2008 Joint Annual Meeting (5-9 Oct. 2008): Binary Logistic Modeling to Spatially Predict the Probability of Soil Fertilizer Application Classes.

671-6 Binary Logistic Modeling to Spatially Predict the Probability of Soil Fertilizer Application Classes.



Tuesday, 7 October 2008: 9:45 AM
George R. Brown Convention Center, 360F
Adel M. Elprince and Magda A. Hussien, Dept. Soils and Agricultural Chemistry, Alexandria University, Alexandria, Egypt

Binary logistic models were developed to spatially predict the probability of NK fertilizer application classes in a date palm-arid region (20 000 ha) using soil salinity (ECe, dS/m), profile residual nitrate (NO3-Np, mg/kg), the soil-test values for soil surface Fes (mg/kg) and Mns (mg/kg), and the total applied quantity of irrigation water (Qiw, m3/tree). The NK fertilizer application classes were assigned based on a total of 67 field trials implemented at sites of wide range of soil fertility during two growing seasons. The experiments had the same design with 16 factorial combinations of N and K while P was kept constant with a total number of 200 date palms per field trial. The combination of n independent site-variables taken r at a time method was developed to estimate the target number of total regression degrees of freedom. Only six of the 24 site-variables (X) were found to be statistically significant in influencing the probability of NK responses. The probability of response (Y=1 means response and Y=0 no response) to the levels of N-application and major-N-application were expressed by the logistic models: Logit (Y=1|N= 0.5, 1, 2, or 4 |X) = 2.950 – 0.017 Qiw + 1.066 ECes + 0.5 Fes and logit (Y=1| N = 4 |X) =  -1.583 – 0.132 NO3-Np + 0.785 ECep, respectively.  The models for K-application and major-K-application were: logit (Y=1|K= 1, 2, or 4 |X) =  2.581 + 0.018 Qiw - 0.090 NO3-Np and logit (Y=1|K = 4|X) =  0.453 + 0.568 ECes – 0.456 Mns, respectively. These logistic models were combined in a geographic information system (GIS) to derive soil NK fertilizer application class map using the data sets of the significant site-variables.