2017
DOI: 10.5194/bg-14-3525-2017
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Leveraging 35 years of <i>Pinus taeda</i> research in the southeastern US to constrain forest carbon cycle predictions: regional data assimilation using ecosystem experiments

Abstract: 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 sca… Show more

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Cited by 40 publications
(70 citation statements)
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“…Our study demonstrates that it is possible to integrate monitoring data from multiple networks across a wide bioclimatic gradient into a process‐based forest ecosystem model 3‐PG. The resulting uncertainty in the parameter estimates was relatively low (Tables S3 and S4) and comparable to other studies that calibrated the 3‐PG model (Augustynczik et al, ; Thomas et al, ). Not surprisingly, the monitoring data were most informative for constraining parameters that are directly related to stand structure.…”
Section: Discussionsupporting
confidence: 82%
“…Our study demonstrates that it is possible to integrate monitoring data from multiple networks across a wide bioclimatic gradient into a process‐based forest ecosystem model 3‐PG. The resulting uncertainty in the parameter estimates was relatively low (Tables S3 and S4) and comparable to other studies that calibrated the 3‐PG model (Augustynczik et al, ; Thomas et al, ). Not surprisingly, the monitoring data were most informative for constraining parameters that are directly related to stand structure.…”
Section: Discussionsupporting
confidence: 82%
“…Here, we advance the work in Thomas et al. () by developing a forecast of productivity under future climate that includes parameter, process, and climate model uncertainty and compares the relative contributions of these sources of uncertainty to the forecast uncertainty.…”
Section: Introductionmentioning
confidence: 99%
“…We focus our forecast on planted loblolly pine ( Pinus taeda ) forests of the southeastern United States, a globally important ecosystem that supplies 16% of the world's timber volume (Prestemon and Abt ) and has the data availability necessary to estimate the probability distribution of ecosystem model parameters (Thomas et al. ). Under the RCP 8.5 scenario, the region is projected to warm by 0.5°–3°C between the 1985–2010 and 2030–2055 periods, depending on the climate model and location in the region (Fig.…”
Section: Introductionmentioning
confidence: 99%
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