期刊论文详细信息
Revista Brasileira de Ciência do Solo
Selecting statistical models to study the relationship between soybean yield and soil physical properties
Marcio Paulo De Oliveira2  Maria Hermínia Ferreira Tavares1  Miguel Angel Uribe-opazo1  Luis Carlos Timm1 
[1] ,Western Parana State UniversityCascavel PR
关键词: autocorrelation;    cross correlation;    linear regression;    state-space model;    soil and plant properties;    autocorrelação;    correlação cruzada;    regressão linear;    modelo de espaço de estados;    atributos do solo e da planta;   
DOI  :  10.1590/S0100-06832011000100009
来源: SciELO
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【 摘 要 】

Statistical models allow the representation of data sets and the estimation and/or prediction of the behavior of a given variable through its interaction with the other variables involved in a phenomenon. Among other different statistical models, are the autoregressive state-space models (ARSS) and the linear regression models (LR), which allow the quantification of the relationships among soil-plant-atmosphere system variables. To compare the quality of the ARSS and LR models for the modeling of the relationships between soybean yield and soil physical properties, Akaike's Information Criterion, which provides a coefficient for the selection of the best model, was used in this study. The data sets were sampled in a Rhodic Acrudox soil, along a spatial transect with 84 points spaced 3 m apart. At each sampling point, soybean samples were collected for yield quantification. At the same site, soil penetration resistance was also measured and soil samples were collected to measure soil bulk density in the 0-0.10 m and 0.10-0.20 m layers. Results showed autocorrelation and a cross correlation structure of soybean yield and soil penetration resistance data. Soil bulk density data, however, were only autocorrelated in the 0-0.10 m layer and not cross correlated with soybean yield. The results showed the higher efficiency of the autoregressive space-state models in relation to the equivalent simple and multiple linear regression models using Akaike's Information Criterion. The resulting values were comparatively lower than the values obtained by the regression models, for all combinations of explanatory variables.

【 授权许可】

CC BY   
 All the contents of this journal, except where otherwise noted, is licensed under a Creative Commons Attribution License

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