Tese
Uso de diferentes metodologias na geração de funções de pedotransferencia para a retenção de água em solos do Rio Grande do Sul
Fecha
2013-02-01Registro en:
SOARES, Fátima Cibéle. USE OF DIFFERENT METHODOLOGIES IN GENERATION PEDOTRANSFER FUNCTIONS FOR WATER RETENTION IN SOILS OF RIO GRANDE DO SUL. 2013. 200 f. Tese (Doutorado em Engenharia Agrícola) - Universidade Federal de Santa Maria, Santa Maria, 2013.
Autor
Soares, Fátima Cibéle
Institución
Resumen
Studies on the dynamics of water in the soil-plant-atmosphere such as water
availability cultures infiltration drainage and movement of solutes into the soil, require
knowledge of the relation between the water content in soil matric potential and represented
by retention curve water. However, its implementation is laborious, requires considerable
time and cost. An alternative is your estimate through statistical equations called
pedotransfer functions (PTFs). The aim of this study was to generate PTFs for the different
soil classes in the state of Rio Grande do Sul, through prediction methodologies. To develop
the work we used data available in the literature, with values of hydro-physical characteristics
and mineralogical characteristics of soils of the State, to estimate values of soil unit under
different stresses. In possession of the database was conducted subdivision thereof, in
different textural classes identified in the state in an attempt to improve the predictive ability
of pedofunctions, forming more homogeneous subsets. The development of PTFs was from
two modeling methods: (i) multiple linear regression (MLR) and (ii) artificial neural networks
(ANNs). For the development of PTFs first methodology was used the "stepwise" (SAS,
1997). The PTFs generated from ANNs were implemented through the multilayer perceptron
with backpropagation algorithm and Levenberg-Marquardt optimization. Each network is
trained by varying the number of neurons in the input layer and the number of neurons in the
hidden layer. The output variable was water content in soil matric potentials of 0, -6, -10, -33,
-100, -500 and -1500 kPa. For each architecture, the network was trained several times,
picking up training at the end of the architecture with lower mean relative error and lower
variance in relation to the validation data. The efficiency of PTFs were analyzed graphically
by the ratio 1:1 between data versus the observed and estimated by means of the following
statistical indicators: correlation coefficient (r); concordance index Wilmont (c); coefficient of
determination (R2) and performance index (id). The results showed that the more
homogeneous is the data of the variables that compose the PTFs, the greater the precision
in estimating the water retention in the soil, for the same. The network architecture consists
of 4 inputs, showed high accuracy in the estimation of variables. The PTFs developed by
ANNs outperformed the predictive ability of the standard method (MLR). Thus, the estimate
of the retention curve of soil water by means of ANNs trained by classes textures, presents
itself as a subsidy techniques adopted in irrigated agriculture.