Articles | Volume 21, issue 9
https://doi.org/10.5194/hess-21-4861-2017
https://doi.org/10.5194/hess-21-4861-2017
Research article
 | 
28 Sep 2017
Research article |  | 28 Sep 2017

Parameter optimisation for a better representation of drought by LSMs: inverse modelling vs. sequential data assimilation

Hélène Dewaele, Simon Munier, Clément Albergel, Carole Planque, Nabil Laanaia, Dominique Carrer, and Jean-Christophe Calvet

Viewed

Total article views: 2,571 (including HTML, PDF, and XML)
HTML PDF XML Total Supplement BibTeX EndNote
1,670 809 92 2,571 397 65 98
  • HTML: 1,670
  • PDF: 809
  • XML: 92
  • Total: 2,571
  • Supplement: 397
  • BibTeX: 65
  • EndNote: 98
Views and downloads (calculated since 17 Mar 2017)
Cumulative views and downloads (calculated since 17 Mar 2017)

Viewed (geographical distribution)

Total article views: 2,571 (including HTML, PDF, and XML) Thereof 2,510 with geography defined and 61 with unknown origin.
Country # Views %
  • 1
1
 
 
 
 

Cited

Latest update: 25 Apr 2024
Download
Short summary
Soil maximum available water content (MaxAWC) is a key parameter in land surface models. Being difficult to measure, this parameter is usually unavailable. A 15-year time series of satellite-derived observations of leaf area index (LAI) is used to retrieve MaxAWC for rainfed straw cereals over France. Disaggregated LAI is sequentially assimilated into the ISBA LSM. MaxAWC is estimated minimising LAI analyses increments. Annual maximum LAI observations correlate with the MaxAWC estimates.