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Leveraging 35 years of Pinus taeda research in the southeastern US to constrain forest carbon cycle predictions: regional data assimilation using ecosystem experiments

Authors :
Timothy A. Martin
David A. Sampson
Robert O. Teskey
Harold E. Burkhart
Carlos A. Gonzalez-Benecke
A. Jersild
Heather Dinon-Aldridge
Jean-Christophe Domec
Randolph H. Wynne
Asko Noormets
Eric J. Ward
Timothy R. Fox
R. Quinn Thomas
Evan B. Brooks
Timothy J. Albaugh
Department of Forest Resources and Environmental Conservation [Blacksburg]
Virginia Tech [Blacksburg]
Climate Change Science Institute [Oak Ridge] (CCSI)
Oak Ridge National Laboratory [Oak Ridge] (ORNL)
UT-Battelle, LLC-UT-Battelle, LLC
State Climate Office of North Carolina
North Carolina State University [Raleigh] (NC State)
University of North Carolina System (UNC)-University of North Carolina System (UNC)
Interactions Sol Plante Atmosphère (UMR ISPA)
Institut National de la Recherche Agronomique (INRA)-Ecole Nationale Supérieure des Sciences Agronomiques de Bordeaux-Aquitaine (Bordeaux Sciences Agro)
Nicholas School of the Environment
Duke University [Durham]
Department of Forest Engineering, Resources and Management
Oregon State University (OSU)
School of Forest Resources and Conservation
University of Florida [Gainesville] (UF)
Department of Forestry and Environmental Resources (North Carolina State University)
Decision Center for a Desert City
Arizona State University [Tempe] (ASU)
Warnell School of Forestry and Natural Resources
University of Georgia [USA]
Forest Resources and Environmental Conservation
Interactions Sol Plante Atmosphère (ISPA)
University of Florida [Gainesville]
Source :
Biogeosciences, Vol 14, Pp 3525-3547 (2017), Biogeosciences 14 (14), 3525-3547. (2017), Biogeosciences, Biogeosciences, European Geosciences Union, 2017, 14 (14), pp.3525-3547. ⟨10.5194/bg-14-3525-2017⟩
Publication Year :
2017
Publisher :
Copernicus Publications, 2017.

Abstract

Predicting how forest carbon cycling will change in response to climate change and management depends on the collective knowledge from measurements across environmental gradients, ecosystem manipulations of global change factors, and mathematical models. Formally integrating these sources of knowledge through data assimilation, or model–data fusion, allows the use of past observations to constrain model parameters and estimate prediction uncertainty. Data assimilation (DA) focused on the regional scale has the opportunity to integrate data from both environmental gradients and experimental studies to constrain model parameters. Here, we introduce a hierarchical Bayesian DA approach (Data Assimilation to Predict Productivity for Ecosystems and Regions, DAPPER) that uses observations of carbon stocks, carbon fluxes, water fluxes, and vegetation dynamics from loblolly pine plantation ecosystems across the southeastern US to constrain parameters in a modified version of the Physiological Principles Predicting Growth (3-PG) forest growth model. The observations included major experiments that manipulated atmospheric carbon dioxide (CO2) concentration, water, and nutrients, along with nonexperimental surveys that spanned environmental gradients across an 8.6 × 105 km2 region. We optimized regionally representative posterior distributions for model parameters, which dependably predicted data from plots withheld from the data assimilation. While the mean bias in predictions of nutrient fertilization experiments, irrigation experiments, and CO2 enrichment experiments was low, future work needs to focus modifications to model structures that decrease the bias in predictions of drought experiments. Predictions of how growth responded to elevated CO2 strongly depended on whether ecosystem experiments were assimilated and whether the assimilated field plots in the CO2 study were allowed to have different mortality parameters than the other field plots in the region. We present predictions of stem biomass productivity under elevated CO2, decreased precipitation, and increased nutrient availability that include estimates of uncertainty for the southeastern US. Overall, we (1) demonstrated how three decades of research in southeastern US planted pine forests can be used to develop DA techniques that use multiple locations, multiple data streams, and multiple ecosystem experiment types to optimize parameters and (2) developed a tool for the development of future predictions of forest productivity for natural resource managers that leverage a rich dataset of integrated ecosystem observations across a region.

Details

Language :
English
ISSN :
17264189 and 17264170
Volume :
14
Database :
OpenAIRE
Journal :
Biogeosciences
Accession number :
edsair.doi.dedup.....de6b1a31f63b77d0055737337d5d748b
Full Text :
https://doi.org/10.5194/bg-14-3525-2017⟩