@article{5c77d2efc883432fa87c86dd2953559b,
title = "Anticipating global terrestrial ecosystem state change using FLUXNET",
abstract = "Ecosystems can be characterized as complex systems that traverse a variety of functional and structural states in response to changing bioclimatic forcings. A central challenge of global change biology is the robust empirical description of these states and state transitions. An ecosystem's functional state can be empirically described using Process Networks (PN) that use timeseries observations to determine the strength of process-level functional couplings between ecosystem components. A globally extensive source of in-situ observations of terrestrial ecosystem dynamics is the FLUXNET eddy-covariance network that provides standardized observations of micrometeorology and carbon, water, and energy flux dynamics. We employ the LaThuile FLUXNET synthesis dataset to delineate each month's functional state for 204 sites, yielding the LaThuile PN version 1.0 database that describes the strength of an ecosystem's functional couplings from air temperature and precipitation to carbon fluxes during each site-month. Then we calculate the elasticity of these couplings to seasonal scale forcings: air temperature, precipitation, solar radiation, and phenophase. Finally, we train artificial neural networks to extrapolate these elasticities from 204 sites to the globe, yielding maps of the estimated functional elasticity of every terrestrial ecosystem's functional states to changing seasonal bioclimatic forcings. These maps provide theoretically novel resource that can be used to anticipate ecological state transitions in response to climate change and to validate process-based models of ecological change. These elasticity maps show that each ecosystem can be expected to respond uniquely to changing forcings. Tropical forests, hot deserts, savannas, and high elevations are most elastic to climate change, and elasticity of ecosystems to seasonal air temperature is on average an order of magnitude higher than elasticity to other bioclimatic forcings. We also observed a reasonable amount of moderate relationships between functional elasticity and structural state change across different ecosystems.",
keywords = "FLUXNET, eddy covariance, functional elasticity, information flow, phenology, precipitation, process network, radiation, structural state, temperature",
author = "Rong Yu and Ruddell, {Benjamin L.} and Minseok Kang and Joon Kim and Dan Childers",
note = "Funding Information: and Environmental Research, Grant/ Award Number: DE‐FG02‐04ER63917 and DE‐FG02‐04ER63911; NRCan; National Science Foundation, Grant/Award Number: BCS‐1026865 EF‐1241960; Universit{\'e} Laval; Environment Canada; Lawrence Berkeley National Laboratory; Microsoft; Oak Ridge National Laboratory; University of California; University of Virginia; University of Reading Funding Information: This work is financially supported by the National Science Foundation under grant EF-1241960, and BCS-1026865, Central Arizona-Phoenix Long-Term Ecological Research (CAP LTER). The findings are those of the authors, and not necessarily the funding agencies. This work used data acquired by the FLUXNET community and contributing networks: AmeriFlux (U.S. Department of Energy, Biological and Environmental Research, Terrestrial Carbon Program, DE-FG02-04ER63917 and DE-FG02-04ER63911), AfriF1ux, AsiaF1ux, CarboAfrica, CarboEurope1P, Carboltaly, CarboMont, ChinaFlux, Fluxnet-Canada (supported by CFCAS, NSERC, BIOCAP, Environment Canada, and NRCan), GreenGrass, KoFlux, LBA, NECC, OzFlux, TCOS-Siberia, USCCC. We acknowledge the financial support to the eddy covariance data harmonization provided by CarboEuropelP, FAO-GTOS-TCO, iLEAPS, Max Planck Institute for Biogeochemistry, National Science Foundation, University of Tuscia, Universit{\'e} Laval, Environment Canada and US Department of Energy and the database development and technical support from Berkeley Water Center, Lawrence Berkeley National Laboratory, Microsoft Research eScience, Oak Ridge National Laboratory, University of California—Berkeley and the University of Virginia. We are grateful to Dr. Tristan Quaife at University of Reading in UK for his Matlab MODIS Client version 2.0 which efficiently downloaded MOD13Q1 for all FLUXNET sites from the ORNL DAAC. We thank Drs. Alison Donnelly, Alvaro Vargas-Clara, Osama Jameel, Qing Zhang, George Koch, and Katharyn Duffy for their valuable consultation. We finally thank anonymous reviewers for their valuable and insightful comments, which greatly improved our manuscript. Funding Information: This work is financially supported by the National Science Foundation under grant EF‐1241960, and BCS‐1026865, Central Arizona‐Phoenix Long‐Term Ecological Research (CAP LTER). The findings are those of the authors, and not necessarily the funding agencies. This work used data acquired by the FLUXNET community and contributing networks: AmeriFlux (U.S. Department of Energy, Biological and Environmental Research, Terrestrial Carbon Program, DE‐FG02‐04ER63917 and DE‐ FG02‐04ER63911), AfriF1ux, AsiaF1ux, CarboAfrica, CarboEurope1P, Carboltaly, CarboMont, ChinaFlux, Fluxnet‐Canada (supported by CFCAS, NSERC, BIOCAP, Environment Canada, and NRCan), GreenGrass, KoFlux, LBA, NECC, OzFlux, TCOS‐Siberia, USCCC. We acknowledge the financial support to the eddy covariance data harmo‐ nization provided by CarboEuropelP, FAO‐GTOS‐TCO, iLEAPS, Max Planck Institute for Biogeochemistry, National Science Foundation, University of Tuscia, Universit{\'e} Laval, Environment Canada and US Department of Energy and the database development and technical support from Berkeley Water Center, Lawrence Berkeley National Laboratory, Microsoft Research eScience, Oak Ridge National Laboratory, University of California—Berkeley and the University of Virginia. We are grateful to Dr. Tristan Quaife at University of Reading in UK for his Matlab MODIS Client version 2.0 which efficiently down‐ loaded MOD13Q1 for all FLUXNET sites from the ORNL DAAC. We thank Drs. Alison Donnelly, Alvaro Vargas‐Clara, Osama Jameel, Qing Zhang, George Koch, and Katharyn Duffy for their valuable consul‐ tation. We finally thank anonymous reviewers for their valuable and insightful comments, which greatly improved our manuscript. Publisher Copyright: {\textcopyright} 2019 John Wiley & Sons Ltd",
year = "2019",
month = jul,
doi = "10.1111/gcb.14602",
language = "English (US)",
volume = "25",
pages = "2352--2367",
journal = "Global Change Biology",
issn = "1354-1013",
publisher = "Wiley-Blackwell",
number = "7",
}