A systematic study of efficient sampling methods to quantify uncertainty in crack propagation and the Burgers equation
DOI10.1515/MCMA.2010.002zbMath1253.74092MaRDI QIDQ3564645
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Publication date: 26 May 2010
Published in: Monte Carlo Methods and Applications (Search for Journal in Brave)
Burgers equationMonte Carlo methodquasi-Monte Carlo methoduncertainty quantificationParis lawsensitivity derivativesvariance-reduction
Monte Carlo methods (65C05) Stochastic ordinary differential equations (aspects of stochastic analysis) (60H10) Brittle fracture (74R10) Signal detection and filtering (aspects of stochastic processes) (60G35) Applications of Markov chains and discrete-time Markov processes on general state spaces (social mobility, learning theory, industrial processes, etc.) (60J20) Stochastic and other probabilistic methods applied to problems in solid mechanics (74S60)
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