
This scientic publication in digital format is a continuation of the Printed Review: Legal Deposit pp 196802ZU42, ISSN 0378-7818.
Espinoza and Pacheco. Rev. Fac. Agron. (LUZ). 2022, 39(1): e223919
7-7 |
The  treatments  with  hen  manure  source  presented  signicant
differences in their medium and high doses (150 and 200 N kg.ha
-1
), 
with respect to the pine nut cake and urea treatments for all doses. 
On the other hand, pine nut cake showed signicant differences with 
bovine manure (50, 100 and 200 N kg.ha
-1
) and poultry manure in the 
medium doses (100 and 150 N kg.ha
-1
).
Finally, as shown in table 7, the urea treatment with medium dose 
(150 N kg.ha
-1
), was the  one that presented  a signicant difference 
between treatments, except with pine nut cake at its highest dose 
(200 N kg.ha
-1
), so it was considered the source that favored the 
development of the cotton crop, based on the observed spectral 
response.
Reectance levels. The greater vigor of the crop, in view of the 
chlorophyll indices evaluated, does not correspond to the maximum 
concentration of urea (200 N kg.ha
-1
) applied in this investigation 
(gure 4). Although it is true that there are no gures on recommended 
doses, many producers exceed this amount, which implies an excess 
of product that unnecessarily increases production costs, in addition 
to contributing to environmental problems of contamination and 
Figure 4. Reectance  levels  of the cotton  crop according to the 
applied treatment.
Likewise, it was observed that the plants treated with pine nut 
cake and hen manure show vigor and can become substitutes for urea. 
The plots with bovine manure presented the lowest vigor in the crop.
Conclusions
The  unmanned  aerial  vehicle  showed  great  efciency  for  the 
application of the procedures used, forming a fundamental part in the 
application of technology in agriculture and production, thanks to its 
easy handling and the large amount of information it can generate.
The analyzed indices were able to visually show the differences in 
the vigor of the crop, depending on the various nitrogen fertilization 
treatments. Therefore, with the application of this technology, the 
application of fertilizers can be optimized, by selecting the best 
nitrogen source for the study conditions.
The GIS tool proved to be very useful in differentiating the areas 
of the crop with greater or lesser development of the plants based 
on the chlorophyll index, thus being able to take advantage of the 
information obtained to cover the needs of the areas with nutritional 
deciency.
The application of the chlorophyll indices made it possible to 
determine the most effective nitrogenous sources in plants, with urea 
at a dose of 150 N kg.ha
-1
 being the source with the best spectral 
response for the four calculated indices.
The results of the research allow the recommendation of doses 
and nitrogenous sources that could imply improvements in crop 
production in economic and environmental terms in the study area.
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