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Featured researches published by Ben Poulter.


Global Change Biology | 2013

Evaluation of terrestrial carbon cycle models for their response to climate variability and to CO2 trends

Shilong Piao; Stephen Sitch; Philippe Ciais; Pierre Friedlingstein; Philippe Peylin; Wang X; Anders Ahlström; Alessandro Anav; Josep G. Canadell; Nan Cong; Chris Huntingford; Martin Jung; Sam Levis; Peter E. Levy; Junsheng Li; Xin Lin; Mark R. Lomas; Meng Lu; Yiqi Luo; Yuecun Ma; Ranga B. Myneni; Ben Poulter; Zhenzhong Sun; Tao Wang; Nicolas Viovy; Soenke Zaehle; Ning Zeng

The purpose of this study was to evaluate 10 process-based terrestrial biosphere models that were used for the IPCC fifth Assessment Report. The simulated gross primary productivity (GPP) is compared with flux-tower-based estimates by Jung et al. [Journal of Geophysical Research 116 (2011) G00J07] (JU11). The net primary productivity (NPP) apparent sensitivity to climate variability and atmospheric CO2 trends is diagnosed from each model output, using statistical functions. The temperature sensitivity is compared against ecosystem field warming experiments results. The CO2 sensitivity of NPP is compared to the results from four Free-Air CO2 Enrichment (FACE) experiments. The simulated global net biome productivity (NBP) is compared with the residual land sink (RLS) of the global carbon budget from Friedlingstein et al. [Nature Geoscience 3 (2010) 811] (FR10). We found that models produce a higher GPP (133 ± 15 Pg C yr(-1) ) than JU11 (118 ± 6 Pg C yr(-1) ). In response to rising atmospheric CO2 concentration, modeled NPP increases on average by 16% (5-20%) per 100 ppm, a slightly larger apparent sensitivity of NPP to CO2 than that measured at the FACE experiment locations (13% per 100 ppm). Global NBP differs markedly among individual models, although the mean value of 2.0 ± 0.8 Pg C yr(-1) is remarkably close to the mean value of RLS (2.1 ± 1.2 Pg C yr(-1) ). The interannual variability in modeled NBP is significantly correlated with that of RLS for the period 1980-2009. Both model-to-model and interannual variation in model GPP is larger than that in model NBP due to the strong coupling causing a positive correlation between ecosystem respiration and GPP in the model. The average linear regression slope of global NBP vs. temperature across the 10 models is -3.0 ± 1.5 Pg C yr(-1) °C(-1) , within the uncertainty of what derived from RLS (-3.9 ± 1.1 Pg C yr(-1) °C(-1) ). However, 9 of 10 models overestimate the regression slope of NBP vs. precipitation, compared with the slope of the observed RLS vs. precipitation. With most models lacking processes that control GPP and NBP in addition to CO2 and climate, the agreement between modeled and observation-based GPP and NBP can be fortuitous. Carbon-nitrogen interactions (only separable in one model) significantly influence the simulated response of carbon cycle to temperature and atmospheric CO2 concentration, suggesting that nutrients limitations should be included in the next generation of terrestrial biosphere models.


Global Change Biology | 2015

Effects of climate extremes on the terrestrial carbon cycle: concepts, processes and potential future impacts

Dorothe A. Frank; Markus Reichstein; Michael Bahn; Kirsten Thonicke; David Frank; Miguel D. Mahecha; Pete Smith; Marijn van der Velde; Sara Vicca; Flurin Babst; Christian Beer; Nina Buchmann; Josep G. Canadell; Philippe Ciais; Wolfgang Cramer; Andreas Ibrom; Franco Miglietta; Ben Poulter; Anja Rammig; Sonia I. Seneviratne; Ariane Walz; Martin Wattenbach; Miguel A. Zavala; Jakob Zscheischler

Extreme droughts, heat waves, frosts, precipitation, wind storms and other climate extremes may impact the structure, composition and functioning of terrestrial ecosystems, and thus carbon cycling and its feedbacks to the climate system. Yet, the interconnected avenues through which climate extremes drive ecological and physiological processes and alter the carbon balance are poorly understood. Here, we review the literature on carbon cycle relevant responses of ecosystems to extreme climatic events. Given that impacts of climate extremes are considered disturbances, we assume the respective general disturbance-induced mechanisms and processes to also operate in an extreme context. The paucity of well-defined studies currently renders a quantitative meta-analysis impossible, but permits us to develop a deductive framework for identifying the main mechanisms (and coupling thereof) through which climate extremes may act on the carbon cycle. We find that ecosystem responses can exceed the duration of the climate impacts via lagged effects on the carbon cycle. The expected regional impacts of future climate extremes will depend on changes in the probability and severity of their occurrence, on the compound effects and timing of different climate extremes, and on the vulnerability of each land-cover type modulated by management. Although processes and sensitivities differ among biomes, based on expert opinion, we expect forests to exhibit the largest net effect of extremes due to their large carbon pools and fluxes, potentially large indirect and lagged impacts, and long recovery time to regain previous stocks. At the global scale, we presume that droughts have the strongest and most widespread effects on terrestrial carbon cycling. Comparing impacts of climate extremes identified via remote sensing vs. ground-based observational case studies reveals that many regions in the (sub-)tropics are understudied. Hence, regional investigations are needed to allow a global upscaling of the impacts of climate extremes on global carbon–climate feedbacks.


Global Change Biology | 2015

Detection and attribution of vegetation greening trend in China over the last 30 years

Shilong Piao; Guodong Yin; Jianguang Tan; Lei Cheng; Mengtian Huang; Yue Li; Ronggao Liu; Jiafu Mao; Ranga B. Myneni; Shushi Peng; Ben Poulter; Xiaoying Shi; Zhiqiang Xiao; Ning Zeng; Zhenzhong Zeng; Ying-Ping Wang

The reliable detection and attribution of changes in vegetation growth is a prerequisite for the development of strategies for the sustainable management of ecosystems. This is an extraordinary challenge. To our knowledge, this study is the first to comprehensively detect and attribute a greening trend in China over the last three decades. We use three different satellite-derived Leaf Area Index (LAI) datasets for detection as well as five different process-based ecosystem models for attribution. Rising atmospheric CO2 concentration and nitrogen deposition are identified as the most likely causes of the greening trend in China, explaining 85% and 41% of the average growing-season LAI trend (LAIGS) estimated by satellite datasets (average trend of 0.0070 yr(-1), ranging from 0.0035 yr(-1) to 0.0127 yr(-1)), respectively. The contribution of nitrogen deposition is more clearly seen in southern China than in the north of the country. Models disagree about the contribution of climate change alone to the trend in LAIGS at the country scale (one model shows a significant increasing trend, whereas two others show significant decreasing trends). However, the models generally agree on the negative impacts of climate change in north China and Inner Mongolia and the positive impact in the Qinghai-Xizang plateau. Provincial forest area change tends to be significantly correlated with the trend of LAIGS (P < 0.05), and marginally significantly (P = 0.07) correlated with the residual of LAIGS trend, calculated as the trend observed by satellite minus that estimated by models through considering the effects of climate change, rising CO2 concentration and nitrogen deposition, across different provinces. This result highlights the important role of Chinas afforestation program in explaining the spatial patterns of trend in vegetation growth.


Nature Communications | 2014

Evidence for a weakening relationship between interannual temperature variability and northern vegetation activity.

Shilong Piao; Huijuan Nan; Chris Huntingford; Philippe Ciais; Pierre Friedlingstein; Stephen Sitch; Shushi Peng; Anders Ahlström; Josep G. Canadell; Nan Cong; Sam Levis; Peter E. Levy; Lingli Liu; Mark R. Lomas; Jiafu Mao; Ranga B. Myneni; Philippe Peylin; Ben Poulter; Xiaoying Shi; Guodong Yin; Nicolas Viovy; Tao Wang; Wang X; Soenke Zaehle; Ning Zeng; Zhenzhong Zeng; Anping Chen

Satellite-derived Normalized Difference Vegetation Index (NDVI), a proxy of vegetation productivity, is known to be correlated with temperature in northern ecosystems. This relationship, however, may change over time following alternations in other environmental factors. Here we show that above 30°N, the strength of the relationship between the interannual variability of growing season NDVI and temperature (partial correlation coefficient RNDVI-GT) declined substantially between 1982 and 2011. This decrease in RNDVI-GT is mainly observed in temperate and arctic ecosystems, and is also partly reproduced by process-based ecosystem model results. In the temperate ecosystem, the decrease in RNDVI-GT coincides with an increase in drought. In the arctic ecosystem, it may be related to a nonlinear response of photosynthesis to temperature, increase of hot extreme days and shrub expansion over grass-dominated tundra. Our results caution the use of results from interannual time scales to constrain the decadal response of plants to ongoing warming.


Nature | 2017

Compensatory water effects link yearly global land CO2 sink changes to temperature.

Martin Jung; Markus Reichstein; Christopher R. Schwalm; Chris Huntingford; Stephen Sitch; Anders Ahlström; Almut Arneth; Gustau Camps-Valls; Philippe Ciais; Pierre Friedlingstein; Fabian Gans; Kazuhito Ichii; Atul K. Jain; Etsushi Kato; Dario Papale; Ben Poulter; Botond Ráduly; Christian Rödenbeck; Gianluca Tramontana; Nicolas Viovy; Ying-Ping Wang; Ulrich Weber; Sönke Zaehle; Ning Zeng

Large interannual variations in the measured growth rate of atmospheric carbon dioxide (CO2) originate primarily from fluctuations in carbon uptake by land ecosystems. It remains uncertain, however, to what extent temperature and water availability control the carbon balance of land ecosystems across spatial and temporal scales. Here we use empirical models based on eddy covariance data and process-based models to investigate the effect of changes in temperature and water availability on gross primary productivity (GPP), terrestrial ecosystem respiration (TER) and net ecosystem exchange (NEE) at local and global scales. We find that water availability is the dominant driver of the local interannual variability in GPP and TER. To a lesser extent this is true also for NEE at the local scale, but when integrated globally, temporal NEE variability is mostly driven by temperature fluctuations. We suggest that this apparent paradox can be explained by two compensatory water effects. Temporal water-driven GPP and TER variations compensate locally, dampening water-driven NEE variability. Spatial water availability anomalies also compensate, leaving a dominant temperature signal in the year-to-year fluctuations of the land carbon sink. These findings help to reconcile seemingly contradictory reports regarding the importance of temperature and water in controlling the interannual variability of the terrestrial carbon balance. Our study indicates that spatial climate covariation drives the global carbon cycle response.


Global Change Biology | 2014

Spatial variability and temporal trends in water‐use efficiency of European forests

Matthias Saurer; Renato Spahni; David Frank; Fortunat Joos; Markus Leuenberger; Neil J. Loader; Danny McCarroll; Mary Gagen; Ben Poulter; Rolf T. W. Siegwolf; Laia Andreu-Hayles; Tatjana Boettger; Isabel Dorado Liñán; Ian J. Fairchild; Michael Friedrich; Emilia Gutiérrez; Marika Haupt; Emmi Hilasvuori; Ingo Heinrich; Gerd Helle; Håkan Grudd; Risto Jalkanen; Tom Levanič; Hans W. Linderholm; Iain Robertson; Eloni Sonninen; Kerstin Treydte; John S. Waterhouse; Ewan Woodley; Peter M. Wynn

The increasing carbon dioxide (CO2 ) concentration in the atmosphere in combination with climatic changes throughout the last century are likely to have had a profound effect on the physiology of trees: altering the carbon and water fluxes passing through the stomatal pores. However, the magnitude and spatial patterns of such changes in natural forests remain highly uncertain. Here, stable carbon isotope ratios from a network of 35 tree-ring sites located across Europe are investigated to determine the intrinsic water-use efficiency (iWUE), the ratio of photosynthesis to stomatal conductance from 1901 to 2000. The results were compared with simulations of a dynamic vegetation model (LPX-Bern 1.0) that integrates numerous ecosystem and land-atmosphere exchange processes in a theoretical framework. The spatial pattern of tree-ring derived iWUE of the investigated coniferous and deciduous species and the model results agreed significantly with a clear south-to-north gradient, as well as a general increase in iWUE over the 20th century. The magnitude of the iWUE increase was not spatially uniform, with the strongest increase observed and modelled for temperate forests in Central Europe, a region where summer soil-water availability decreased over the last century. We were able to demonstrate that the combined effects of increasing CO2 and climate change leading to soil drying have resulted in an accelerated increase in iWUE. These findings will help to reduce uncertainties in the land surface schemes of global climate models, where vegetation-climate feedbacks are currently still poorly constrained by observational data.


Journal of Regional Science | 2011

Measuring the Impact of Sea-Level Rise on Coastal Real Estate: A Hedonic Property Model Approach

Okmyung Bin; Ben Poulter; Christopher F. Dumas; John C. Whitehead

This study estimates the impact of sea‐level rise on coastal real estate in North Carolina using a unique integration of geospatial and hedonic property data. With rates of sea‐level rise approximately double the global average, North Carolina has one of the most vulnerable coastlines in the United States. A range of modest sea‐level rise scenarios based on the IPCC Fourth Assessment Report projections (2007) are considered for four counties of North Carolina - New Hanover, Dare, Carteret, and Bertie - which represent a cross‐section of the states coastline in geographical distribution and economic development. High‐resolution topographic LIDAR (light detection and ranging) data are used to provide accurate inundation maps for the properties that will be at risk under six different sea‐level rise scenarios. A simulation approach based on spatial hedonic models is used to provide consistent estimates of the property value losses. Considering just four coastal counties in North Carolina, the value of residential property loss without discounting in 2030 (2080) is estimated to be about


Journal of Geophysical Research | 2015

Multicriteria evaluation of discharge simulation in Dynamic Global Vegetation Models

Hui Yang; Shilong Piao; Zhenzhong Zeng; Philippe Ciais; Yi Yin; Pierre Friedlingstein; Stephen Sitch; Anders Ahlström; Matthieu Guimberteau; Chris Huntingford; Sam Levis; Peter E. Levy; Mengtian Huang; Yue Li; Xiran Li; Mark R. Lomas; Philippe Peylin; Ben Poulter; Nicolas Viovy; Soenke Zaehle; Ning Zeng; Fang Zhao; Lei Wang

179 (


Journal of Geophysical Research | 2014

Fire regimes and variability in aboveground woody biomass in miombo woodland

Makoto Saito; Sebastiaan Luyssaert; Ben Poulter; Mathew Williams; Philippe Ciais; Valentin Bellassen; Casey M. Ryan; Chao Yue; P. Cadule; Philippe Peylin

526) million for the mid‐range sea‐level rise scenarios. Low‐lying and heavily developed areas in the northern coastline are comparatively more vulnerable to the effect of sea‐level rise than the other areas.


SIL Proceedings, 1922-2010 | 2008

Assessing carbon dynamics in Amazonia with the Dynamic Global Vegetation Model LPJmL - discharge evaluation

Fanny Langerwisch; Stefanie Rost; Ben Poulter; Heike Zimmermann-Timm; Wolfgang Cramer

In this study, we assessed the performance of discharge simulations by coupling the runoff from seven Dynamic Global Vegetation Models (DGVMs; LPJ, ORCHIDEE, Sheffield-DGVM, TRIFFID, LPJ-GUESS, CLM4CN, and OCN) to one river routing model for 16 large river basins. The results show that the seasonal cycle of river discharge is generally modeled well in the low and middle latitudes but not in the high latitudes, where the peak discharge (due to snow and ice melting) is underestimated. For the annual mean discharge, the DGVMs chained with the routing model show an underestimation. Furthermore, the 30 year trend of discharge is also underestimated. For the interannual variability of discharge, a skill score based on overlapping of probability density functions (PDFs) suggests that most models correctly reproduce the observed variability (correlation coefficient higher than 0.5; i.e., models account for 50% of observed interannual variability) except for the Lena, Yenisei, Yukon, and the Congo river basins. In addition, we compared the simulated runoff from different simulations where models were forced with either fixed or varying land use. This suggests that both seasonal and annual mean runoff has been little affected by land use change but that the trend itself of runoff is sensitive to land use change. None of the models when considered individually show significantly better performances than any other and in all basins. This suggests that based on current modeling capability, a regional-weighted average of multimodel ensemble projections might be appropriate to reduce the bias in future projection of global river discharge.

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Nicolas Viovy

Centre national de la recherche scientifique

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Philippe Peylin

Centre national de la recherche scientifique

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Josep G. Canadell

Commonwealth Scientific and Industrial Research Organisation

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