Literature DB >> 30881482

An AgMIP framework for improved agricultural representation in IAMs.

Alex C Ruane1, Cynthia Rosenzweig1, Senthold Asseng2, Kenneth J Boote2, Joshua Elliott3, Frank Ewert4,5, James W Jones2,6, Pierre Martre7, Sonali P McDermid8, Christoph Müller9, Abigail Snyder10, Peter J Thorburn11.   

Abstract

Integrated assessment models (IAMs) hold great potential to assess how future agricultural systems will be shaped by socioeconomic development, technological innovation, and changing climate conditions. By coupling with climate and crop model emulators, IAMs have the potential to resolve important agricultural feedback loops and identify unintended consequences of socioeconomic development for agricultural systems. Here we propose a framework to develop robust representation of agricultural system responses within IAMs, linking downstream applications with model development and the coordinated evaluation of key climate responses from local to global scales. We survey the strengths and weaknesses of protocol-based assessments linked to the Agricultural Model Intercomparison and Improvement Project (AgMIP), each utilizing multiple sites and models to evaluate crop response to core climate changes including shifts in carbon dioxide concentration, temperature, and water availability, with some studies further exploring how climate responses are affected by nitrogen levels and adaptation in farm systems. Site-based studies with carefully calibrated models encompass the largest number of activities; however they are limited in their ability to capture the full range of global agricultural system diversity. Representative site networks provide more targeted response information than broadly-sampled networks, with limitations stemming from difficulties in covering the diversity of farming systems. Global gridded crop models provide comprehensive coverage, although with large challenges for calibration and quality control of inputs. Diversity in climate responses underscores that crop model emulators must distinguish between regions and farming system while recognizing model uncertainty. Finally, to bridge the gap between bottom-up and top-down approaches we recommend the deployment of a hybrid climate response system employing a representative network of sites to bias-correct comprehensive gridded simulations, opening the door to accelerated development and a broad range of applications.

Entities:  

Year:  2017        PMID: 30881482      PMCID: PMC6417889          DOI: 10.1088/1748-9326/aa8da6

Source DB:  PubMed          Journal:  Environ Res Lett        ISSN: 1748-9326            Impact factor:   6.793


  4 in total

1.  Earth observations and integrative models in support of food and water security.

Authors:  Stephanie Schollaert Uz; Alex C Ruane; Bryan N Duncan; Compton J Tucker; George J Huffman; Iliana E Mladenova; Batu Osmanoglu; Thomas R H Holmes; Amy McNally; Christa Peters-Lidard; John D Bolten; Narendra Das; Matthew Rodell; Sean McCartney; Martha C Anderson; Brad Doorn
Journal:  Remote Sens Earth Syst Sci       Date:  2019-03-15

Review 2.  Towards a multiscale crop modelling framework for climate change adaptation assessment.

Authors:  Bin Peng; Kaiyu Guan; Jinyun Tang; Elizabeth A Ainsworth; Senthold Asseng; Carl J Bernacchi; Mark Cooper; Evan H Delucia; Joshua W Elliott; Frank Ewert; Robert F Grant; David I Gustafson; Graeme L Hammer; Zhenong Jin; James W Jones; Hyungsuk Kimm; David M Lawrence; Yan Li; Danica L Lombardozzi; Amy Marshall-Colon; Carlos D Messina; Donald R Ort; James C Schnable; C Eduardo Vallejos; Alex Wu; Xinyou Yin; Wang Zhou
Journal:  Nat Plants       Date:  2020-04-15       Impact factor: 15.793

Review 3.  Can Crop Models Identify Critical Gaps in Genetics, Environment, and Management Interactions?

Authors:  Claudio O Stöckle; Armen R Kemanian
Journal:  Front Plant Sci       Date:  2020-06-12       Impact factor: 5.753

4.  Biophysical and economic implications for agriculture of +1.5° and +2.0°C global warming using AgMIP Coordinated Global and Regional Assessments.

Authors:  Alex C Ruane; John Antle; Joshua Elliott; Christian Folberth; Gerrit Hoogenboom; Daniel Mason-D'Croz; Christoph Müller; Cheryl Porter; Meridel M Phillips; Rubi M Raymundo; Ronald Sands; Roberto O Valdivia; Jeffrey W White; Keith Wiebe; Cynthia Rosenzweig
Journal:  Clim Res       Date:  2018-09-04       Impact factor: 1.972

  4 in total

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