Statistical-Topographical Mapping of Rainfall Over Mountainous Terrain
Using Beta Scaling
Abstract
We present a robust approach for quantitative precipitation estimation
(QPE) for water resources management in mountainous catchments, where
rainfall sums and variability are correlated with orographic elevation,
but density of rain gauges does not allow for advanced geostatistical
interpolation of rainfall fields.
Key of the method is modelling rainfall at unobserved locations by their
elevation-dependent expected daily mean, and a daily fluctuation which
is determined by spatial interpolation of the residuals of neighbouring
rain gauges, scaled according to the elevation difference. The scaling
factor is defined as the ratio of covariance and variance, in analogy to
the “beta” used in economics.
The approach is parameterized and illustrated for the Chirilu catchments
(Chillón, Rímac, Lurín) in the Andes near Lima, Peru. The results are
compared to conventional IDW (inverse-distance weighting) interpolation
and a merged national rainfall product. The method results in QPE that
are better matching with observed discharges. The combination of
inverse-distance weighting with β-scaling thus provides a robust and
flexible means to estimate rainfall input to mesoscale mountainous
catchments.