National Repository of Grey Literature 5 records found  Search took 0.01 seconds. 
Inverzní modelování emisí
Resler, Jaroslav
Fulltext: content.csg - Download fulltextPDF
Plný tet: v1019-08 - Download fulltextPDF
High volume undisturbed soil samples from two mountainous catchments: Infiltration experiments and CT imaging
Sněhota, M. ; Dohnal, M. ; Císlerová, M. ; Tesař, Miroslav
The present contribution introduces approaches and results of the infiltration experiments worked out on two undisturbed soil samples collected in the headwater regions of the mountainous parts of the Czech Republic. The attention was paid especially to identify the flow character and to estimate the hydraulic characteristics of the soil samples using the inverse modelling. These measurements represented a part of the proving test of experiments on the automatic experimental setup developed in the laboratory of the Czech Technical University.
The using some approximating methods by inverse modelling
Míček, P. ; Věchet, S. ; Březina, Tomáš
Paper compares making of inverse kinematic models using different approximation methods.
Aquifer Parameters Estimation: Numerical Experiments and Application to a Groundwater Basin
Cissé, Youssouf
Parameter estimation, also known as inverse modelling is a crucial step in groundater modelling. The procedure helps modellers to detect many aspects of groundwater flow systems that are easily overlooked when using the trial-and-error method. A synthetical case study is presented to estimate parameters in an aquifer using the Modinv model. Uniqueness and stability of the solution of inverse modelling are investigated. The usefulness of automated parameter estimation in comparing different alternative conceptual models is discussed by using the Akaike Identification Criterion. The parameter zonation has been demonstrated to be very important in the estimation process. The model has been applied to simulate groundwater flow regime in a real basin.

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