| Name: | Description: | Size: | Format: | |
|---|---|---|---|---|
| 3.93 MB | Adobe PDF |
Advisor(s)
Abstract(s)
The current Common Agriculture Policy (CAP) foresees a reduction of 50% in the
use of herbicides by 2030. This study investigates the potential of integrating remote sensing
with a low-cost RGB sensor and variable-rate technology (VRT) to optimize herbicide
application in a ryegrass (Lolium multiflorum Lam.) fodder crop. The trial was conducted on
three 7.5-hectare plots, comparing a variable-rate application (VRA) of herbicide guided by
a prescription map generated from segmented digital images, with a fixed-rate application
(FRA) and a control (no herbicide applied). The weed population and crop biomass were
assessed to evaluate the efficiency of the proposed method. Results revealed that the
VRA method reduced herbicide usage by 30% (0.22 l ha−1
) compared to the FRA method,
while maintaining comparable crop production. These findings demonstrate that smart
weed management techniques can contribute to the CAP’s sustainability goals by reducing
chemical inputs and promoting efficient crop production. Future research will focus on
improving weed recognition accuracy and expanding this methodology to other cropping
systems.
Description
Keywords
mediterranean climate low-cost sensor spatial analysis machine learning RGB
