Global - Land
bcc-csm1-1
Download Data
Period Mean (original grids) [watt/m2]
Model Period Mean (intersection) [watt/m2]
Benchmark Period Mean (intersection) [watt/m2]
Model Period Mean (complement) [watt/m2]
Benchmark Period Mean (complement) [watt/m2]
Bias [watt/m2]
RMSE [watt/m2]
Phase Shift [months]
Bias Score [1]
RMSE Score [1]
Seasonal Cycle Score [1]
Spatial Distribution Score [1]
Overall Score [1]
Benchmark [-] 48.9
bcc-csm1-1 [-] 37.5 43.1 48.9 18.5 -2.91 22.5 1.44 0.471 0.379 0.795 0.962 0.597
BCC-CSM2-MR [-] 41.2 49.1 48.9 15.3 1.88 18.2 1.20 0.540 0.469 0.842 0.955 0.655
CanESM2 [-] 34.7 41.8 48.9 12.7 -3.81 22.8 1.40 0.440 0.383 0.811 0.940 0.591
CanESM5 [-] 43.9 51.8 48.9 17.8 5.72 23.9 1.40 0.398 0.369 0.807 0.917 0.572
CESM1-BGC [-] 46.6 56.1 48.9 15.1 8.78 20.8 1.15 0.391 0.451 0.848 0.930 0.614
CESM2 [-] 38.1 45.5 48.9 13.8 -1.55 16.9 1.17 0.534 0.498 0.844 0.974 0.669
GFDL-ESM2G [-] 43.9 51.6 48.9 18.8 4.88 23.3 1.27 0.397 0.379 0.826 0.963 0.589
GFDL-ESM4 [-] 49.8 55.1 48.9 37.1 6.21 18.6 1.20 0.417 0.504 0.837 0.978 0.648
IPSL-CM5A-LR [-] 37.6 44.5 48.9 16.1 -1.83 21.2 1.29 0.446 0.426 0.818 0.958 0.615
IPSL-CM6A-LR [-] 43.5 52.4 48.9 14.4 5.65 17.9 1.11 0.491 0.530 0.853 0.960 0.673
MeanCMIP5 [-] 47.8 52.2 49.0 37.7 49.4 3.28 15.9 1.10 0.542 0.557 0.850 0.980 0.697
MeanCMIP6 [-] 43.8 52.0 48.9 17.5 4.55 14.5 0.975 0.554 0.603 0.873 0.974 0.722
MIROC-ESM [-] 44.9 54.1 48.9 15.1 8.82 24.9 1.31 0.380 0.417 0.819 0.905 0.588
MIROC-ESM2L [-] 55.8 65.8 48.9 25.3 18.3 27.6 1.32 0.221 0.462 0.821 0.864 0.566
MPI-ESM-LR [-] 42.4 48.9 48.9 9.06 3.32 22.1 1.21 0.415 0.453 0.833 0.930 0.617
MPI-ESM1.2-HR [-] 41.3 51.2 48.9 5.62 3.90 22.9 1.15 0.321 0.476 0.841 0.904 0.604
NorESM1-ME [-] 45.9 54.2 48.9 18.5 7.06 22.9 1.24 0.377 0.405 0.833 0.914 0.587
NorESM2-LM [-] 38.8 45.4 48.9 16.7 -1.32 18.4 1.19 0.469 0.473 0.843 0.961 0.644
UK-HadGEM2-ES [-] 44.0 52.9 49.0 14.4 5.58 19.4 1.20 0.383 0.522 0.834 0.953 0.643
UKESM1-0-LL [-] 41.3 49.5 48.9 14.3 2.64 18.6 1.17 0.491 0.505 0.843 0.930 0.655

Temporally integrated period mean click to collapse contents

BENCHMARK MEAN
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MODEL MEAN
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BIAS
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BIAS SCORE
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RMSE
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RMSE SCORE
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BENCHMARK MAX MONTH
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MODEL MAX MONTH
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DIFFERENCE IN MAX MONTH
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SEASONAL CYCLE SCORE
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SPATIAL TAYLOR DIAGRAM
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MODEL COLORS
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Spatially integrated regional mean click to collapse contents

MODEL COLORS
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REGIONAL MEAN
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ANNUAL CYCLE
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MONTHLY ANOMALY
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ANNUAL CYCLE
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LatentHeat / FLUXCOM / 1980-2015 / global / MNAME

Benchmark
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bcc-csm1-1
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BCC-CSM2-MR
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CanESM2
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CanESM5
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CESM1-BGC
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CESM2
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GFDL-ESM2G
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GFDL-ESM4
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IPSL-CM5A-LR
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IPSL-CM6A-LR
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MeanCMIP5
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MeanCMIP6
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MIROC-ESM
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MIROC-ESM2L
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MPI-ESM-LR
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MPI-ESM1.2-HR
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NorESM1-ME
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NorESM2-LM
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UK-HadGEM2-ES
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UKESM1-0-LL
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Data Information

  Title:
FLUXCOM (RS+METEO) Global Land Energy Fluxes using GSWP3 climate data

  Version:
1

  Institutions:
Department Biogeochemical Integration, Max Planck Institute for Biogeochemistry, Germany

  Source:
Data generated by machine learning to merge energy flux measurements from FLUXNET eddy covariance towers with MODIS remote sensing and GSWP3v1 meteorological data (RS+METEO)

  History:
2019-05-07: downloaded source from doi:10.17871/FLUXCOM_EnergyFluxes_v1
2019-06-28: converted to netCDF with https://github.com/mmu2019/Datasets/blob/master/read-le-fluxcom.py

  References:
Jung, M., S. Koirala, U. Weber, K. Ichii, F. Gans, G. Camps-Valls, D. Papale, C. Schwalm, G. Tramontana, M. Reichstein (2019), The FLUXCOM ensemble of global land-atmosphere energy fluxes, Scientific Data, submitted, 1-12, https://arxiv.org/abs/1812.04951

Tramontana, G., M. Jung, C.R. Schwalm, K. Ichii, G. Camps-Valls, B. Raduly, M. Reichstein, M.A. Arain, A. Cescatti, G. Kiely, L. Merbold, P. Serrano-Ortiz, S. Sickert, S. Wolf, and D. Papale (2016), Predicting carbon dioxide and energy fluxes across global FLUXNET sites with regression algorithms, Biogeosciences, 13, 4291-4313, doi:10.5194/bg-13-4291-2016

  Comments:
time_period: 1980-01 through 2014-12
original_temporal_resolution: monthly
original_spatial_resolution: 0.5 degree
original_units: MJ/m2/day
final_temporal_resolution: monthly
final_spatial_resolution: 0.5 degree
final_units: watt/m2

  Convention:
CF-1.7

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