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Dive into the research topics where Giacomo De Sanctis is active.

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Featured researches published by Giacomo De Sanctis.


Global Change Biology | 2014

How do various maize crop models vary in their responses to climate change factors

Simona Bassu; Nadine Brisson; Jean Louis Durand; Kenneth J. Boote; Jon I. Lizaso; James W. Jones; Cynthia Rosenzweig; Alex C. Ruane; Myriam Adam; Christian Baron; Bruno Basso; Christian Biernath; Hendrik Boogaard; Sjaak Conijn; Marc Corbeels; Delphine Deryng; Giacomo De Sanctis; Sebastian Gayler; Patricio Grassini; Jerry L. Hatfield; Steven Hoek; Cesar Izaurralde; Raymond Jongschaap; Armen R. Kemanian; K. Christian Kersebaum; Soo-Hyung Kim; Naresh S. Kumar; David Makowski; Christoph Müller; Claas Nendel

Potential consequences of climate change on crop production can be studied using mechanistic crop simulation models. While a broad variety of maize simulation models exist, it is not known whether different models diverge on grain yield responses to changes in climatic factors, or whether they agree in their general trends related to phenology, growth, and yield. With the goal of analyzing the sensitivity of simulated yields to changes in temperature and atmospheric carbon dioxide concentrations [CO2 ], we present the largest maize crop model intercomparison to date, including 23 different models. These models were evaluated for four locations representing a wide range of maize production conditions in the world: Lusignan (France), Ames (USA), Rio Verde (Brazil) and Morogoro (Tanzania). While individual models differed considerably in absolute yield simulation at the four sites, an ensemble of a minimum number of models was able to simulate absolute yields accurately at the four sites even with low data for calibration, thus suggesting that using an ensemble of models has merit. Temperature increase had strong negative influence on modeled yield response of roughly -0.5 Mg ha(-1) per °C. Doubling [CO2 ] from 360 to 720 μmol mol(-1) increased grain yield by 7.5% on average across models and the sites. That would therefore make temperature the main factor altering maize yields at the end of this century. Furthermore, there was a large uncertainty in the yield response to [CO2 ] among models. Model responses to temperature and [CO2 ] did not differ whether models were simulated with low calibration information or, simulated with high level of calibration information.


Nature plants | 2017

The uncertainty of crop yield projections is reduced by improved temperature response functions

Enli Wang; Pierre Martre; Zhigan Zhao; Frank Ewert; Andrea Maiorano; Reimund P. Rötter; Bruce A. Kimball; Michael J. Ottman; Gerard W. Wall; Jeffrey W. White; Matthew P. Reynolds; Phillip D. Alderman; Pramod K. Aggarwal; Jakarat Anothai; Bruno Basso; Christian Biernath; Davide Cammarano; Andrew J. Challinor; Giacomo De Sanctis; Jordi Doltra; E. Fereres; Margarita Garcia-Vila; Sebastian Gayler; Gerrit Hoogenboom; Leslie A. Hunt; Roberto C. Izaurralde; Mohamed Jabloun; Curtis D. Jones; Kurt Christian Kersebaum; Ann-Kristin Koehler

Increasing the accuracy of crop productivity estimates is a key element in planning adaptation strategies to ensure global food security under climate change. Process-based crop models are effective means to project climate impact on crop yield, but have large uncertainty in yield simulations. Here, we show that variations in the mathematical functions currently used to simulate temperature responses of physiological processes in 29 wheat models account for >50% of uncertainty in simulated grain yields for mean growing season temperatures from 14 °C to 33 °C. We derived a set of new temperature response functions that when substituted in four wheat models reduced the error in grain yield simulations across seven global sites with different temperature regimes by 19% to 50% (42% average). We anticipate the improved temperature responses to be a key step to improve modelling of crops under rising temperature and climate change, leading to higher skill of crop yield projections.


Archive | 2015

The AgMIP Coordinated Climate-Crop Modeling Project (C3MP): Methods and Protocols

S. McDermid; Alex C. Ruane; N. Hudson; Cynthia Rosenzweig; L. R. Ahuja; S. S. Anapalli; J. Anothai; Senthold Asseng; Benjamin Dumont; F. Bert; Patrick Bertuzzi; V. S. Bhatia; Marco Bindi; Ian Broad; Davide Cammarano; Ramiro Carretero; Uran Chung; Giacomo De Sanctis; Thanda Dhliwayo; Frank Ewert; Roberto Ferrise; Thomas Gaiser; Guillermo Garcia; Sika Gbegbelegbe; Vellingiri Geethalakshmi; Edward Gerardeaux; Richard Goldberg; Brian Grant; Edgardo Guevara; Holger Hoffmann

Climate change is expected to alter a multitude of factors important to agricultural systems, including pests, diseases, weeds, extreme climate events, water resources, soil degradation, and socio-economic pressures. Changes to carbon dioxide concentration ([CO2]), temperature, andwater (CTW) will be the primary drivers of change in crop growth and agricultural systems. Therefore, establishing the CTW-change sensitivity of crop yields is an urgent research need and warrants diverse methods of investigation. Crop models provide a biophysical, process-based tool to investigate crop responses across varying environmental conditions and farm management techniques, and have been applied in climate impact assessment by using a variety of methods (White et al., 2011, and references therein). However, there is a significant amount of divergence between various crop models’ responses to CTW changes (R¨otter et al., 2011). While the application of a site-based crop model is relatively simple, the coordination of such agricultural impact assessments on larger scales requires consistent and timely contributions from a large number of crop modelers, each time a new global climate model (GCM) scenario or downscaling technique is created. A coordinated, global effort to rapidly examine CTW sensitivity across multiple crops, crop models, and sites is needed to aid model development and enhance the assessment of climate impacts (Deser et al., 2012)...


Global Change Biology | 2018

Multimodel ensembles improve predictions of crop–environment–management interactions

Daniel Wallach; Pierre Martre; Bing Liu; Senthold Asseng; Frank Ewert; Peter J. Thorburn; Martin K. van Ittersum; Pramod K. Aggarwal; Mukhtar Ahmed; Bruni Basso; Chritian Biernath; Davide Cammarano; Andrew J. Challinor; Giacomo De Sanctis; Benjamin Dumont; Ehsan Eyshi Rezaei; E. Fereres; Glenn Fitzgerald; Y Gao; Margarita Garcia-Vila; Sebastian Gayler; Christine Girousse; Gerrit Hoogenboom; Heidi Horan; Roberto C. Izaurralde; Curtis D. Jones; Belay T. Kassie; Christian Kersebaum; Christian Klein; Ann-Kristin Koehler

A recent innovation in assessment of climate change impact on agricultural production has been to use crop multimodel ensembles (MMEs). These studies usually find large variability between individual models but that the ensemble mean (e-mean) and median (e-median) often seem to predict quite well. However, few studies have specifically been concerned with the predictive quality of those ensemble predictors. We ask what is the predictive quality of e-mean and e-median, and how does that depend on the ensemble characteristics. Our empirical results are based on five MME studies applied to wheat, using different data sets but the same 25 crop models. We show that the ensemble predictors have quite high skill and are better than most and sometimes all individual models for most groups of environments and most response variables. Mean squared error of e-mean decreases monotonically with the size of the ensemble if models are added at random, but has a minimum at usually 2-6 models if best-fit models are added first. Our theoretical results describe the ensemble using four parameters: average bias, model effect variance, environment effect variance, and interaction variance. We show analytically that mean squared error of prediction (MSEP) of e-mean will always be smaller than MSEP averaged over models and will be less than MSEP of the best model if squared bias is less than the interaction variance. If models are added to the ensemble at random, MSEP of e-mean will decrease as the inverse of ensemble size, with a minimum equal to squared bias plus interaction variance. This minimum value is not necessarily small, and so it is important to evaluate the predictive quality of e-mean for each target population of environments. These results provide new information on the advantages of ensemble predictors, but also show their limitations.


Nature plants | 2017

Author Correction: The uncertainty of crop yield projections is reduced by improved temperature response functions

Enli Wang; Pierre Martre; Zhigan Zhao; Frank Ewert; Andrea Maiorano; Reimund P. Rötter; Bruce A. Kimball; Michael J. Ottman; Gerard W. Wall; Jeffrey W. White; Matthew P. Reynolds; Phillip D. Alderman; Pramod K. Aggarwal; Jakarat Anothai; Bruno Basso; Christian Biernath; Davide Cammarano; Andrew J. Challinor; Giacomo De Sanctis; Jordi Doltra; Benjamin Dumont; E. Fereres; Margarita Garcia-Vila; Sebastian Gayler; Gerrit Hoogenboom; Leslie A. Hunt; Roberto C. Izaurralde; Mohamed Jabloun; Curtis D. Jones; Kurt Christian Kersebaum

Nature Plants3, 17102 (2017); published online 17 July 2017; corrected online 27 September 2017.


Handbook of Climate Change and Agroecosystems: The Agricultural Model Intercomparison and Improvement Project (AgMIP) | 2015

Statistical Analysis of Large Simulated Yield Datasets for Studying Climate Effects

David Makowski; Senthold Asseng; Frank Ewert; Simona Bassu; Jean-Louis Durand; Pierre Martre; Myriam Adam; Pramod K. Aggarwal; Carlos Angulo; Chritian Baron; Bruno Basso; Patrick Bertuzzi; Christian Biemath; Hendrik Boogaard; Kenneth J. Boote; Nadine Brisson; Davide Cammarano; Andrew J. Challinor; Sjakk J. G. Conijn; Marc Corbeels; Delphine Deryng; Giacomo De Sanctis; Jordi Doltra; Sebastian Gayler; Richard Goldberg; Patricio Grassini; Jerry L. Hatfield; Lee Heng; Steven Hoek; Josh Hooker

Many simulation studies have been carried out to predict the effect of climate change on crop yield. Typically, in such study, one or several crop models are used to simulate series of crop yield values for different climate scenarios corresponding to different hypotheses of temperature, CO2 concentration, and rainfall changes. These studies usually generate large datasets including thousands of simulated yield data. The structure of these datasets is complex because they include series of yield values obtained with different mechanistic crop models for different climate scenarios defined from several climatic variables (temperature, CO2 etc.). Statistical methods can play a big part for analyzing large simulated crop yield datasets, especially when yields are simulated using an ensemble of crop models. A formal statistical analysis is then needed in order to estimate the effects of different climatic variables on yield, and to describe the variability of these effects across crop models. Statistical methods are also useful to develop meta-models i.e., statistical models summarizing complex mechanistic models. The objective of this paper is to present a random-coefficient statistical model (mixed-effects model) for analyzing large simulated crop yield datasets produced by the international project AgMip for several major crops. The proposed statistical model shows several interesting features; i) it can be used to estimate the effects of several climate variables on yield using crop model simulations, ii) it quantities the variability of the estimated climate change effects across crop models, ii) it quantifies the between-year yield variability, iv) it can be used as a meta-model in order to estimate effects of new climate change scenarios without running again the mechanistic crop models. The statistical model is first presented in details, and its value is then illustrated in a case study where the effects of climate change scenarios on different crops are compared. See more from this Division: Special Sessions See more from this Session: Symposium--Perspectives on Climate Effects on Agriculture: The International Efforts of AgMIP


Nature Climate Change | 2016

Similar estimates of temperature impacts on global wheat yield by three independent methods

Bing Liu; Senthold Asseng; Christoph Müller; Frank Ewert; Joshua Elliott; David B. Lobell; Pierre Martre; Alex C. Ruane; Daniel Wallach; James W. Jones; Cynthia Rosenzweig; Pramod K. Aggarwal; Phillip D. Alderman; Jakarat Anothai; Bruno Basso; Christian Biernath; Davide Cammarano; Andrew J. Challinor; Delphine Deryng; Giacomo De Sanctis; Jordi Doltra; E. Fereres; Christian Folberth; Margarita Garcia-Vila; Sebastian Gayler; Gerrit Hoogenboom; Leslie A. Hunt; Roberto C. Izaurralde; Mohamed Jabloun; Curtis D. Jones


Field Crops Research | 2017

Canopy temperature for simulation of heat stress in irrigated wheat in a semi-arid environment: A multi-model comparison

Heidi Webber; Pierre Martre; Senthold Asseng; Bruce A. Kimball; Jeffrey W. White; Michael J. Ottman; Gerard W. Wall; Giacomo De Sanctis; Jordi Doltra; R. F. Grant; Belay T. Kassie; Andrea Maiorano; Jørgen E. Olesen; Dominique Ripoche; Ehsan Eyshi Rezaei; Mikhail A. Semenov; Pierre Stratonovitch; Frank Ewert


European Journal of Agronomy | 2012

Long-term no tillage increased soil organic carbon content of rain-fed cereal systems in a Mediterranean area

Giacomo De Sanctis; Pier Paolo Roggero; Giovanna Seddaiu; Roberto Orsini; Cheryl H. Porter; James W. Jones


Journal of agricultural research | 2017

The International Heat Stress Genotype Experiment for modeling wheat response to heat: field experiments and AgMIP-Wheat multi-model simulations

Pierre Martre; Matthew P. Reynolds; Senthold Asseng; Frank Ewert; Phillip D. Alderman; Davide Cammarano; Andrea Maiorano; Alexander C. Ruane; Pramod K. Aggarwal; Jakarat Anothai; Bruno Basso; Christian Biernath; Andrew J. Challinor; Giacomo De Sanctis; Jordi Doltra; Benjamin Dumont; E. Fereres; Margarita Garcia-Vila; Sebastian Gayler; Gerrit Hoogenboom; Leslie A. Hunt; Roberto C. Izaurralde; Mohamed Jabloun; Curtis D. Jones; Belay T. Kassie; Kurt Christian Kersebaum; Ann-Kristin Koehler; Christoph Müller; Soora Naresh Kumar; Bing Liu

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Bruno Basso

Michigan State University

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Alex C. Ruane

Goddard Institute for Space Studies

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Jean-Louis Durand

Institut national de la recherche agronomique

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Pierre Martre

Institut national de la recherche agronomique

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Cynthia Rosenzweig

Goddard Institute for Space Studies

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