2018
DOI: 10.1029/2017wr021959
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A Method for Objectively Integrating Soil Moisture Satellite Observations and Model Simulations Toward a Blended Drought Index

Abstract: With satellite soil moisture (SM) retrievals becoming widely and continuously available, we aim to develop a method to objectively integrate the drought indices into one that is more accurate and consistently reliable. The data sets used in this paper include the Noah land surface model‐based SM estimations, Atmosphere‐Land‐Exchange‐Inverse model‐based Evaporative Stress Index, and the satellite SM products from the Advanced Scatterometer, WindSat, Soil Moisture and Ocean Salinity, and Soil Moisture Operationa… Show more

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Cited by 22 publications
(11 citation statements)
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References 89 publications
(162 reference statements)
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“…Water Resources Research observations of surface soil moisture and air humidity (Yin et al, 2018; have strong potential utility for early drought detection (AghaKouchak et al, 2015;Otkin et al, 2018). The quantification of drought impacts on surface and ground water storage is also essential for effective water resource management (Castle et al, 2014).…”
Section: 1029/2018wr024633mentioning
confidence: 99%
See 1 more Smart Citation
“…Water Resources Research observations of surface soil moisture and air humidity (Yin et al, 2018; have strong potential utility for early drought detection (AghaKouchak et al, 2015;Otkin et al, 2018). The quantification of drought impacts on surface and ground water storage is also essential for effective water resource management (Castle et al, 2014).…”
Section: 1029/2018wr024633mentioning
confidence: 99%
“…The effective use of global satellite observations can also greatly enhance drought monitoring capabilities by incorporating near‐real time, large‐scale measurements of multiple contributing hydrological variables (Heim, ). In particular, consistent long‐term satellite observations of surface soil moisture and air humidity (Yin et al, ; Du, Kimball, Reichle et al, ) have strong potential utility for early drought detection (AghaKouchak et al, ; Otkin et al, ). The quantification of drought impacts on surface and ground water storage is also essential for effective water resource management (Castle et al, ).…”
Section: Introductionmentioning
confidence: 99%
“…After the radar stopped operation, the SMAP SM data product had been continuously generated with the radiometer (Yin et al, 2018). The SMAP is expected to archive accurate SM with the expected performance that ubRMSE is less than 0.04 m 3 /m 3 (Chan et al, 2016; Colliander et al, 2017).…”
Section: Validation Of Downscaling Methodsmentioning
confidence: 99%
“…It controls the SM‐precipitation feedback at continental scale and runoff‐precipitation response at watershed scale. As a result, SM observations are widely used in meteorology, hydrology and climatology (Peng, Loew, Merlin, & Verhoest, 2017; Yin, Hain, Zhan, Dong, & Ek, 2019; Yin, Zhan, Hain, Liu, & Anderson, 2018). The development of ground‐based SM measurement techniques provides an opportunity to obtain SM estimates at different soil depths (Robinson et al, 2008, Dobriyal et al, 2012, Vereecken et al, 2014) with the in situ observations commonly considered as the “truth” to validate satellite and model SM simulations against.…”
Section: Introductionmentioning
confidence: 99%
“…The second advantage is from near real time updating soil moisture datasets with short latency. The soil moisture status is an important indicator to monitor agricultural drought [16]. The near real time long-term SMOPS will allow better understanding of drought development through assessing soil moisture deficits over the historical records [41].…”
Section: Long-term Historical Smops Data Productmentioning
confidence: 99%