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Título
Seamless downscaling of the ESA CCI soil moisture data at the daily scale with MODIS land products
Autor(es)
Palabras clave
humedad del suelo
teledetección
Clasificación UNESCO
2506.16 Teledetección (Geología)
2508.13 Humedad del Suelo
Fecha de publicación
2021
Citación
Zhao, W., Wen, F., Wang, Q., Sanchez, N., Piles, M. (2021). Seamless downscaling of the ESA CCI soil moisture data at the daily scale with MODIS land products. Journal of Hydrology, Volume 603, Part B, 126930, ISSN 0022-1694, DOI: 10.1016/j.jhydrol.2021.126930
Resumen
Spatial downscaling has recently become a crucial process in the regional application of coarse-resolution passive
microwave surface soil moisture (SSM) products. Extensive gaps in auxiliary optical/thermal infrared observation
data (mainly caused by cloud cover) and gaps in coarse-resolution passive microwave SSM data lead to
spatiotemporal discontinuity in downscaled SSM maps, thereby limiting their applications. An improved
downscaling method for the 25-km European Space Agency (ESA) Climate Change Initiative (CCI) SSM product
was proposed to obtain daily seamless downscaled SSM series at a 1-km scale. The Moderate Resolution Imaging
Spectroradiometer (MODIS) Terra daily land surface temperature (LST) and normalized difference vegetation
index (NDVI) products were used as auxiliary data for the downscaling process. Prior to the spatial downscaling,
an annual temperature cycle model was applied to the 1-km daily daytime LST data to fill the data gaps caused by
cloud cover and to derive the spatial-seamless LST (gap-filled). Subsequently, the gap-filled ESA CCI SSM was
generated at the original resolution based on the relationships among the SSM, LST, and NDVI. Finally, these
were utilized to obtain a seamless downscaled series SSM at 1-km spatial resolution with a value-consistent
downscaling method. The proposed method was applied to data obtained for the Iberian Peninsula from
January 1, 2016 to December 31, 2018. Based on the comparison with the precipitation dataset, the downscaled
SSM exhibited strong temporal correlation with rainfall events. Evaluation using the in situ SSM from the
REMEDHUS network highlighted the good performance of the downscaled SSM at network level with a correlation
coefficient (R) of 0.820. The root-mean-square-error, unbiased root-mean-square error (ubRMSE), and bias
were 0.091, 0.033, and 0.085 m3/m3, respectively. A comparison with an alternative downscaled SSM product
produced by the Barcelona Expert Center, one of the soil moisture and ocean salinity mission (SMOS)–downscaled
SSM datasets, also indicated that the downscaled SSM has better spatiotemporal coverage and performance
in terms of R and ubRMSE with reference to the REMEDHUS network. These results confirmed that the
proposed method is an efficient and convenient downscaling process that can be used to generate high-resolution
SSM data without spatiotemporal gaps. The downscaled SSM data improves the accuracy of the original passive
microwave SSM product in describing regional SSM variations and shows good potential for related applications
at regional scale.
URI
ISSN
0022-1694
DOI
10.1016/j.jhydrol.2021.126930
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