Tese
Parâmetros biológicos da produção de tomateiro via modelo logístico
Fecha
2018-03-09Autor
Sari, Bruno Giacomini
Institución
Resumen
The multiple harvest vegetable crops are characterized by high variability between plants and crops.
This characteristic limits the use of ANOVA, since the assumptions of normality, homogeneity and
independence of residues are violated. However, there are a number of statistical approaches that can
be used to analyze experiments with multiple harvested crops, between them nonlinear models.
Therefore, this works aims to describe the productive behavior of the tomato over time (harvests)
through non-linear models and indicates them as a statistical analysis tool to be used in tomato
experiments. Two experiments (2015/2016 and 2016/2017) were conducted in the field in the Crop
Science Department of the Federal University of Santa Maria (UFSM) with different tomato
genotypes: Cordillera, Ellen and Santa Clara in the first year; and Cordillera and Gaucho in the second
year. The fruits were harvested weekly, counted and weighed. The number and mass of fruits were
consecutively accumulated (at each harvest), and the Brody, Gompertz, Logistic and von Bertalanffy
models were fitted to these data. The best model was selected based on the value of the coefficient of
determination (R2) and on the parametric nonlinearity. Finally, the critical points of the select model
were obtained: maximum acceleration point, inflection point, maximum deceleration point, and
asymptotic deceleration point. The variables showed sigmoide behavior, which allowed the adjustment
of the growth models. Among the models tested, it was selected the one with high prediction capacity
and low nonlinearity, indicating that estimates approximately unbiased. Based on the estimates of the
parameters and the critical points of the selected model, inferences were made regarding total
production, productive precocity and concentration of production. The logistic model was selected,
independent of the year or genotype, because it presented low parametric nonlinearity, and based on
the estimations of its parameters and critical points it was possible to make inferences regarding the
productive behavior of the genotypes. In the first year, the Cordillera genotype was the most
productive and the most precocious, reaching the peak of production approximately 85 days after the
transplanting of the seedlings (DAT), with a concentrated production between approximately 82 and
89 DAT. The Ellen genotype was the least productive, but its behavior was similar: production was
concentrated between 82 and 89 DAT, with a peak at 85 DAT. The Santa Clara genotype obtained an
intermediate and early production, since it reached the peak of production only at 90 DAT, and
concentrated its production between 92 and 102 DAT. In the second year, the genotype Gaucho
presented a smaller production, but more concentrated than the Cordillera genotype. In the Gaucho
genotype peak production was observed at approximately 90 DAT (concentrating between
approximately 85 and 100 DAT), while the Cordillera peak genotype occurred around 100 days
(concentrating between 92 and 110 DAT, approximately). The growth models proved to be an
excellent alternative for the statistical analysis of experiments with multiple harvested olive groves. In
addition, from its parameters and critical points, it is possible to make inferences about production,
precocity and concentration of production. Although this work focuses on tomato culture, the models
can be an alternative analysis for any olive cultivation.