On Nonintrusive Uncertainty Quantification and Surrogate Model Construction in Particle Accelerator Modeling
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Publication:5228361
DOI10.1137/16M1061928zbMath1422.62381MaRDI QIDQ5228361
Publication date: 12 August 2019
Published in: SIAM/ASA Journal on Uncertainty Quantification (Search for Journal in Brave)
sensitivity analysisuncertainty quantificationsurrogate modelpolynomial chaosparticle acceleratorsUQTk
Directional data; spatial statistics (62H11) Applications of statistics to physics (62P35) Strange attractors, chaotic dynamics of systems with hyperbolic behavior (37D45) Collision of rigid or pseudo-rigid bodies (70F35)
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Cites Work
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