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Uncertainty Quantification for Wave Propagation and Flow Problems with Random Data

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Linköping Studies in Science and Technology Dissertation No. 1921 Markus W ahlst en Uncert ainty Quantification f or W av e Pr

opagation and Flo

w Pr

oblems with Random Dat

a

2018

Uncertainty Quantification for

Wave Propagation and Flow

Problems with Random Data

(2)

FACULTY OF SCIENCE AND ENGINEERING

Linköping Studies in Science and Technology, Dissertation No. 1921, 2018 Department of Mathematics

Linköping University SE-581 83 Linköping, Sweden

www.liu.se

Markus W ahlst en Uncert ainty Quantification f or W av e Pr

opagation and Flo

w Pr

oblems with Random Dat

a

References

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