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Optimizations Under Uncertainty Using Gradients, Hessians, and Surrogate Models

AIAA Journal - United States
doi 10.2514/1.j051847
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Abstract

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Categories
Aerospace Engineering
Date

February 1, 2013

Authors
Markus P. Rumpfkeil
Publisher

American Institute of Aeronautics and Astronautics (AIAA)


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