Literature DB >> 30055118

Multimodel ensembles improve predictions of crop-environment-management interactions.

Daniel Wallach1, Pierre Martre2, Bing Liu3,4, Senthold Asseng4, Frank Ewert5,6, Peter J Thorburn7, Martin van Ittersum8, Pramod K Aggarwal9, Mukhtar Ahmed10,11, Bruno Basso12,13, Christian Biernath14, Davide Cammarano15, Andrew J Challinor16,17, Giacomo De Sanctis18, Benjamin Dumont19, Ehsan Eyshi Rezaei5,20, Elias Fereres21, Glenn J Fitzgerald22,23, Y Gao4, Margarita Garcia-Vila21, Sebastian Gayler24, Christine Girousse25, Gerrit Hoogenboom4,26, Heidi Horan7, Roberto C Izaurralde27,28, Curtis D Jones28, Belay T Kassie4, Kurt C Kersebaum29, Christian Klein14, Ann-Kristin Koehler16, Andrea Maiorano2, Sara Minoli30, Christoph Müller30, Soora Naresh Kumar31, Claas Nendel29, Garry J O'Leary32, Taru Palosuo33, Eckart Priesack14, Dominique Ripoche34, Reimund P Rötter35,36, Mikhail A Semenov37, Claudio Stöckle10, Pierre Stratonovitch37, Thilo Streck24, Iwan Supit38, Fulu Tao33,39, Joost Wolf40, Zhao Zhang41.   

Abstract

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.
© 2018 John Wiley & Sons Ltd.

Entities:  

Keywords:  climate change impact; crop models; ensemble mean; ensemble median; multimodel ensemble; prediction

Mesh:

Year:  2018        PMID: 30055118     DOI: 10.1111/gcb.14411

Source DB:  PubMed          Journal:  Glob Chang Biol        ISSN: 1354-1013            Impact factor:   10.863


  10 in total

1.  Prescreening-Based Subset Selection for Improving Predictions of Earth System Models With Application to Regional Prediction of Red Tide.

Authors:  Ahmed S Elshall; Ming Ye; Sven A Kranz; Julie Harrington; Xiaojuan Yang; Yongshan Wan; Mathew Maltrud
Journal:  Front Earth Sci       Date:  2022-01-25       Impact factor: 2.031

2.  Agroclimatic Metrics for the Main Stone Fruit Producing Areas in Spain in Current and Future Climate Change Scenarios: Implications From an Adaptive Point of View.

Authors:  Jose A Egea; Manuel Caro; Jesús García-Brunton; Jesús Gambín; José Egea; David Ruiz
Journal:  Front Plant Sci       Date:  2022-06-08       Impact factor: 6.627

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.  A global dataset for the projected impacts of climate change on four major crops.

Authors:  Toshihiro Hasegawa; Hitomi Wakatsuki; Hui Ju; Shalika Vyas; Gerald C Nelson; Aidan Farrell; Delphine Deryng; Francisco Meza; David Makowski
Journal:  Sci Data       Date:  2022-02-16       Impact factor: 6.444

5.  Uncertainty in climate change impact studies for irrigated maize cropping systems in southern Spain.

Authors:  Bahareh Kamali; Ignacio J Lorite; Heidi A Webber; Ehsan Eyshi Rezaei; Clara Gabaldon-Leal; Claas Nendel; Stefan Siebert; Juan Miguel Ramirez-Cuesta; Frank Ewert; Jonathan J Ojeda
Journal:  Sci Rep       Date:  2022-03-08       Impact factor: 4.379

6.  Exploring the effects of land management change on productivity, carbon and nutrient balance: Application of an Ensemble Modelling Approach to the upper River Taw observatory, UK.

Authors:  Kirsty L Hassall; Kevin Coleman; Prakash N Dixit; Steve J Granger; Yusheng Zhang; Ryan T Sharp; Lianhai Wu; Andrew P Whitmore; Goetz M Richter; Adrian L Collins; Alice E Milne
Journal:  Sci Total Environ       Date:  2022-02-16       Impact factor: 10.753

7.  Simulation of winter wheat response to variable sowing dates and densities in a high-yielding environment.

Authors:  Sibylle Dueri; Hamish Brown; Senthold Asseng; Frank Ewert; Heidi Webber; Mike George; Rob Craigie; Jose Rafael Guarin; Diego N L Pequeno; Tommaso Stella; Mukhtar Ahmed; Phillip D Alderman; Bruno Basso; Andres G Berger; Gennady Bracho Mujica; Davide Cammarano; Yi Chen; Benjamin Dumont; Ehsan Eyshi Rezaei; Elias Fereres; Roberto Ferrise; Thomas Gaiser; Yujing Gao; Margarita Garcia-Vila; Sebastian Gayler; Zvi Hochman; Gerrit Hoogenboom; Kurt C Kersebaum; Claas Nendel; Jørgen E Olesen; Gloria Padovan; Taru Palosuo; Eckart Priesack; Johannes W M Pullens; Alfredo Rodríguez; Reimund P Rötter; Margarita Ruiz Ramos; Mikhail A Semenov; Nimai Senapati; Stefan Siebert; Amit Kumar Srivastava; Claudio Stöckle; Iwan Supit; Fulu Tao; Peter Thorburn; Enli Wang; Tobias Karl David Weber; Liujun Xiao; Chuang Zhao; Jin Zhao; Zhigan Zhao; Yan Zhu; Pierre Martre
Journal:  J Exp Bot       Date:  2022-09-12       Impact factor: 7.298

8.  The impact of weather and increased atmospheric CO2 from 1892 to 2016 on simulated yields of UK wheat.

Authors:  John W G Addy; Richard H Ellis; Andy J Macdonald; Mikhail A Semenov; Andrew Mead
Journal:  J R Soc Interface       Date:  2021-06-16       Impact factor: 4.118

9.  The fingerprints of climate warming on cereal crops phenology and adaptation options.

Authors:  Zartash Fatima; Mukhtar Ahmed; Mubshar Hussain; Ghulam Abbas; Sami Ul-Allah; Shakeel Ahmad; Niaz Ahmed; Muhammad Arif Ali; Ghulam Sarwar; Ehsan Ul Haque; Pakeeza Iqbal; Sajjad Hussain
Journal:  Sci Rep       Date:  2020-10-22       Impact factor: 4.379

10.  Climate change impact on wheat and maize growth in Ethiopia: A multi-model uncertainty analysis.

Authors:  Fasil Mequanint Rettie; Sebastian Gayler; Tobias K D Weber; Kindie Tesfaye; Thilo Streck
Journal:  PLoS One       Date:  2022-01-21       Impact factor: 3.240

  10 in total

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