A model for urban biogenic CO<sub>2</sub> fluxes: Solar-Induced Fluorescence for Modeling Urban biogenic Fluxes (SMUrF v1)
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Published:2021-06-17
Issue:6
Volume:14
Page:3633-3661
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
Wu DienORCID, Lin John C.ORCID, Duarte Henrique F., Yadav Vineet, Parazoo Nicholas C., Oda TomohiroORCID, Kort Eric A.
Abstract
Abstract. When estimating fossil fuel carbon dioxide (FFCO2)
emissions from observed CO2 concentrations, the accuracy can be
hampered by biogenic carbon exchanges during the growing season, even for
urban areas where strong fossil fuel emissions are found. While biogenic
carbon fluxes have been studied extensively across natural vegetation types,
biogenic carbon fluxes within an urban area have been challenging to
quantify due to limited observations and differences between urban and
rural regions. Here we developed a simple model representation, i.e.,
Solar-Induced Fluorescence (SIF) for Modeling Urban biogenic Fluxes
(“SMUrF”), that estimates the gross primary production (GPP) and ecosystem
respiration (Reco) over cities around the globe. Specifically, we
leveraged space-based SIF, machine learning, eddy-covariance (EC) flux data,
and ancillary remote-sensing-based products, and we developed algorithms to gap-fill fluxes for urban areas. Grid-level hourly mean net ecosystem exchange
(NEE) fluxes are extracted from SMUrF and evaluated against (1) non-gap-filled
measurements at 67 EC sites from FLUXNET during 2010–2014 (r>0.7 for most data-rich biomes), (2) independent observations at two urban
vegetation and two crop EC sites over Indianapolis from August 2017 to December 2018
(r=0.75), and (3) an urban biospheric model based on fine-grained land
cover classification in Los Angeles (r=0.83). Moreover, we compared
SMUrF-based NEE with inventory-based FFCO2 emissions over 40 cities and
addressed the urban–rural contrast in both the magnitude and timing of
CO2 fluxes. To illustrate the application of SMUrF, we used it to
interpret a few summertime satellite tracks over four cities and compared
the urban–rural gradient in column CO2 (XCO2) anomalies due to NEE
against XCO2 enhancements due to FFCO2 emissions. With rapid
advances in space-based measurements and increased sampling of SIF and
CO2 measurements over urban areas, SMUrF can be useful to inform
the biogenic CO2 fluxes over highly vegetated regions during the
growing season.
Funder
National Aeronautics and Space Administration
Publisher
Copernicus GmbH
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