2015
DOI: 10.1175/jhm-d-14-0108.1
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Integration of Satellite Soil Moisture and Rainfall Observations over the Italian Territory

Abstract: State-of-the-art rainfall products obtained by satellites are often the only way of measuring rainfall in remote areas of the world. However, it is well known that they may fail in properly reproducing the amount of precipitation reaching the ground, which is of paramount importance for hydrological applications. To address this issue, an integration between satellite rainfall and soil moisture SM products is proposed here by using an algorithm, SM2RAIN, which estimates rainfall from SM observations. A nudging… Show more

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Cited by 62 publications
(66 citation statements)
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“…A sequential assimilation approach was applied where AMSR-E C-band TB measurements were used to estimate a simple multiplicative factor to the precipitation estimates in order to minimize the difference between observed (AMSR-E) and simulated TBs in terms of root mean square error (RMSE). The results show improvements over those found in Pellarin et al (2009). Specifically, the Pellarin et al (2013) study shows that the proposed methodology produces an improvement of the RMSE at daily, decadal and monthly timescales and at the three locations.…”
Section: Comparison To Other Studiesmentioning
confidence: 68%
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“…A sequential assimilation approach was applied where AMSR-E C-band TB measurements were used to estimate a simple multiplicative factor to the precipitation estimates in order to minimize the difference between observed (AMSR-E) and simulated TBs in terms of root mean square error (RMSE). The results show improvements over those found in Pellarin et al (2009). Specifically, the Pellarin et al (2013) study shows that the proposed methodology produces an improvement of the RMSE at daily, decadal and monthly timescales and at the three locations.…”
Section: Comparison To Other Studiesmentioning
confidence: 68%
“…Many other studies have utilized satellite microwave brightness temperatures or soil moisture retrievals to constrain satellite precipitation estimates (Pellarin et al, 2008), estimate precipitation (e.g., Brocca et al, 2013) or improve precipitation estimates through assimilation (Crow et al, 2009(Crow et al, , 2011. Here, we review their approaches and findings in light of the results of this study, and compare our results with some of these studies to gain insight into their robustness and consistency.…”
Section: Comparison To Other Studiesmentioning
confidence: 87%
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