovery from simulators. Simulators are complex computer programs used in science and engineering to model diverse phenomena such as fluid flow, gravitational interactions, coupled mechanical systems, and nuclear, chemical, and biological processes. SimLearn uses active-learning techniques to efficiently address the “landscape characterization problem.” In particular, SimLearn tries to determine which regions in “input space” lead to a given output from the simulator, where “input space” refers to an abstraction of all the variables going into the simulator, e.g., initial conditions, parameters, and interaction equations. Landscape characterization can be viewed as an attempt to invert the forward mapping of the simulator and recover the inputs that produce a particular output.

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Citation
"Automated Knowledge Discovery From Simulators," Mobility Engineering, July 1, 2007.
Additional Details
Publisher
Published
Jul 1, 2007
Product Code
TBMG-2035
Content Type
Magazine Article
Language
English