Constraining 2010–2020 Amazonian carbon flux estimates with satellite solar-induced fluorescence (SIF)

<p>Amazonia's net biome exchange (NBE), the sum of biogenic and wildfire carbon fluxes, is a fundamental indicator of the state of its ecosystems. It also quantifies the magnitude and patterns of short- and long-term carbon dioxide sources and sinks but is poorly quantified and out of equ...

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Main Authors: A. Dayalu, M. Mountain, B. Rastogi, J. B. Miller, L. Gatti
Format: Article
Language:English
Published: Copernicus Publications 2025-03-01
Series:Biogeosciences
Online Access:https://bg.copernicus.org/articles/22/1509/2025/bg-22-1509-2025.pdf
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author A. Dayalu
M. Mountain
B. Rastogi
B. Rastogi
B. Rastogi
J. B. Miller
J. B. Miller
L. Gatti
author_facet A. Dayalu
M. Mountain
B. Rastogi
B. Rastogi
B. Rastogi
J. B. Miller
J. B. Miller
L. Gatti
author_sort A. Dayalu
collection DOAJ
description <p>Amazonia's net biome exchange (NBE), the sum of biogenic and wildfire carbon fluxes, is a fundamental indicator of the state of its ecosystems. It also quantifies the magnitude and patterns of short- and long-term carbon dioxide sources and sinks but is poorly quantified and out of equilibrium (non-zero) due to both direct (deforestation) and indirect (climate-related) anthropogenic disturbance. Determining trends in Amazonia's carbon balance, shifts in carbon exchange pathways of NBE, and timescales of ecosystem sensitivity to disturbance requires reliable biogenic flux models that adequately capture fluxes from diurnal to seasonal and annual timescales. Our study assimilates readily available observations and a derived solar-induced fluorescence (SIF) product to estimate hourly biogenic carbon dioxide (<span class="inline-formula">CO<sub>2</sub></span>) fluxes (here in units of <span class="inline-formula"><math xmlns="http://www.w3.org/1998/Math/MathML" id="M2" display="inline" overflow="scroll" dspmath="mathml"><mrow class="unit"><mi mathvariant="normal">µ</mi><mi mathvariant="normal">mol</mi><mspace width="0.125em" linebreak="nobreak"/><mrow class="chem"><msub><mi mathvariant="normal">CO</mi><mn mathvariant="normal">2</mn></msub></mrow><mspace linebreak="nobreak" width="0.125em"/><msup><mi mathvariant="normal">m</mi><mrow><mo>-</mo><mn mathvariant="normal">2</mn></mrow></msup><mspace width="0.125em" linebreak="nobreak"/><msup><mi mathvariant="normal">s</mi><mrow><mo>-</mo><mn mathvariant="normal">1</mn></mrow></msup></mrow></math><span><svg:svg xmlns:svg="http://www.w3.org/2000/svg" width="86pt" height="16pt" class="svg-formula" dspmath="mathimg" md5hash="6718d5eb731fa71915d3050395cc6871"><svg:image xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="bg-22-1509-2025-ie00001.svg" width="86pt" height="16pt" src="bg-22-1509-2025-ie00001.png"/></svg:svg></span></span>) as net ecosystem exchange (NEE), as well as its photosynthesis and respiration constituents, at 12 km resolution using four versions of the data-driven diagnostic Vegetation Photosynthesis and Respiration Model (VPRM). The VPRM versions are all calibrated with ground-based eddy flux data and vary based on whether (1) the photosynthesis term incorporates SIF (VPRM_SIF) or traditional surface reflectance (VPRM_TRA) and (2) the respiration term is modified beyond a simple linear air temperature dependence (VPRM_SIFg; VPRM_TRG). We compare the VPRM versions with each other and with hourly fluxes from the bottom-up mechanistic Simple Biosphere 4 (SiB4 v4.2) model. We also use NASA's Orbiting Carbon Observatory (OCO-2) <span class="inline-formula">CO<sub>2</sub></span> column observations to optimize the VPRM and SiB4 models during the 2016 wet season which occurred at the tail of the 2015/2016 severe El Niño. The wet season 2016 case study suggests that relative to SiB4 and the SIF-based VPRMs, the traditional VPRM versions can underestimate uptake by a factor of 3. In addition, the VPRM_SIFg version better captures biogenic <span class="inline-formula">CO<sub>2</sub></span> fluxes at hourly to seasonal scales than all other VPRM versions in both anomalously wet and anomalously dry conditions. We also find that the VPRM_SIFg model and the independent bottom-up mechanistic hourly SiB4 model converge in NEE, although there are differences in the partitioning of the photosynthesis and respiration components. We further note that VPRM_SIFg describes greater spatial heterogeneity in carbon exchange throughout the Amazon. Despite the paucity of OCO-2 <span class="inline-formula">CO<sub>2</sub></span> column observations (X<span class="inline-formula">CO<sub>2</sub></span>) over the Amazon in the wet season, incorporating X<span class="inline-formula">CO<sub>2</sub></span> into the models significantly reduces near-field model–measurement mismatch at aircraft vertical profiling locations. Finally, a qualitative analysis of the unoptimized biogenic models from 2010–2020 agrees with the wet season 2016 case study, where the traditional VPRM formulations significantly underestimate photosynthesis and respiration relative to VPRM_SIFg. Overall, the VPRM_SIFg biogenic flux model shows promise in its ability to capture Amazonian carbon fluxes across multiple timescale and moisture regimes, suggesting its suitability for larger studies evaluating interannual and seasonal carbon trends in fire as well as the biogenic components of the region's NBE.</p>
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spelling doaj-art-2ca1fa1ca78e46afb2e63fa0898a09ee2025-08-20T02:50:47ZengCopernicus PublicationsBiogeosciences1726-41701726-41892025-03-01221509152810.5194/bg-22-1509-2025Constraining 2010–2020 Amazonian carbon flux estimates with satellite solar-induced fluorescence (SIF)A. Dayalu0M. Mountain1B. Rastogi2B. Rastogi3B. Rastogi4J. B. Miller5J. B. Miller6L. Gatti7Atmospheric and Environmental Research, Research and Development Division, Lexington, MA 02421, USAAtmospheric and Environmental Research, Research and Development Division, Lexington, MA 02421, USACooperative Institute for Research in Environmental Sciences, University of Colorado Boulder, Boulder, CO 80309, USANOAA Earth System Research Laboratory, Global Monitoring Division, Boulder, CO 80303, USApresent address: Department of Geography, University of Colorado Boulder, Boulder, CO 80309, USACooperative Institute for Research in Environmental Sciences, University of Colorado Boulder, Boulder, CO 80309, USANOAA Earth System Research Laboratory, Global Monitoring Division, Boulder, CO 80303, USANational Institute for Space Research (INPE), LaGEE Greenhouse Gas Laboratory, São José dos Campos, 12227-010, Brazil<p>Amazonia's net biome exchange (NBE), the sum of biogenic and wildfire carbon fluxes, is a fundamental indicator of the state of its ecosystems. It also quantifies the magnitude and patterns of short- and long-term carbon dioxide sources and sinks but is poorly quantified and out of equilibrium (non-zero) due to both direct (deforestation) and indirect (climate-related) anthropogenic disturbance. Determining trends in Amazonia's carbon balance, shifts in carbon exchange pathways of NBE, and timescales of ecosystem sensitivity to disturbance requires reliable biogenic flux models that adequately capture fluxes from diurnal to seasonal and annual timescales. Our study assimilates readily available observations and a derived solar-induced fluorescence (SIF) product to estimate hourly biogenic carbon dioxide (<span class="inline-formula">CO<sub>2</sub></span>) fluxes (here in units of <span class="inline-formula"><math xmlns="http://www.w3.org/1998/Math/MathML" id="M2" display="inline" overflow="scroll" dspmath="mathml"><mrow class="unit"><mi mathvariant="normal">µ</mi><mi mathvariant="normal">mol</mi><mspace width="0.125em" linebreak="nobreak"/><mrow class="chem"><msub><mi mathvariant="normal">CO</mi><mn mathvariant="normal">2</mn></msub></mrow><mspace linebreak="nobreak" width="0.125em"/><msup><mi mathvariant="normal">m</mi><mrow><mo>-</mo><mn mathvariant="normal">2</mn></mrow></msup><mspace width="0.125em" linebreak="nobreak"/><msup><mi mathvariant="normal">s</mi><mrow><mo>-</mo><mn mathvariant="normal">1</mn></mrow></msup></mrow></math><span><svg:svg xmlns:svg="http://www.w3.org/2000/svg" width="86pt" height="16pt" class="svg-formula" dspmath="mathimg" md5hash="6718d5eb731fa71915d3050395cc6871"><svg:image xmlns:xlink="http://www.w3.org/1999/xlink" xlink:href="bg-22-1509-2025-ie00001.svg" width="86pt" height="16pt" src="bg-22-1509-2025-ie00001.png"/></svg:svg></span></span>) as net ecosystem exchange (NEE), as well as its photosynthesis and respiration constituents, at 12 km resolution using four versions of the data-driven diagnostic Vegetation Photosynthesis and Respiration Model (VPRM). The VPRM versions are all calibrated with ground-based eddy flux data and vary based on whether (1) the photosynthesis term incorporates SIF (VPRM_SIF) or traditional surface reflectance (VPRM_TRA) and (2) the respiration term is modified beyond a simple linear air temperature dependence (VPRM_SIFg; VPRM_TRG). We compare the VPRM versions with each other and with hourly fluxes from the bottom-up mechanistic Simple Biosphere 4 (SiB4 v4.2) model. We also use NASA's Orbiting Carbon Observatory (OCO-2) <span class="inline-formula">CO<sub>2</sub></span> column observations to optimize the VPRM and SiB4 models during the 2016 wet season which occurred at the tail of the 2015/2016 severe El Niño. The wet season 2016 case study suggests that relative to SiB4 and the SIF-based VPRMs, the traditional VPRM versions can underestimate uptake by a factor of 3. In addition, the VPRM_SIFg version better captures biogenic <span class="inline-formula">CO<sub>2</sub></span> fluxes at hourly to seasonal scales than all other VPRM versions in both anomalously wet and anomalously dry conditions. We also find that the VPRM_SIFg model and the independent bottom-up mechanistic hourly SiB4 model converge in NEE, although there are differences in the partitioning of the photosynthesis and respiration components. We further note that VPRM_SIFg describes greater spatial heterogeneity in carbon exchange throughout the Amazon. Despite the paucity of OCO-2 <span class="inline-formula">CO<sub>2</sub></span> column observations (X<span class="inline-formula">CO<sub>2</sub></span>) over the Amazon in the wet season, incorporating X<span class="inline-formula">CO<sub>2</sub></span> into the models significantly reduces near-field model–measurement mismatch at aircraft vertical profiling locations. Finally, a qualitative analysis of the unoptimized biogenic models from 2010–2020 agrees with the wet season 2016 case study, where the traditional VPRM formulations significantly underestimate photosynthesis and respiration relative to VPRM_SIFg. Overall, the VPRM_SIFg biogenic flux model shows promise in its ability to capture Amazonian carbon fluxes across multiple timescale and moisture regimes, suggesting its suitability for larger studies evaluating interannual and seasonal carbon trends in fire as well as the biogenic components of the region's NBE.</p>https://bg.copernicus.org/articles/22/1509/2025/bg-22-1509-2025.pdf
spellingShingle A. Dayalu
M. Mountain
B. Rastogi
B. Rastogi
B. Rastogi
J. B. Miller
J. B. Miller
L. Gatti
Constraining 2010–2020 Amazonian carbon flux estimates with satellite solar-induced fluorescence (SIF)
Biogeosciences
title Constraining 2010–2020 Amazonian carbon flux estimates with satellite solar-induced fluorescence (SIF)
title_full Constraining 2010–2020 Amazonian carbon flux estimates with satellite solar-induced fluorescence (SIF)
title_fullStr Constraining 2010–2020 Amazonian carbon flux estimates with satellite solar-induced fluorescence (SIF)
title_full_unstemmed Constraining 2010–2020 Amazonian carbon flux estimates with satellite solar-induced fluorescence (SIF)
title_short Constraining 2010–2020 Amazonian carbon flux estimates with satellite solar-induced fluorescence (SIF)
title_sort constraining 2010 2020 amazonian carbon flux estimates with satellite solar induced fluorescence sif
url https://bg.copernicus.org/articles/22/1509/2025/bg-22-1509-2025.pdf
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