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Translating and applying a simulation model to enhance understanding of grassland management.
Giannitsopoulos, Michail L; Burgess, Paul J; Bell, Matthew J; Richter, Goetz M; Topp, Cairistiona F E; Ingram, Julie; Takahashi, Taro.
Affiliation
  • Giannitsopoulos ML; School of Water, Energy and Environment Cranfield University Cranfield Bedfordshire UK.
  • Burgess PJ; School of Water, Energy and Environment Cranfield University Cranfield Bedfordshire UK.
  • Bell MJ; Department of Agriculture Hartpury University HEC Gloucester Gloustershire UK.
  • Richter GM; Rothamsted Research Sustainable Soils and Crops Harpenden Hertfordshire UK.
  • Topp CFE; Scotland's Rural College Peter Wilson Building, King's Building Edinburgh UK.
  • Ingram J; Countryside & Community Research Institute University of Gloucestershire Gloucestershire UK.
  • Takahashi T; Rothamsted Research, Net Zero and Resilient Farming North Wyke Okehampton UK.
Grass Forage Sci ; 78(1): 50-63, 2023 Mar.
Article in En | MEDLINE | ID: mdl-38516168
ABSTRACT
Each new generation of grassland managers could benefit from an improved understanding of how modification of nitrogen application and harvest dates in response to different weather and soil conditions will affect grass yields and quality. The purpose of this study was to develop a freely available grass yield simulation model, validated for England and Wales, and to examine its strengths and weaknesses as a teaching tool for improving grass management. The model, called LINGRA-N-Plus, was implemented in a Microsoft Excel spreadsheet and iteratively evaluated by students and practitioners (farmers, consultants, and researchers) in a series of workshops across the UK over 2 years. The iterative feedback led to the addition of new algorithms, an improved user interface, and the development of a teaching guide. The students and practitioners identified the ease of use and the capacity to understand, visualize and evaluate how decisions, such as variation of cutting intervals, affect grass yields as strengths of the model. We propose that an effective teaching tool must achieve an appropriate balance between being sufficiently detailed to demonstrate the major relationships (e.g., the effect of nitrogen on grass yields) whilst not becoming so complex that the relationships become incomprehensible. We observed that improving the user-interface allowed us to extend the scope of the model without reducing the level of comprehension. The students appeared to be interested in the explanatory nature of the model whilst the practitioners were more interested in the application of a validated model to enhance their decision making.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Grass Forage Sci Year: 2023 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Grass Forage Sci Year: 2023 Document type: Article