performance of site-specific parameterizations of longwave radiation
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2016
In this work 10 algorithms for estimating downwelling longwave
atmospheric radiation (L↓) and 1 for upwelling longwave
radiation (L↑ ) are integrated into the JGrass-NewAge modelling system. The algorithms are tested against energy flux measurements available for 24 sites in North America to assess their reliability. These new
JGrass-NewAge model components are used (i) to evaluate the performances of
simplified models (SMs) of L↓, as presented in literature
formulations, and (ii) to determine by automatic calibration the
site-specific parameter sets for L↓ in SMs. For locations where calibration is not possible because of a lack of measured data, we perform a multiple regression using on-site variables, i.e. mean annual air
temperature, relative humidity, precipitation, and altitude. The regressions
are verified through a leave-one-out cross validation, which also gathers
information about the possible errors of estimation. Most of the SMs, when
executed with parameters derived from the multiple regressions, give enhanced
performances compared to the corresponding literature formulation. A
sensitivity analysis is carried out for each SM to understand how small
variations of a given parameter influence SM performance. Regarding the
L↓ simulations, the Brunt (1932) and
Idso (1981) SMs, in their literature formulations, provide the best
performances in many of the sites. The site-specific parameter calibration
improves SM performances compared to their literature formulations.
Specifically, the root mean square error (RMSE) is almost halved and the
Kling–Gupta efficiency is improved at all sites. Also in this case,
Brunt (1932) and Idso (1981) SMs provided the best performances.
The L↑ SM is tested by using three different temperatures (surface soil temperature, air temperature at 2 m elevation, and soil temperature at 4 cm depth) and model performances are then assessed. Results show that the best performances are achieved using the surface soil
temperature and the air temperature.
The L
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formetta2016hydrologyperformance
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Authors | ;G. Formetta;M. Bancheri;O. David;R. Rigon |
Journal | materials research bulletin |
Year | 2016 |
DOI | 10.5194/hess-20-4641-2016 |
URL | |
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