Evaluation of climate‐related carbon turnover processes in global vegetation models for boreal and temperate forests
暂无分享,去创建一个
Shaun Quegan | Nuno Carvalhais | Philippe Ciais | Markus Tum | Axel Kleidon | Christian Beer | Andy Wiltshire | Akihiko Ito | M. Lomas | P. Ciais | A. Ito | S. Quegan | A. Friend | C. Beer | N. Carvalhais | A. Wiltshire | S. Schaphoff | A. Kleidon | M. Thurner | T. Rademacher | M. Tum | Sibyll Schaphoff | Martin Thurner | Andrew D Friend | Mark R Lomas | Tim T Rademacher
[1] Christopher J. Still,et al. Forest responses to increasing aridity and warmth in the southwestern United States , 2010, Proceedings of the National Academy of Sciences.
[2] Cristina Milesi,et al. User's Guide GPP and NPP (MOD17A2/A3) Products NASA MODIS Land Algorithm , 2003 .
[3] Anja Rammig,et al. Impacts of changing frost regimes on Swedish forests: Incorporating cold hardiness in a regional ecosystem model , 2010 .
[4] F. Woodward,et al. Carbon residence time dominates uncertainty in terrestrial vegetation responses to future climate and atmospheric CO2 , 2013, Proceedings of the National Academy of Sciences.
[5] C. Jones,et al. Development and evaluation of an Earth-System model - HadGEM2 , 2011 .
[6] L. Bärring,et al. Assessment of the impacts of climate change and weather extremes on boreal forests in northern Europe, focusing on Norway spruce , 2006 .
[7] P. Cox,et al. Evaluating the Land and Ocean Components of the Global Carbon Cycle in the CMIP5 Earth System Models , 2013 .
[8] G. Hurtt,et al. HESFIRE: a global fire model to explore the role of anthropogenic and weather drivers , 2015 .
[9] W. Larcher,et al. Frost Survival of Plants: Responses and Adaptation to Freezing Stress , 1987 .
[10] K. Thonicke,et al. Identifying environmental controls on vegetation greenness phenology through model–data integration , 2014 .
[11] Maurizio Santoro,et al. Global covariation of carbon turnover times with climate in terrestrial ecosystems , 2014, Nature.
[12] Wolfgang Lucht,et al. Small net carbon dioxide uptake by Russian forests during 1981–1999 , 2006 .
[13] T. Esch,et al. Global NPP and straw bioenergy trends for 2000–2014 , 2016 .
[14] P. Friedlingstein,et al. Toward an allocation scheme for global terrestrial carbon models , 1999 .
[15] K. Ranson,et al. Wildfires in northern Siberian larch dominated communities , 2011 .
[16] J. Nash,et al. River flow forecasting through conceptual models part I — A discussion of principles☆ , 1970 .
[17] Nicholas G Smith,et al. Plant respiration and photosynthesis in global‐scale models: incorporating acclimation to temperature and CO2 , 2013, Global change biology.
[18] W. Kurz,et al. Mountain pine beetle and forest carbon feedback to climate change , 2008, Nature.
[19] P. Ciais,et al. Carbon accumulation in European forests , 2008 .
[20] J. Hicke,et al. Cross-scale Drivers of Natural Disturbances Prone to Anthropogenic Amplification: The Dynamics of Bark Beetle Eruptions , 2008 .
[21] F. Piontek,et al. The Inter-Sectoral Impact Model Intercomparison Project (ISI–MIP): Project framework , 2013, Proceedings of the National Academy of Sciences.
[22] G. Powell,et al. Terrestrial Ecoregions of the World: A New Map of Life on Earth , 2001 .
[23] Shaopeng Wang,et al. Forest annual carbon cost: a global-scale analysis of autotrophic respiration. , 2010, Ecology.
[24] Christina Eisfelder,et al. Quantifying the carbon uptake by vegetation for Europe on a 1 km 2 resolution using a remote sensing driven vegetation model , 2013 .
[25] Shohei Murayama,et al. Greenhouse Gas Budget of a Cool-Temperate Deciduous Broad-Leaved Forest in Japan Estimated Using a Process-Based Model , 2010, Ecosystems.
[26] P. Cox,et al. The Joint UK Land Environment Simulator (JULES), model description – Part 2: Carbon fluxes and vegetation dynamics , 2011 .
[27] J. Régnière,et al. Assessing the Impacts of Global Warming on Forest Pest Dynamics , 2022 .
[28] A. Carroll,et al. The biology and epidemiology of the mountain pine beetle in lodgepole pine forests. , 2006 .
[29] A. Taylor,et al. Widespread Increase of Tree Mortality Rates in the Western United States , 2009, Science.
[30] P. Blanken,et al. Joint control of terrestrial gross primary productivity by plant phenology and physiology , 2015, Proceedings of the National Academy of Sciences.
[31] Markus Reichstein,et al. CO2 balance of boreal, temperate, and tropical forests derived from a global database , 2007 .
[32] Trevor Hastie,et al. Statistical Models in S , 1991 .
[33] S. Seneviratne,et al. Climate extremes and the carbon cycle , 2013, Nature.
[34] Maria Conceição A. Leite,et al. A model for coupling fire and insect outbreak in forests , 2014 .
[35] M. Lomas,et al. Decomposing uncertainties in the future terrestrial carbon budget associated with emission scenarios, climate projections, and ecosystem simulations using the ISI-MIP results , 2014 .
[36] Markus Tum,et al. Validation of modelled forest biomass in Germany using BETHY/DLR , 2011 .
[37] F. Zwiers,et al. Climate extremes indices in the CMIP5 multimodel ensemble: Part 2. Future climate projections , 2013 .
[38] C. Schmullius,et al. Effects of soil freezing and thawing on vegetation carbon density in Siberia: A modeling analysis with the Lund‐Potsdam‐Jena Dynamic Global Vegetation Model (LPJ‐DGVM) , 2007 .
[39] Maosheng Zhao,et al. Improvements of the MODIS terrestrial gross and net primary production global data set , 2005 .
[40] Ge Sun,et al. Effects of forest management on productivity and carbon sequestration: A review and hypothesis , 2015 .
[41] I. C. Prentice,et al. A dynamic global vegetation model for studies of the coupled atmosphere‐biosphere system , 2005 .
[42] H. Haberl,et al. Biomass turnover time in terrestrial ecosystems halved by land use , 2016 .
[43] W. Knorr,et al. Inversion of terrestrial ecosystem model parameter values against eddy covariance measurements by Monte Carlo sampling , 2005 .
[44] Pierre Friedlingstein,et al. Uncertainties in CMIP5 Climate Projections due to Carbon Cycle Feedbacks , 2014 .
[45] F. Woodward,et al. Terrestrial Gross Carbon Dioxide Uptake: Global Distribution and Covariation with Climate , 2010, Science.
[46] N. McDowell,et al. The interdependence of mechanisms underlying climate-driven vegetation mortality. , 2011, Trends in ecology & evolution.
[47] Maosheng Zhao,et al. Drought-Induced Reduction in Global Terrestrial Net Primary Production from 2000 Through 2009 , 2010, Science.
[48] C. Schmullius,et al. Large‐scale variation in boreal and temperate forest carbon turnover rate related to climate , 2016 .
[49] C. Field,et al. Allometric growth and allocation in forests: a perspective from FLUXNET. , 2011, Ecological applications : a publication of the Ecological Society of America.
[50] Urs Wegmüller,et al. Retrieval of growing stock volume in boreal forest using hyper-temporal series of Envisat ASAR ScanSAR backscatter measurements , 2011 .
[51] Joseph M. Craine,et al. Mechanisms of plant competition for nutrients, water and light , 2013 .
[52] W. Cohen,et al. Evaluation of MODIS NPP and GPP products across multiple biomes. , 2006 .
[53] Andrew White,et al. Evaluation and analysis of a dynamic terrestrial ecosystem model under preindustrial conditions at the global scale , 2000 .
[54] Ke Zhang,et al. Variation in stem mortality rates determines patterns of above‐ground biomass in Amazonian forests: implications for dynamic global vegetation models , 2016, Global change biology.
[55] Markus Reichstein,et al. Effects of climate extremes on the terrestrial carbon cycle: concepts, processes and potential future impacts , 2015, Global change biology.
[56] A. Bondeau,et al. Comparing global models of terrestrial net primary productivity (NPP): overview and key results , 1999 .
[57] Wolfgang Knorr,et al. Annual and interannual CO2 exchanges of the terrestrial biosphere: process-based simulations and uncertainties , 2000 .
[58] Benjamin Smith,et al. Robustness and uncertainty in terrestrial ecosystem carbon response to CMIP5 climate change projections , 2012 .
[59] S. Sitch,et al. The role of fire disturbance for global vegetation dynamics: coupling fire into a Dynamic Global Vegetation Model , 2008 .
[60] S. Trumbore,et al. Thirst beats hunger - declining hydration during drought prevents carbon starvation in Norway spruce saplings. , 2013, The New phytologist.
[61] Sandy P. Harrison,et al. The influence of vegetation, fire spread and fire behaviour on biomass burning and trace gas emissions: results from a process-based model , 2010 .
[62] Andrew D. Friend,et al. A process-based, terrestrial biosphere model of ecosystem dynamics (Hybrid v3.0) , 1997 .
[63] Urs Wegmüller,et al. Forest growing stock volume of the northern hemisphere: Spatially explicit estimates for 2010 derived from Envisat ASAR , 2015 .
[64] J. Régnière,et al. Modeling cold tolerance in the mountain pine beetle, Dendroctonus ponderosae. , 2007, Journal of insect physiology.
[65] J. Sperry,et al. Xylem embolism in response to freeze-thaw cycles and water stress in ring-porous, diffuse-porous, and conifer species. , 1992, Plant physiology.
[66] N. McDowell,et al. A global overview of drought and heat-induced tree mortality reveals emerging climate change risks for forests , 2010 .
[67] W. Cohen,et al. Site‐level evaluation of satellite‐based global terrestrial gross primary production and net primary production monitoring , 2005 .
[68] O. Phillips,et al. Residence times of woody biomass in tropical forests , 2013 .
[69] Pierre Friedlingstein,et al. Controls on terrestrial carbon feedbacks by productivity versus turnover in the CMIP5 Earth System Models , 2015 .
[70] M. I C H A E,et al. Carbon allocation in forest ecosystems , 2007 .
[71] Jeffrey Q. Chambers,et al. MEASURING NET PRIMARY PRODUCTION IN FORESTS: CONCEPTS AND FIELD METHODS , 2001 .
[72] Mark G Tjoelker,et al. Thermal acclimation and the dynamic response of plant respiration to temperature. , 2003, Trends in plant science.
[73] B. Wilson,et al. The mountain pine beetle: a synthesis of biology, management and impacts on lodgepole pine. , 2006 .
[74] Robert E. Dickinson,et al. Forest greenness after the massive 2008 Chinese ice storm: integrated effects of natural processes and human intervention , 2012 .
[75] S S I T C H,et al. Evaluation of Ecosystem Dynamics, Plant Geography and Terrestrial Carbon Cycling in the Lpj Dynamic Global Vegetation Model , 2022 .
[76] M. Lomas,et al. Evaluation of terrestrial carbon cycle models for their response to climate variability and to CO2 trends , 2013, Global change biology.
[77] P. Ciais,et al. Fertile forests produce biomass more efficiently. , 2012, Ecology letters.
[78] Atul K. Jain,et al. A model-data comparison of gross primary productivity: Results from the North American Carbon Program site synthesis , 2012 .
[79] K. Treseder,et al. Nitrogen limitation of net primary productivity in terrestrial ecosystems is globally distributed. , 2008, Ecology.
[80] P. Ciais,et al. Improving the dynamics of Northern Hemisphere high-latitude vegetation in the ORCHIDEE ecosystem model , 2015 .
[81] Maosheng Zhao,et al. A Continuous Satellite-Derived Measure of Global Terrestrial Primary Production , 2004 .
[82] P. Ciais,et al. Mortality as a key driver of the spatial distribution of aboveground biomass in Amazonian forest: results from a dynamic vegetation model , 2010 .
[83] F. Woodward,et al. Vegetation dynamics – simulating responses to climatic change , 2004, Biological reviews of the Cambridge Philosophical Society.
[84] P. Ciais,et al. Biomass production efficiency controlled by management in temperate and boreal ecosystems , 2015 .
[85] C. Schmullius,et al. Carbon stock and density of northern boreal and temperate forests , 2014 .
[86] A. Belward,et al. GLC2000: a new approach to global land cover mapping from Earth observation data , 2005 .
[87] Darren T. Drewry,et al. The Jena Diversity-Dynamic Global Vegetation Model (JeDi-DGVM): a diverse approach to representing t , 2012 .
[88] Akihiko Ito,et al. A simulation model of the carbon cycle in land ecosystems (Sim-CYCLE) : A description based on dry-matter production theory and plot-scale validation , 2002 .