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Modelling the Effect of Spatially Variable Soil Properties on the Distribution of Weeds

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Journal Ecol Modell
Date 2019 Apr 23
PMID 31007345
Citations 1
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Abstract

The patch spraying of weeds is an area of precision agriculture that has had limited uptake. This is in part due to the perceived risks associated with not controlling individual weeds. Nevertheless, the inherent patchiness of weeds makes them ideal targets for site-specific management. We propose using a mechanistic model to identify areas of a field vulnerable to invasion by weeds, allowing the creation of treatment maps that are risk averse. We developed a spatially-explicit mechanistic model of the life-cycle of , a particularly problematic weed of cereal crops in the UK. In the model, soil conditions which vary across the field, affect the life-cycle of . The model was validated using data on the within-field distribution of on commercial farms and its co-location with soil properties. We demonstrate the important role played by soil properties in determining the within-field distribution of . We also show that scale-dependent correlations between and soil properties observed in the field are an emergent property of the modelled dynamics of the life-cycle. Our model could therefore support effective site-specific management of within fields by predicting areas that are vulnerable to . The usefulness of this model in its ability to predict patch locations for highlights the possibility of using similar models for other species where data are available on the response of the species to various soil properties.

Citing Articles

Landscape Is the Main Driver of Weed Assemblages in Field Margins but Is Outperformed by Crop Competition in Field Cores.

Berquer A, Martin O, Gaba S Plants (Basel). 2021; 10(10).

PMID: 34685940 PMC: 8537063. DOI: 10.3390/plants10102131.

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