Abstract

Fast-growing Eucalyptus spp. forest plantations and their resultant wood products are economically important and may provide a low-cost means to sequester carbon for greenhouse gas reduction. The development of advanced and optimized frameworks for estimating forest plantation attributes from lidar remote sensing data combined with statistical modeling approaches is a step towards forest inventory operationalization and might improve industry efficiency in monitoring and managing forest resources. In this study, we first developed and tested a framework for modeling individual tree attributes in fast-growing Eucalyptus forest plantation using airborne lidar data and linear mixed-effect models (LME) and assessed the gain in accuracy compared to a conventional linear fixed-effects model (LFE). Second, we evaluated the potential of using the tree-level estimates for determining tree attribute uniformity across different stand ages. In the field, tree measurements, such as tree geolocation, species, genotype, age, height (Ht), and diameter at breast height (dbh) were collected through conventional forest inventory practices, and tree-level aboveground carbon (AGC) was estimated using allometric equations. Individual trees were detected and delineated from lidar-derived canopy height models (CHM), and crown-level metrics (e.g., crown volume and crown projected area) were computed from the lidar 3-D point cloud. Field and lidar-derived crown metrics were combined for ht, dbh, and AGC modeling using an LME. We fitted a varying intercept and slope model, setting species, genotype, and stand (alone and nested) as random effects. For comparison, we also modeled the same attributes using a conventional LFE model. The tree attribute estimates derived from the best LME model were used for assessing forest uniformity at the tree level using the Lorenz curves and Gini coefficient (GC). We successfully detected 96.6% of the trees from the lidar-derived CHM. The best LME model for estimating the tree attributes was composed of the stand as a random effect variable, and canopy height, crown volume, and crown projected area as fixed effects. The %RMSE values for tree-level height, dbh, and AGC were 8.9%, 12.1%, and 23.7% for the LFE model and improved to 7.3%, 7.1%, and 13.6%, respectively, for the LME model. Tree attributes uniformity was assessed with the Lorenz curves and tree-level estimations, especially for the older stands. All stands showed a high level of tree uniformity with GC values approximately 0.2. This study demonstrates that accurate detection of individual trees and their associated crown metrics can be used to estimate Ht, dbh, and AGC stocks as well as forest uniformity in fast-growing Eucalyptus plantations forests using lidar data as inputs to LME models. This further underscores the high potential of our proposed approach to monitor standing stock and growth in Eucalyptus—and similar forest plantations for carbon dynamics and forest product planning.

Highlights

  • Forest plantations cover approximately 7% of the global forested area, including around 80 million ha in tropical and subtropical countries, and Eucalyptus spp. is one of the most widely cultivated species due to their fast growth rate [1,2,3]

  • The linear fixed-effects model (LFE) provided a model based on only fixed effects to test whether including random effects in the linear mixed-effect models (LME) model significantly improved the results

  • When assessing the lidar-derived crown-level metrics (Table S2), we found HMAX to be highly correlated (r > 0.78) with the response variables, whereas crown volume (CV) and crown projected area (CPA) showed very low correlations (r < 0.3)

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Summary

Introduction

Forest plantations cover approximately 7% of the global forested area, including around 80 million ha in tropical and subtropical countries, and Eucalyptus spp. is one of the most widely cultivated species due to their fast growth rate [1,2,3]. Careful monitoring of forest plantation growth and productivity is critical for efficient and optimal management, with the objective of generating maximal yields while minimizing production costs and environmental disturbances. From a manager perspective who has to deal with large areas, having detailed information is necessary for this purpose and spatial modeling using remotely sensed data in fine resolutions could be useful in this regard. Several remote sensing technologies have been used for forest monitoring in the past couple of decades. They provide comparable forest attributes estimations to traditional field survey-based methods while being less laborious and highly time-efficient, especially for areas that are difficult to access [7,8,9]. Airborne lidar data are well suited to calculate and/or predict forest structure attributes such

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