We're sorry. An error has occurred
Please cancel or retry.
Modelling the effects of cropping systems on weed dynamics: the trade-off between process analysis and decision support
Regular price
$32.50
Regular price
$32.50
Sale price
$32.50
Unit price
/
per
Sold out
Re-stocking soon
Models are essential to synthesize knowledge on weeds and to design integrated weed-management strategies. These models must rank cropping systems as a function of weed infestation, and account for...
Read More
Some error occured while loading the Quick View. Please close the Quick View and try reloading the page.
Couldn't load pickup availability
Ships within 2 business days
-
25 April 2022

Models are essential to synthesize knowledge on weeds and to design integrated weed-management strategies. These models must rank cropping systems as a function of weed infestation, and account for variability in effects to estimate probabilities of success or failure. Three case studies are presented: (1) an empirical static single-equation model that directly relates weed biomass to crop management, with few inputs and parameters, (2) a matrix-based multiannual model predicting a few key weed stages annually, from weed control options and a few parameters, (3) a mechanistic process-based multiannual model predicting detailed soil, crop and weed state variables daily, with an individual-based 3D canopy representation, requiring hundreds of inputs and parameters. The chapter concludes that models using a mechanistic representation of the cropping-system ´ environment interactions are best for quantifying effects and their variability, combined with a subsequent transformation with in silico experiments into empirical models of key cropping-system components.
Price: $32.50
Publisher: Burleigh Dodds Science Publishing
Imprint: Burleigh Dodds Science Publishing
Series: Burleigh Dodds Series in Agricultural Science
Publication Date:
25 April 2022
ISBN: 9781801464826
Format: eBook
BISACs:
TECHNOLOGY & ENGINEERING / Pest Control, TECHNOLOGY & ENGINEERING / Agriculture / Sustainable Agriculture, TECHNOLOGY & ENGINEERING / Agriculture / Agronomy / Crop Science
1 Introduction 2 Comparing models: case studies 3 Limiting the modelled system: temporal, spatial and species scales 4 Modelling approaches: empirical versus mechanistic models 5 Modelling approaches: stochastic versus deterministic models 6 How to bridge the gap between process analysis and decision support 7 Conclusion and future trends 8 Where to look for further information 9 References