INVESTIGADORES
SALVIA Maria Mercedes
artículos
Título:
Soil Moisture Drydown Detection is Hindered by Model-based Rescaling
Autor/es:
RAOULT, NINA; RUSCICA, ROMINA C.; SALVIA, MARÍA MERCEDES; SÖRENSSON, ANNA A.
Revista:
IEEE GEOSCIENCE AND REMOTE SENSING LETTERS
Editorial:
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Referencias:
Lugar: New York; Año: 2022 vol. 19 p. 2505205 - 2505205
ISSN:
1545-598X
Resumen:
The rate at which soils dry out after heavy rain as huge impacts on the climate. It is important that these drying rates, known as soil moisture (SM) drydowns, are well represented in climate simulations. Satellite data allow us to study these events globally. Although there are many individual satellite sensors we can use, their data have gaps, both spatially and temporally. Merged products, like the ones from the European Space Agency, collate data from these sensors to create datasets which are as complete as possible. However, we find that the merging algorithms used to create such products can hinder the detection of drydowns events calling for caution when using such datasets. The smaller SM dynamic range imposed on this combined dataset during its creation hinders drydown detection when using methods based solely on SM dynamics. Although fewer drying events are detected, the drydown time scales are mostly unchanged. Detection methods using external precipitation products are less affected by this rescaling, however, we detect far fewer events and drydown time scales tend to be longer than when using SM based methods.