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Dive into the research topics where Lila Warszawski is active.

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Featured researches published by Lila Warszawski.


Proceedings of the National Academy of Sciences of the United States of America | 2014

Multimodel assessment of water scarcity under climate change

Jacob Schewe; Jens Heinke; Dieter Gerten; Ingjerd Haddeland; Nigel W. Arnell; Douglas B. Clark; Rutger Dankers; Stephanie Eisner; B M Fekete; Felipe J. Colón-González; Simon N. Gosling; Hyungjun Kim; Xingcai Liu; Yoshimitsu Masaki; Felix T. Portmann; Yusuke Satoh; Tobias Stacke; Qiuhong Tang; Yoshihide Wada; Dominik Wisser; Torsten Albrecht; Katja Frieler; Franziska Piontek; Lila Warszawski; P. Kabat

Water scarcity severely impairs food security and economic prosperity in many countries today. Expected future population changes will, in many countries as well as globally, increase the pressure on available water resources. On the supply side, renewable water resources will be affected by projected changes in precipitation patterns, temperature, and other climate variables. Here we use a large ensemble of global hydrological models (GHMs) forced by five global climate models and the latest greenhouse-gas concentration scenarios (Representative Concentration Pathways) to synthesize the current knowledge about climate change impacts on water resources. We show that climate change is likely to exacerbate regional and global water scarcity considerably. In particular, the ensemble average projects that a global warming of 2 °C above present (approximately 2.7 °C above preindustrial) will confront an additional approximate 15% of the global population with a severe decrease in water resources and will increase the number of people living under absolute water scarcity (<500 m3 per capita per year) by another 40% (according to some models, more than 100%) compared with the effect of population growth alone. For some indicators of moderate impacts, the steepest increase is seen between the present day and 2 °C, whereas indicators of very severe impacts increase unabated beyond 2 °C. At the same time, the study highlights large uncertainties associated with these estimates, with both global climate models and GHMs contributing to the spread. GHM uncertainty is particularly dominant in many regions affected by declining water resources, suggesting a high potential for improved water resource projections through hydrological model development.


Proceedings of the National Academy of Sciences of the United States of America | 2014

The Inter-Sectoral Impact Model Intercomparison Project (ISI-MIP): project framework.

Lila Warszawski; Katja Frieler; Veronika Huber; Franziska Piontek; Olivia Serdeczny; Jacob Schewe

The Inter-Sectoral Impact Model Intercomparison Project offers a framework to compare climate impact projections in different sectors and at different scales. Consistent climate and socio-economic input data provide the basis for a cross-sectoral integration of impact projections. The project is designed to enable quantitative synthesis of climate change impacts at different levels of global warming. This report briefly outlines the objectives and framework of the first, fast-tracked phase of Inter-Sectoral Impact Model Intercomparison Project, based on global impact models, and provides an overview of the participating models, input data, and scenario set-up.


Proceedings of the National Academy of Sciences of the United States of America | 2014

Carbon residence time dominates uncertainty in terrestrial vegetation responses to future climate and atmospheric CO2

Andrew D. Friend; Wolfgang Lucht; Tim Tito Rademacher; Rozenn Keribin; Richard A. Betts; P. Cadule; Philippe Ciais; Douglas B. Clark; Rutger Dankers; Pete Falloon; Akihiko Ito; R. Kahana; Axel Kleidon; Mark R. Lomas; Kazuya Nishina; Sebastian Ostberg; Ryan Pavlick; Philippe Peylin; Sibyll Schaphoff; Nicolas Vuichard; Lila Warszawski; Andy Wiltshire; F. Ian Woodward

Future climate change and increasing atmospheric CO2 are expected to cause major changes in vegetation structure and function over large fractions of the global land surface. Seven global vegetation models are used to analyze possible responses to future climate simulated by a range of general circulation models run under all four representative concentration pathway scenarios of changing concentrations of greenhouse gases. All 110 simulations predict an increase in global vegetation carbon to 2100, but with substantial variation between vegetation models. For example, at 4 °C of global land surface warming (510–758 ppm of CO2), vegetation carbon increases by 52–477 Pg C (224 Pg C mean), mainly due to CO2 fertilization of photosynthesis. Simulations agree on large regional increases across much of the boreal forest, western Amazonia, central Africa, western China, and southeast Asia, with reductions across southwestern North America, central South America, southern Mediterranean areas, southwestern Africa, and southwestern Australia. Four vegetation models display discontinuities across 4 °C of warming, indicating global thresholds in the balance of positive and negative influences on productivity and biomass. In contrast to previous global vegetation model studies, we emphasize the importance of uncertainties in projected changes in carbon residence times. We find, when all seven models are considered for one representative concentration pathway × general circulation model combination, such uncertainties explain 30% more variation in modeled vegetation carbon change than responses of net primary productivity alone, increasing to 151% for non-HYBRID4 models. A change in research priorities away from production and toward structural dynamics and demographic processes is recommended.


Proceedings of the National Academy of Sciences of the United States of America | 2014

Multisectoral climate impact hotspots in a warming world

Franziska Piontek; Christoph Müller; Thomas A. M. Pugh; Douglas B. Clark; Delphine Deryng; Joshua Elliott; Felipe de Jesus Colón González; Martina Flörke; Christian Folberth; Wietse Franssen; Katja Frieler; Andrew D. Friend; Simon N. Gosling; Deborah Hemming; Nikolay Khabarov; Hyungjun Kim; Mark R. Lomas; Yoshimitsu Masaki; Matthias Mengel; Andrew P. Morse; Kathleen Neumann; Kazuya Nishina; Sebastian Ostberg; Ryan Pavlick; Alex C. Ruane; Jacob Schewe; Erwin Schmid; Tobias Stacke; Qiuhong Tang; Zachary Tessler

The impacts of global climate change on different aspects of humanity’s diverse life-support systems are complex and often difficult to predict. To facilitate policy decisions on mitigation and adaptation strategies, it is necessary to understand, quantify, and synthesize these climate-change impacts, taking into account their uncertainties. Crucial to these decisions is an understanding of how impacts in different sectors overlap, as overlapping impacts increase exposure, lead to interactions of impacts, and are likely to raise adaptation pressure. As a first step we develop herein a framework to study coinciding impacts and identify regional exposure hotspots. This framework can then be used as a starting point for regional case studies on vulnerability and multifaceted adaptation strategies. We consider impacts related to water, agriculture, ecosystems, and malaria at different levels of global warming. Multisectoral overlap starts to be seen robustly at a mean global warming of 3 °C above the 1980–2010 mean, with 11% of the world population subject to severe impacts in at least two of the four impact sectors at 4 °C. Despite these general conclusions, we find that uncertainty arising from the impact models is considerable, and larger than that from the climate models. In a low probability-high impact worst-case assessment, almost the whole inhabited world is at risk for multisectoral pressures. Hence, there is a pressing need for an increased research effort to develop a more comprehensive understanding of impacts, as well as for the development of policy measures under existing uncertainty.


Environmental Research Letters | 2013

A multi-model analysis of risk of ecosystem shifts under climate change

Lila Warszawski; Andrew D. Friend; Sebastian Ostberg; Katja Frieler; Wolfgang Lucht; Sibyll Schaphoff; David J. Beerling; P. Cadule; Philippe Ciais; Douglas B. Clark; R. Kahana; Akihiko Ito; Rozenn Keribin; Axel Kleidon; Mark R. Lomas; Kazuya Nishina; Ryan Pavlick; Tim Tito Rademacher; Matthias Buechner; Franziska Piontek; Jacob Schewe; Olivia Serdeczny; Hans Joachim Schellnhuber

Climate change may pose a high risk of change to Earth’s ecosystems: shifting climatic boundaries may induce changes in the biogeochemical functioning and structures of ecosystems that render it difficult for endemic plant and animal species to survive in their current habitats. Here we aggregate changes in the biogeochemical ecosystem state as a proxy for the risk of these shifts at different levels of global warming. Estimates are based on simulations from seven global vegetation models (GVMs) driven by future climate scenarios, allowing for a quantification of the related uncertainties. 5‐19% of the naturally vegetated land surface is projected to be at risk of severe ecosystem change at 2 C of global warming (1GMT) above 1980‐2010 levels. However, there is limited agreement across the models about which geographical regions face the highest risk of change. The extent of regions at risk of severe ecosystem change is projected to rise with1GMT, approximately doubling between1GMTD 2 and 3 C, and reaching a median value of 35% of the naturally vegetated land surface for1GMTD 4 C. The regions projected to face the highest risk of severe ecosystem changes above1GMTD 4 C or earlier include the tundra and shrublands of the Tibetan Plateau, grasslands of eastern India, the boreal forests of northern Canada and Russia, the savanna region in the Horn of Africa, and the Amazon rainforest.


Earth’s Future | 2017

Understanding the weather signal in national crop‐yield variability

Katja Frieler; Bernhard Schauberger; Almut Arneth; Juraj Balkovič; James Chryssanthacopoulos; Delphine Deryng; Joshua Elliott; Christian Folberth; Nikolay Khabarov; Christoph Müller; Stefan Olin; Thomas A. M. Pugh; Sibyll Schaphoff; Jacob Schewe; Erwin Schmid; Lila Warszawski; Anders Levermann

Year-to-year variations in crop yields can have major impacts on the livelihoods of subsistence farmers and may trigger significant global price fluctuations, with severe consequences for people in developing countries. Fluctuations can be induced by weather conditions, management decisions, weeds, diseases, and pests. Although an explicit quantification and deeper understanding of weather-induced crop-yield variability is essential for adaptation strategies, so far it has only been addressed by empirical models. Here we provide conservative estimates of the fraction of reported national yield variabilities that can be attributed to weather by state-of-the-art, process-based crop model simulations. We find that observed weather variations can explain more than 50% of the variability in wheat yields in Australia, Canada, Spain, Hungary, and Romania. For maize, weather sensitivities exceed 50% in seven countries, including the US. The explained variance exceeds 50% for rice in Japan and South Korea and for soy in Argentina. Avoiding water stress by simulating yields assuming full irrigation shows that water limitation is a major driver of the observed variations in most of these countries. Identifying the mechanisms leading to crop-yield fluctuations is not only fundamental for dampening fluctuations, but is also important in the context of the debate on the attribution of loss and damage to climate change. Since process-based crop models not only account for weather influences on crop yields, but also represent human-management measures, they could become essential tools for differentiating these drivers, and for exploring options to reduce future yield fluctuations.


Environmental Research Letters | 2017

Assessing Inter-Sectoral Climate Change Risks: The Role of ISIMIP

Cynthia Rosenzweig; Nigel W. Arnell; Kristie L. Ebi; Hermann Lotze-Campen; Frank Raes; C. G. Rapley; Mark Stafford Smith; Wolfgang Cramer; Katja Frieler; Christopher Reyer; Jacob Schewe; Detlef P. van Vuuren; Lila Warszawski

The aims of the Inter-Sectoral Impact Model Intercomparison Project (ISIMIP) are to provide a framework for the intercomparison of global and regional-scale risk models within and across multiple sectors and to enable coordinated multi-sectoral assessments of different risks and their aggregated effects. The overarching goal is to use the knowledge gained to support adaptation and mitigation decisions that require regional or global perspectives within the context of facilitating transformations to enable sustainable development, despite inevitable climate shifts and disruptions. ISIMIP uses community-agreed sets of scenarios with standardized climate variables and socio-economic projections as inputs for projecting future risks and associated uncertainties, within and across sectors. The results are consistent multi-model assessments of sectoral risks and opportunities that enable studies that integrate across sectors, providing support for implementation of the Paris Agreement under the United Nations Framework Convention on Climate Change.


Earth System Dynamics Discussions | 2013

A trend-preserving bias correction – the ISI-MIP approach

S. Hempel; Katja Frieler; Lila Warszawski; Jacob Schewe; Franziska Piontek


Earth System Dynamics Discussions | 2015

A framework for the cross-sectoral integration of multi-model impact projections: land use decisions under climate impacts uncertainties

Katja Frieler; Anders Levermann; Joshua Elliott; Jens Heinke; Almut Arneth; Marc F. P. Bierkens; P. Ciais; Douglas B. Clark; Delphine Deryng; Petra Döll; P. D. Falloon; B M Fekete; Christian Folberth; Andrew D. Friend; C. Gellhorn; Simon N. Gosling; Ingjerd Haddeland; Nikolay Khabarov; Mark R. Lomas; Yoshimitsu Masaki; Kazuya Nishina; Kathleen Neumann; Taikan Oki; Ryan Pavlick; Alex C. Ruane; Erwin Schmid; Christoph Schmitz; Tobias Stacke; Elke Stehfest; Qiuhong Tang


Geoscientific Model Development | 2016

Assessing the impacts of 1.5° C global warming - simulation protocol of the Inter-Sectoral Impact Model Intercomparison Project (ISIMIP2b)

Katja Frieler; Stefan Lange; Franziska Piontek; Christopher Reyer; Jacob Schewe; Lila Warszawski; Fang Zhao; L P Chini; Sebastien Denvil; Kerry Emanuel; Tobias Geiger; Kate Halladay; George C. Hurtt; Matthias Mengel; Daisuke Murakami; Sebastian Ostberg; Alexander Popp; Riccardo E. M. Riva; Miodrag Stevanovic; Tatsuo Suzuki; Jan Volkholz; Eleanor J. Burke; Philippe Ciais; Kristie L. Ebi; Tyler D. Eddy; Joshua Elliott; Eric D. Galbraith; Simon N. Gosling; Fred Hattermann; Thomas Hickler

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Dive into the Lila Warszawski's collaboration.

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Katja Frieler

Potsdam Institute for Climate Impact Research

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Jacob Schewe

Potsdam Institute for Climate Impact Research

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Franziska Piontek

Potsdam Institute for Climate Impact Research

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Olivia Serdeczny

Potsdam Institute for Climate Impact Research

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Dim Coumou

Potsdam Institute for Climate Impact Research

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Michiel Schaeffer

Wageningen University and Research Centre

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Alexander Robinson

Complutense University of Madrid

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Sophie Adams

University of New South Wales

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