Title of article
Conditional simulation of remotely sensed rainfall data using a non-Gaussian v-transformed copula
Author/Authors
Amir AghaKouchaka، نويسنده , , Andr?s B?rdossyb، نويسنده , , Emad Habiba، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
11
From page
624
To page
634
Abstract
Quantification of rainfall and its spatial and temporal variability is extremely important for reliable hydrological and meteorological modeling. While rain gauge measurements do not provide reasonable areal representation of rainfall, remotely sensed precipitation estimates offer much higher spatial resolution. However, uncertainties associated with remotely sensed rainfall estimates are not well quantified. This issue is important considering the fact that uncertainties in input rainfall are the main sources of error in hydrologic processes. Using an ensemble of rainfall estimates that resembles multiple realizations of possible true rainfall, one can assess uncertainties associated with remotely sensed rainfall data. In this paper, ensembles are generated by imposing rainfall error fields over remotely sensed rainfall estimates. A non-Gaussian copula-based model is introduced for simulation of rainfall error fields. The v-transformed copula is employed to describe the dependence structure of rainfall error estimates without the influence of the marginal distribution. Simulations using this model can be performed unconditionally or conditioned on ground reference measurements such that rain gauge data are honored at their locations. The presented model is implemented for simulation of rainfall ensembles across the Little Washita watershed, Oklahoma. The results indicate that the model generates rainfall fields with similar spatio-temporal characteristics and stochastic properties to those of observed rainfall data.
Keywords
Ensemble generation , Copula , V-transformed copula , Multivariate simulation , Remotely sensed rainfall data
Journal title
Advances in Water Resources
Serial Year
2010
Journal title
Advances in Water Resources
Record number
1272218
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