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Performance of process-based models for simulation of grain N in crop rotations across Europe

  • Xiaogang Yin*
  • , Kurt Christian Kersebaum
  • , Chris Kollas
  • , Kiril Manevski
  • , Sanmohan Baby
  • , Nicolas Beaudoin
  • , Isik Öztürk
  • , Thomas Gaiser
  • , Lianhai Wu
  • , Munir Hoffmann
  • , Monia Charfeddine
  • , Tobias Conradt
  • , Julie Constantin
  • , Frank Ewert
  • , Iñaki Garcia de Cortazar-Atauri
  • , Luisa Giglio
  • , Petr Hlavinka
  • , Holger Hoffmann
  • , Marie Launay
  • , Gaëtan Louarn
  • Remy Manderscheid, Bruno Mary, Wilfried Mirschel, Claas Nendel, Andreas Pacholski, Taru Palosuo, Dominique Ripoche-Wachter, Reimund P. Rötter, Françoise Ruget, Behzad Sharif, Mirek Trnka, Domenico Ventrella, Hans Joachim Weigel, Jørgen E. Olesen
*Corresponding author for this work

    Research output: Journal contributionsJournal articlesResearchpeer-review

    51 Citations (Scopus)

    Abstract

    The accurate estimation of crop grain nitrogen (N; N in grain yield) is crucial for optimizing agricultural N management, especially in crop rotations. In the present study, 12 process-based models were applied to simulate the grain N of i) seven crops in rotations, ii) across various pedo-climatic and agro-management conditions in Europe, iii) under both continuous simulation and single year simulation, and for iv) two calibration levels, namely minimal and detailed calibration. Generally, the results showed that the accuracy of the simulations in predicting grain N increased under detailed calibration. The models performed better in predicting the grain N of winter wheat (Triticum aestivum L.), winter barley (Hordeum vulgare L.) and spring barley (Hordeum vulgare L.) compared to spring oat (Avena sativa L.), winter rye (Secale cereale L.), pea (Pisum sativum L.) and winter oilseed rape (Brassica napus L.). These differences are linked to the intensity of parameterization with better parameterized crops showing lower prediction errors. The model performance was influenced by N fertilization and irrigation treatments, and a majority of the predictions were more accurate under low N and rainfed treatments. Moreover, the multi-model mean provided better predictions of grain N compared to any individual model. In regard to the Individual models, DAISY, FASSET, HERMES, MONICA and STICS are suitable for predicting grain N of the main crops in typical European crop rotations, which all performed well in both continuous simulation and single year simulation. Our results show that both the model initialization and the cover crop effects in crop rotations should be considered in order to achieve good performance of continuous simulation. Furthermore, the choice of either continuous simulation or single year simulation should be guided by the simulation objectives (e.g. grain yield, grain N content or N dynamics), the crop sequence (inclusion of legumes) and treatments (rate and type of N fertilizer) included in crop rotations and the model formalism.

    Original languageEnglish
    JournalAgricultural Systems
    Volume154
    Pages (from-to)63-77
    Number of pages15
    ISSN0308-521X
    DOIs
    Publication statusPublished - 01.06.2017

    UN SDGs

    This output contributes to the following UN Sustainable Development Goals (SDGs)

    1. SDG 2 - Zero Hunger
      SDG 2 Zero Hunger

    Research areas and keywords

    • Ecosystems Research
    • Calibration
    • Crop model
    • Crop rotation
    • Grain N content
    • Model evaluation
    • Model initialization
    • Sustainability Science

    ASJC Scopus Subject Areas

    • Animal Science and Zoology
    • Agronomy and Crop Science

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