4.7 Review

Simulation Models on the Ecology and Management of Arable Weeds: Structure, Quantitative Insights, and Applications

Journal

AGRONOMY-BASEL
Volume 10, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/agronomy10101611

Keywords

weed seedling emergence; crop-weed competition; weed population dynamics; gene flow; herbicide resistance; decision-support tools; predictive models

Funding

  1. New Mexico Agricultural Experiment Station - FEDER (European Regional Development Funds) [BB/S014683/1]
  2. Spanish Ministry of Economy and Competitiveness [AGL2015-64130-R]
  3. Agencia Nacional de Promocion Cientifica y Tecnologica MINCyT
  4. Universidad Nacional del Sur of Argentina [PICT-2016-1575, PGI 24/A225]
  5. UKRI [BB/S014683/1]
  6. FEDER (European Regional Development Funds)
  7. Spanish Ministry of Economy and Competitiveness grants [AGL2015-64130-R]
  8. Agencia Nacional de Promocion Cientifica y Tecnologica MINCyT [PICT-2016-1575]
  9. BBSRC [BB/S014683/1] Funding Source: UKRI

Ask authors/readers for more resources

In weed science and management, models are important and can be used to better understand what has occurred in management scenarios, to predict what will happen and to evaluate the outcomes of control methods. To-date, perspectives on and the understanding of weed models have been disjointed, especially in terms of how they have been applied to advance weed science and management. This paper presents a general overview of the nature and application of a full range of simulation models on the ecology, biology, and management of arable weeds, and how they have been used to provide insights and directions for decision making when long-term weed population trajectories are impractical to be determined using field experimentation. While research on weed biology and ecology has gained momentum over the past four decades, especially for species with high risk for herbicide resistance evolution, knowledge gaps still exist for several life cycle parameters for many agriculturally important weed species. More research efforts should be invested in filling these knowledge gaps, which will lead to better models and ultimately better inform weed management decision making.

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