Disaggregation of spatial rainfall fields for hydrological modelling

Abstract. Meteorological models generate fields of precipitation and other climatological variables as spatial averages at the scale of the grid used for numerical solution. The grid-scale can be large, particularly for GCMs, and disaggregation is required, for example to generate appropriate spatial-temporal properties of rainfall for coupling with surface-boundary conditions or more general hydrological applications. A method is presented here which considers the generation of the wet areas and the simulation of rainfall intensities separately. For the first task, a nearest-neighbour Markov scheme, based upon a Bayesian technique used in image processing, is implemented so as to preserve the structural features of the observed rainfall. Essentially, the large-scale field and the previously disaggregated field are used as evidence in an iterative procedure which aims at selecting a realisation according to the joint posterior probability distribution. In the second task the morphological characteristics of the field of rainfall intensities are reproduced through a random sampling of intensities according to a beta distribution and their allocation to pixels chosen so that the higher intensities are more likely to be further from the dry areas. The components of the scheme are assessed for Arkansas-Red River basin radar rainfall (hourly averages) by disaggregating from 40 km x 40 km to 8 km x 8 km. The wet/dry scheme provides a good reproduction both of the number of correctly classified pixels and the coverage, while the intensitiy scheme generates fields with an adequate variance within the grid-squares, so that this scheme provides the hydrologist with a useful tool for the downscaling of meteorological model outputs. Keywords: Rainfall, disaggregation, General Circulation Model, Bayesian analysis

[1]  Christian Onof,et al.  Bayesian Image Analysis and the Disaggregation of Rainfall , 2000 .

[2]  N. G. Mackay,et al.  Analysis of aggregation and disaggregation effects for grid-based hydrological models and the development of improved precipitation disaggregation procedures for GCMs , 1999 .

[3]  N. G. Mackay,et al.  An improved rainfall disaggregation technique for GCMs , 1998 .

[4]  Chris Park,et al.  The Environment , 2010 .

[5]  S. Regional Simulating Fluxes from Heterogeneous Land Surface , 1997 .

[6]  Armin Raabe,et al.  A comparison of two strategies on land surface heterogeneity used in a mesoscale β meteorological model , 1996 .

[7]  H. Wheater,et al.  Modelling of the time-series of spatial coverages of British rainfall fields , 1996 .

[8]  H. Wheater,et al.  Analysis of the spatial coverage of British rainfall fields , 1996 .

[9]  Murugesu Sivapalan,et al.  Evaluation of the effects of general circulation models' subgrid variability and patchiness of rainfall and soil moisture on land surface water balance fluxes , 1995 .

[10]  U. Cubasch,et al.  Downscaling of global climate change estimates to regional scales: an application to Iberian rainfal , 1993 .

[11]  Rafael L. Bras,et al.  Estimation of the fractional coverage of rainfall in climate models , 1993 .

[12]  M. Parry,et al.  The potential effects of climate change in the United Kingdom. , 1992 .

[13]  Benjamin Kedem,et al.  An analysis of the threshold method for measuring area-average rainfall. , 1990 .

[14]  J. Besag On the Statistical Analysis of Dirty Pictures , 1986 .

[15]  松林 宇一郎,et al.  The Probability Density Function of Areal Average Rainfall , 1983 .

[16]  Peter S. Eagleson,et al.  Climate, soil, and vegetation: 2. The distribution of annual precipitation derived from observed storm sequences , 1978 .

[17]  M. Jöhnk Erzeugung von betaverteilten und gammaverteilten Zufallszahlen , 1964 .