Evaluation of a cosmic-ray neutron sensor network for improved land surface model prediction

In situ soil moisture sensors provide highly accurate but very local soil moisture measurements, while remotely sensed soil moisture is strongly affected by vegetation and surface roughness. In contrast, cosmic-ray neutron sensors (CRNSs) allow highly accurate soil moisture estimation on the field scale which could be valuable to improve land surface model predictions. In this study, the potential of a network of CRNSs installed in the 2354 km2 Rur catchment (Germany) for estimating soil hydraulic parameters and improving soil moisture states was tested. Data measured by the CRNSs were assimilated with the local ensemble transform Kalman filter in the Community Land Model version 4.5. Data of four, eight and nine CRNSs were assimilated for the years 2011 and 2012 (with and without soil hydraulic parameter estimation), followed by a verification year 2013 without data assimilation. This was done using (i) a regional high-resolution soil map, (ii) the FAO soil map and (iii) an erroneous, biased soil map as input information for the simulations. For the regional soil map, soil moisture characterization was only improved in the assimilation period but not in the verification period. For the FAO soil map and the biased soil map, soil moisture predictions improved strongly to a root mean square error of 0.03 cm3 cm−3 for the assimilation period and 0.05 cm3 cm−3 for the evaluation period. Improvements were limited by the measurement error of CRNSs (0.03 cm3 cm−3). The positive results obtained with data assimilation of nine CRNSs were confirmed by the jackknife experiments with four and eight CRNSs used for assimilation. The results demonstrate that assimilated data of a CRNS network can improve the characterization of soil moisture content on the catchment scale by updating spatially distributed soil hydraulic parameters of a land surface model.

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Related Dataset #1 : Enhanced Land Use Classification of 2009 for the Rur catchment

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Copyright Author(s) 2017. This work is distributed under the Creative Commons Attribution 3.0 License.


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Author Baatz, Roland
Hendricks Franssen, Harrie-Jan
Han, Xujun
Hoar, Tim
Bogena, Heye Reemt
Vereecken, Harry
Publisher UCAR/NCAR - Library
Publication Date 2017-05-16T00:00:00
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Topic Category geoscientificInformation
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Metadata Date 2023-08-18T19:14:45.787539
Metadata Record Identifier edu.ucar.opensky::articles:19759
Metadata Language eng; USA
Suggested Citation Baatz, Roland, Hendricks Franssen, Harrie-Jan, Han, Xujun, Hoar, Tim, Bogena, Heye Reemt, Vereecken, Harry. (2017). Evaluation of a cosmic-ray neutron sensor network for improved land surface model prediction. UCAR/NCAR - Library. http://n2t.net/ark:/85065/d7bp04pr. Accessed 15 March 2025.

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