DocumentCode :
3609079
Title :
The Impact of Assumed Error Variances on Surface Soil Moisture and Snow Depth Hydrologic Data Assimilation
Author :
Haishen Lu ; Crow, Wade T. ; Yonghua Zhu ; Zhongbo Yu ; Jinhui Sun
Author_Institution :
State Key Lab. of Hydrol.-Water Resources & Hydraulic Eng., Hohai Univ., Nanjing, China
Volume :
8
Issue :
11
fYear :
2015
Firstpage :
5116
Lastpage :
5129
Abstract :
Accurate knowledge of antecedent soil moisture (SM) and snow depth (SD) conditions is often important for obtaining reliable hydrological simulations of stream flow. Data assimilation (DA) methods can be used to integrate remotely sensed (RS) SM and SD retrievals into a hydrology model and improve such simulations. In this paper, we examine the impact of assumed model and observation error variance on stream flow estimates obtained by assimilating RS SM and SD data into a lumped hydrological model. The analysis is based on both synthetic and real DA experiments conducted within the Tuotuo River watershed at the headwaters of the Yangtze River. Synthetic experiments demonstrate that, when the true model error variance is small, DA is more sensitive to the overestimation of the error variance than to its underestimation. Conversely, if the true variance is large, DA is sensitive to the assumed model error variance but not the underestimation of the observation error variance. Given this sensitivity, the maximum a posteriori (MAP) estimation method is applied to accurately estimate model and observation error variances. In general, MAP is able to identify model and observation error parameters associated with an accurate stream flow analysis. However, its utility is somewhat limited by equifinality with regard to observation error statistics.
Keywords :
data assimilation; error analysis; hydrological techniques; rivers; snow; soil; Tuotuo River watershed; Yangtze River headwaters; antecedent soil moisture condition; assumed error variances; hydrology model; maximum a posteriori estimation method; observation error parameters; observation error statistics; observation error variance; remotely sensed soil moisture retrieval; snow depth condition; snow depth hydrologic data assimilation; snow depth retrieval; stream flow analysis; stream flow hydrological simulations; surface soil moisture hydrologic data assimilation; true model error variance; Data assimilation; Hydrology; Microwave measurement; Snow; Soil moisture; Data assimilation (DA); error variance; hydrology model; snow depth (SD); soil moisture (SM);
fLanguage :
English
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher :
ieee
ISSN :
1939-1404
Type :
jour
DOI :
10.1109/JSTARS.2015.2487740
Filename :
7307954
Link To Document :
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