Above-ground biomass estimation from LiDAR data using random forest algorithms
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Date
2022-02Author
Torre Tojal, Leyre
Bastarrica Izaguirre, Aitor
Boyano Murillo, Ana Isabel
López Guede, José Manuel
Graña Romay, Manuel María
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Journal of Computational Science 58 : (2022) // Article ID 101517
Abstract
Random forest (RF) models were developed to estimate the biomass for the Pinus radiata species in a region of the Basque Autonomous Community where this species has high cover, using the National Forest Inventory, allometric equations and low-density discrete LiDAR data. This article explores the tuning for RF hyperparameters, obtaining two models with an R2 higher than 0.7 using 2-fold cross-validation. The models selected were applied in Orozko, a municipality with more than 5000 ha of this species, where the model predicts a biomass of 1.06–1.08 Mton, which is between 16–18 % higher than the biomass predicted by the Basque Government.