Modeling soil loss due to runoff in sugarcane cultivation using mixed linear models, period II semester 2019 – I semester 2021
DOI:
https://doi.org/10.5377/elhigo.v13i2.17374Keywords:
Tillage, Cumulative sheet, Vegetative developmentAbstract
The use of linear mixed models has been used in different scenarios and may have potential to describe soil loss due to runoff water. The objective of the study was to use linear mixed models to model soil loss due to runoff in a sugarcane crop on soils with sloping topography in two tillage conditions. The response variable was the loss of soil due to runoff and the explanatory variables were precipitation quantified as total accumulated depth and weeks of vegetative development of a sugar cane crop (variety CC 93 - 7711) for panela production. These data were taken from runoff plots that were installed in the municipality of Vélez, department of Santander (Colombia). A model was found that fits the loss of soil due to runoff water with a conditional coefficient of determination for linear mixed models of 0.84.
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