2016
DOI: 10.4310/cms.2016.v14.n5.a2
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Data-driven stochastic representations of unresolved features in multiscale models

Abstract: Abstract. In this study we investigate how to use sample data, generated by a fully resolved multiscale model, to construct stochastic representations of unresolved scales in reduced models. We explore three methods to model these stochastic representations. They employ empirical distributions, conditional Markov chains and conditioned Ornstein-Uhlenbeck processes, respectively. The Kac-Zwanzig heat bath model is used as a prototype model to illustrate the methods. We demonstrate that all tested strategies rep… Show more

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Cited by 9 publications
(25 citation statements)
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“…We model R as a stochastic process, following the approach discussed in Verheul and Crommelin [47]. This approach is a form of resampling, in which R is sampled uniformly from conditioned observed values of R. However, whereas in [47] we considered a situation in which R was a scalar quantity, here we are dealing with a spatially extended system in which R is a two-dimensional eld.…”
Section: Conditioning Proceduresmentioning
confidence: 99%
See 4 more Smart Citations
“…We model R as a stochastic process, following the approach discussed in Verheul and Crommelin [47]. This approach is a form of resampling, in which R is sampled uniformly from conditioned observed values of R. However, whereas in [47] we considered a situation in which R was a scalar quantity, here we are dealing with a spatially extended system in which R is a two-dimensional eld.…”
Section: Conditioning Proceduresmentioning
confidence: 99%
“…This approach is a form of resampling, in which R is sampled uniformly from conditioned observed values of R. However, whereas in [47] we considered a situation in which R was a scalar quantity, here we are dealing with a spatially extended system in which R is a two-dimensional eld. Therefore, we extend the method from [47] to a multidimensional setting, and apply it pointwise to sample the eld R. In this extension, we preserve the modular design philosophy behind the stochastic methodology, as well as the ability to represent non-linear and nonGaussian behavior.…”
Section: Conditioning Proceduresmentioning
confidence: 99%
See 3 more Smart Citations