Abstract. Satellite-retrieved solar-induced chlorophyll fluorescence (SIF) has shown
great potential to monitor the photosynthetic activity of terrestrial
ecosystems. However, several issues, including low spatial and temporal
resolution of the gridded datasets and high uncertainty of the individual
retrievals, limit the applications of SIF. In addition, inconsistency in
measurement footprints also hinders the direct comparison between gross
primary production (GPP) from eddy covariance (EC) flux towers and
satellite-retrieved SIF. In this study, by training a neural network (NN)
with surface reflectance from the MODerate-resolution Imaging
Spectroradiometer (MODIS) and SIF from Orbiting Carbon Observatory-2 (OCO-2),
we generated two global spatially contiguous SIF (CSIF) datasets at moderate
spatiotemporal (0.05∘ 4-day) resolutions during the MODIS era, one for
clear-sky conditions (2000–2017) and the other one in all-sky conditions
(2000–2016). The clear-sky instantaneous CSIF (CSIFclear-inst)
shows high accuracy against the clear-sky OCO-2 SIF and little bias across
biome types. The all-sky daily average CSIF (CSIFall-daily) dataset
exhibits strong spatial, seasonal and interannual dynamics that are
consistent with daily SIF from OCO-2 and the Global Ozone Monitoring
Experiment-2 (GOME-2). An increasing trend (0.39 %) of annual average
CSIFall-daily is also found, confirming the greening of Earth in
most regions. Since the difference between satellite-observed SIF and CSIF is
mostly caused by the environmental down-regulation on SIFyield,
the ratio between OCO-2 SIF and CSIFclear-inst can be an effective
indicator of drought stress that is more sensitive than the normalized
difference vegetation index and enhanced vegetation index. By comparing
CSIFall-daily with GPP estimates from 40 EC flux towers across the
globe, we find a large cross-site variation (c.v. = 0.36) of the GPP–SIF
relationship with the highest regression slopes for evergreen needleleaf
forest. However, the cross-biome variation is relatively limited
(c.v. = 0.15). These two contiguous SIF datasets and the derived GPP–SIF
relationship enable a better understanding of the spatial and temporal
variations of the GPP across biomes and climate.
Abstract.A new global estimate of surface turbulent fluxes, latent heat flux (LE) and sensible heat flux (H ), and gross primary production (GPP) is developed using a machine learning approach informed by novel remotely sensed solarinduced fluorescence (SIF) and other radiative and meteorological variables. This is the first study to jointly retrieve LE, H , and GPP using SIF observations. The approach uses an artificial neural network (ANN) with a target dataset generated from three independent data sources, weighted based on a triple collocation (TC) algorithm. The new retrieval, named Water, Energy, and Carbon with Artificial Neural Networks (WECANN), provides estimates of LE, H , and GPP from 2007 to 2015 at 1 • × 1 • spatial resolution and at monthly time resolution. The quality of ANN training is assessed using the target data, and the WECANN retrievals are evaluated using eddy covariance tower estimates from the FLUXNET network across various climates and conditions. When compared to eddy covariance estimates, WECANN typically outperforms other products, particularly for sensible and latent heat fluxes. Analyzing WECANN retrievals across three extreme drought and heat wave events demonstrates the capability of the retrievals to capture the extent of these events.Uncertainty estimates of the retrievals are analyzed and the interannual variability in average global and regional fluxes shows the impact of distinct climatic events -such as the 2015 El Niño -on surface turbulent fluxes and GPP.
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