Inverse hydrologic modeling using stochastic growth algorithms

We present a method for inverse modeling in hydrology that incorporates a physical understanding of the geological processes that form a hydrologic system. The method is based on constructing a stochastic model that is approximately representative of these geologic processes. This model provides a p...

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Veröffentlicht in:Water resources research 1998-12, Vol.34 (12), p.3335-3347
Hauptverfasser: Hestir, Kevin, Martel, Stephen J., Vail, Stacy, Long, Jane, D'Onfro, Pete, Rizer, William D.
Format: Artikel
Sprache:eng
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Zusammenfassung:We present a method for inverse modeling in hydrology that incorporates a physical understanding of the geological processes that form a hydrologic system. The method is based on constructing a stochastic model that is approximately representative of these geologic processes. This model provides a prior probability distribution for possible solutions to the inverse problem. The uncertainty in the inverse solution is characterized by a conditional (posterior) probability distribution. A new stochastic simulation method, called conditional coding, approximately samples from this posterior distribution and allows study of solution uncertainty through Monte Carlo techniques. We examine a fracture‐dominated flow system, but the method can potentially be applied to any system where formation processes are modeled with a stochastic simulation algorithm.
ISSN:0043-1397
1944-7973
DOI:10.1029/98WR01549