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This paper presents an approach based on field data to model the spatial distribution of the site productivity index(SPI)of the diverse forest types in Jalisco,Mexico and the response in SPI to site and climatic conditions.A linear regression model was constructed to test the hypothesis that site and climate variables can be used to predict the SPI of the major forest types in Jalisco.SPI varied significantly with topography(elevation,aspect and slope),soil attributes(pH,sand and silt),climate(temperature and precipitation zones)and forest type.The most important variable in the model was forest type,which accounted for35%of the variability in SPI.Temperature and precipitation accounted for 8 to 9%of the variability in SPI while the soil attributes accounted for less than 4%of the variability observed in SPI.No significant differences were detected between the observed and predicted SPI for the individual forest types.The linear regression model was used to develop maps of the spatial variability in predicted SPI for the individual forest types in the state.The spatial site productivity models developed in this study provides a basis for understanding the complex relationship that exists between forest productivity and site and climatic conditions in the state.Findings of this study will assist resource managers in making cost-effective decisions about the management of individual forest types in the state of Jalisco,Mexico.
This paper presents an approach based on field data to model the spatial distribution of the site productivity index (SPI) of the diverse forest types in Jalisco, Mexico and the response in SPI to site and climatic conditions. A linear regression model was constructed to test the hypothesis that site and climate variables can be used to predict the SPI of the major forest types in Jalisco. SP1 significantly significant with topography (elevation, aspect and slope), soil attributes (pH, sand and silt), climate (temperature and precipitation zones) and forest type. the most important variable in the model was forest type, which accounted for 35% of the variability in SPI. Temperature and precipitation accounted for 8 to 9% of the variability in SPI while the soil attributes accounted for less than 4 % of the variability observed in SPI.No significant differences were detected between the observed and predicted SPI for the individual forest types. linear regression model was used to develop maps of the spatial variability in predicted the SPI for the individual forest types in the state.The spatial site productivity models developed in this study provides a basis for understanding the complex relationship that exists between forest productivity and site and climatic conditions in the state. Findings of this study will assist resource managers in making cost-effective decisions about the management of individual forest types in the state of Jalisco, Mexico.