Predictive Analytics of Plots For Soybean Production
Fecha
2020Autor
Mavolo, Luca
Xodo, Daniel
Mavolo, Pablo
Metadatos
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This study is to determine the feasible productivity of a plot of land in large fields where the
quality of the soil and the weather conditions fluctuate every year, hindering optimum
soybean production practices. The aim is to predict 8 sceneries through the artificial neural
network model and study its reliability. Then predict 7 feasible sceneries to achieve a good
sowing strategy on certain plots of land and with certain types of seeds. Finally, to make a
prediction using the average historical rainfall data collected during the studied months and
to observe the fluctuations on the yield in accordance with previous predictions. The
artificial neural network is the method used and it was provided by soft RISK Industrial 7.6
(Neural Tools). The result is going to be compared with the data collected from the
company “Nueva Castilla” of Trenque Lauquen (Buenos Aires province, Argentina) to
determine the practical and technical feasibility of the model. These data correspond to
more than 17 years of climate and weather analysis, soil and soybean yield with different
types of seeds.