2012
DOI: 10.1016/j.jcp.2012.02.025
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An adaptive multiscale method for density-driven instabilities

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Cited by 44 publications
(32 citation statements)
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“…Although it offers an optimal dimensionality reduction with respect to the total mean squared error, the orthonormal basis might not be ideal to represent the information. The varimax algorithm [Kaiser, 1958] can be applied to find a suitable rotation that improve data interpretation while preserving the optimality of the result in terms of explained variance [Richman, 1986;Ramsay et al, 2009]. Therefore, without any further loss of information, the approximate curves can be written as…”
Section: Functional Reduction Of the Dimensionalitymentioning
confidence: 99%
“…Although it offers an optimal dimensionality reduction with respect to the total mean squared error, the orthonormal basis might not be ideal to represent the information. The varimax algorithm [Kaiser, 1958] can be applied to find a suitable rotation that improve data interpretation while preserving the optimality of the result in terms of explained variance [Richman, 1986;Ramsay et al, 2009]. Therefore, without any further loss of information, the approximate curves can be written as…”
Section: Functional Reduction Of the Dimensionalitymentioning
confidence: 99%
“…While still an open question in the computational hydrology community, recent theoretical (Battiato et al ; Battiato and Tartakovsky ) and computational (Boso and Battiato ) works suggest that a priori estimates of continuum scale quantities/parameters might be employed as adaptivity criteria. These include evaluation of gradients of continuum‐scale quantities (Battiato et al ; Kunze and Lunati ) and time‐ or space‐dependent macroscopic dimensionless numbers (Boso and Battiato ).…”
Section: Multiscale Analysis Platformmentioning
confidence: 99%
“…The breakthrough curves are obtained by solving the classical advection-dispersion equation in transient state using a finite volume technique [43,44]. The spatial discretization is kept identical to the one used for the geological simulations.…”
Section: Flow and Transport Simulationsmentioning
confidence: 99%
“…The first one, p 1 x ðtÞ, is based on simplified physics. We use the same solver [43,44] and the same spatial and temporal resolution as for the accurate model based on the full physics, but we disregard diffusion and dispersion effects. The numerical simulation thereby only accounts for advection and numerical dispersion phenomena.…”
Section: Two Different Proxiesmentioning
confidence: 99%