Abstract

Site Index has been widely used as an age normalised metric in order to account for variation in forest height at a range of spatial scales. Although previous research has used a range of modelling methods to describe the regional variation in Site Index, little research has examined gains that can be achieved through the use of regression kriging or spatial ensemble methods. In this study, an extensive set of environmental surfaces were used as covariates to predict Site Index measurements covering the environmental range of Pinus radiata D. Don plantations in Chile. Using this dataset, the objectives of this research were to (i) compare predictive precision of a range of geostatistical, parametric, and non-parametric models, (ii) determine whether significant gains in precision can be attained through use of regression kriging, (iii) evaluate the precision of a spatial ensemble model that utilises predictions from the five most precise models, through using the model prediction with lowest error for a given pixel, and (iv) produce a map of Site Index across the study area. The five most precise models were all geostatistical and they included ordinary kriging and four regression kriging models that were based on partial least squares or random forests. A spatial ensemble model that was constructed from these five models was the most precise of those developed (RMSE = 1.851 m, RMSE% = 6.38%) and it had relatively little bias. Climatic and edaphic variables were the strongest determinants of Site Index and, in particular, variables that are related to soil water balance were well represented within the most precise predictive models. These results highlight the utility of predicting Site Index using a range of approaches, as these can be used to construct a spatial ensemble that may be more precise than predictions from the constituent models.

Highlights

  • Investigaciones Forestales Bioforest S.A., Camino a Coronel, Km. 15, Concepción 403 0000, Chile; Abstract: Site Index has been widely used as an age normalised metric in order to account for variation in forest height at a range of spatial scales

  • While using the covariate selection process described above, the number of independant variables used in the modelling was reduced from sixty-four to twenty for non-parametric models (NPM) and eighteen for parametric models (PM) (Table 3)

  • The 18 key variables selected for PM were predominantly related to topography, with the remainder being evenly distributed across the climate, soil properties and vegetation categories

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Summary

Introduction

Investigaciones Forestales Bioforest S.A., Camino a Coronel, Km. 15, Concepción 403 0000, Chile; Abstract: Site Index has been widely used as an age normalised metric in order to account for variation in forest height at a range of spatial scales. Climatic and edaphic variables were the strongest determinants of Site Index and, in particular, variables that are related to soil water balance were well represented within the most precise predictive models These results highlight the utility of predicting Site Index using a range of approaches, as these can be used to construct a spatial ensemble that may be more precise than predictions from the constituent models. Don (radiata pine) is the predominant plantation species within Chile and there is considerable interest within the forest sector in the accurate prediction of Site. Index for this species [1].

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