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Stochastic Numerics For The Boltzmann Equation 1st Edition Sergej Rjasanow

  • SKU: BELL-890824
Stochastic Numerics For The Boltzmann Equation 1st Edition Sergej Rjasanow
$ 31.00 $ 45.00 (-31%)

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Stochastic Numerics For The Boltzmann Equation 1st Edition Sergej Rjasanow instant download after payment.

Publisher: Springer-Verlag Berlin Heidelberg
File Extension: PDF
File size: 2.5 MB
Pages: 256
Author: Sergej Rjasanow, Wolfgang Wagner (auth.)
ISBN: 9783540252689, 3540252681
Language: English
Year: 2005
Edition: 1

Product desciption

Stochastic Numerics For The Boltzmann Equation 1st Edition Sergej Rjasanow by Sergej Rjasanow, Wolfgang Wagner (auth.) 9783540252689, 3540252681 instant download after payment.

Stochastic numerical methods play an important role in large scale computations in the applied sciences. The first goal of this book is to give a mathematical description of classical direct simulation Monte Carlo (DSMC) procedures for rarefied gases, using the theory of Markov processes as a unifying framework. The second goal is a systematic treatment of an extension of DSMC, called stochastic weighted particle method. This method includes several new features, which are introduced for the purpose of variance reduction (rare event simulation). Rigorous convergence results as well as detailed numerical studies are presented.

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