4.2 Article

Using stochastic dynamic programming to support weed management decisions over a rotation

Journal

WEED RESEARCH
Volume 49, Issue 2, Pages 207-216

Publisher

WILEY
DOI: 10.1111/j.1365-3180.2008.00678.x

Keywords

population dynamics; decision support system; modelling; weed control

Funding

  1. ADAS, Glasgow Caledonian and the Scottish Agricultural College
  2. Biotechnology and Biological Sciences Research Council (BBSRC)
  3. Defra (through Sustainable Arable LINK)
  4. HGCA, BASF, Bayer CropScience, Dow AgroSciences, DuPont, and Syngenta

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This study describes a model that predicts the impact of weed management on the population dynamics of arable weeds over a rotation and presents the economic consequences. A stochastic dynamic programming optimisation is applied to the model to identify the management strategy that maximises gross margin over the rotation. The model and dynamic programme were developed for the weed management decision support system -'Weed Manager'. Users can investigate the effect of management practices (crop, sowing time, weed control and cultivation practices) on their most important weeds over the rotation or use the dynamic programme to evaluate the best theoretical weed management strategy. Examples of the output are given in this paper, along with discussion on their validation. Through this study, we demonstrate how biological models can (i) be integrated into a decision framework and (ii) deliver valuable weed management guidance to users.

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