Dissertação
Interação genótipo × ambiente e dimensionamento amostral para estatísticas de precisão em ensaios de soja
Fecha
2021-02-26Autor
Souza, Rafael Rodrigues de
Institución
Resumen
Soybean grain yield is a relevant characteristic that needs further understanding in highland and
lowland scenarios, where there is a lack of comparative theoretical references, mainly regarding
genotype × environment interaction. Another little approached aspect about these scenarios is
the reliability of estimates of this variable, which initiates by the sampling process, normally
performed empirically, causing an elevated bias when samplings are not representative.
Therefore, the aims of this study were to verify the effects of genotype × environment
interaction on soybean grain yield in highlands and lowlands of subtropical climate and to
compare the adaptability and stability methodologies; to analyze the behavior of experimental
precision statistics in front of the variations in the number of collected plants per experimental
unit in highlands and lowlands; to define the optimal sample size per experimental unit for
experimental precision statistics; and to propose predictive models for estimating the precision
of experiments with soybean. Field trials were carried out during the 2017/2018 agricultural
harvest in two locations of Rio Grande do Sul, on three sowing dates, totaling six experiments.
In the first study, 2.70 m2 per plot were harvest and the grain yield of 20 genotypes was
measured in both testing locations. With the collected data the significance of the interaction
factor was verified and this factor was partitioned into simple and complex components. Next,
linear bi-linear models were implemented, Additive Main Effect and Multiplicative Interaction
(AMMI), Best Linear Unbiased Prediction (BLUP) and Genotype plus Genotype-Environment
interaction (GGE), for verifying the stability of cultivars, with posterior comparison of
methodologies through uncertainty statistics and Pearson’s correlation coefficient. In the
second study, grain yield was assessed per plant, in 20 plants per plot, using 30 genotypes in
the highland location and 20 genotypes in the lowland location, totaling 9,000 measured plants.
Thirteen precision statistics were estimated and sample size per experimental unit was
determined per statistic, simulating scenarios of 1, 2, ..., 1000 plants; consequently, predictive
models for each statistic were parameterized, based on the number of collected plants. The
results demonstrated greater grain yields in the highlands, where the second sowing date
expressed the highest values. The complex component of interaction represented 82.11 %,
which allowed inferring cases of genotype ranking alteration. Agreement between the GGE and
BLUP methodologies was observed. The statistics were overestimated in smaller sample
scenarios per experimental unit. With the increase of collected plants, exponentially
proportional reductions of the confidence interval width of the calculated statistics were
verified. This allowed proposing experimental precision prediction models, via confidence
interval width and sample size per experimental unit. The sampling of 18 plants per
experimental unit was enough for estimating experimental precision statistics. With the
performed studies, a greater understanding of the highland and lowland edaphic scenarios on
factors that aid cultivars recommendation and experimental planning became possible.