A new discrete multiplicative random cascade model for downscaling intermittent rainfall fields
<p>Spatial downscaling of rainfall fields is a challenging mathematical problem for which many different types of methods have been proposed. One popular solution consists of redistributing rainfall amounts over smaller and smaller scales by means of a discrete multiplicative random cascade (D...
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2020-07-01
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Series: | Hydrology and Earth System Sciences |
Online Access: | https://hess.copernicus.org/articles/24/3699/2020/hess-24-3699-2020.pdf |
Summary: | <p>Spatial downscaling of rainfall fields is a challenging mathematical problem for which many different types of methods have been proposed. One
popular solution consists of redistributing rainfall amounts over smaller and smaller scales by means of a discrete multiplicative random cascade
(DMRCs). This works well for slowly varying homogeneous rainfall fields but often fails in the presence of intermittency (i.e., large amounts of
zero rainfall values). The most common workaround in this case is to use two separate cascade models, namely one for the occurrence and another for the
intensity. In this paper, a new and simpler approach based on the notion of equal-volume areas (EVAs) is proposed. Unlike classical cascades where
rainfall amounts are redistributed over grid cells of equal size, the EVA cascade splits grid cells into areas of different sizes, with each of them
containing exactly half of the original amount of water. The relative areas of the subgrid cells are determined by drawing random values from
a logit-normal cascade generator model with scale and intensity-dependent standard deviation (SD). The process ends when the amount of water in each
subgrid cell is smaller than a fixed-bucket capacity, at which point the output of the cascade can be resampled over a regular Cartesian mesh. The
present paper describes the implementation of the EVA cascade model and gives some first results for 100 selected events in the
Netherlands. Performance is assessed by comparing the outputs of the EVA model to bilinear interpolation and to a classical DMRC model based on
fixed grid cell sizes. Results show that, on average, the EVA cascade outperforms the classical method, producing fields with more realistic
distributions, small-scale extremes and spatial structures. Improvements are mostly credited to the higher robustness of the EVA model in the
presence of intermittency and to the lower variance of its generator. However, both approaches have their advantages and weaknesses. For example,
while the classical cascade tends to overestimate small-scale variability and extremes, the EVA model tends to produce fields that are slightly too
smooth and block shaped compared to the observations. The complementary nature of the two approaches, and the fact that they produce errors of opposite
signs, opens up new possibilities for quality control and bias corrections of downscaled fields.</p> |
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ISSN: | 1027-5606 1607-7938 |