Abstract

The diameter distributions of trees in 50 temporary sample plots (TSPs) established in Pinus halepensis Mill. stands were recovered from LiDAR metrics by using six probability density functions (PDFs): the Weibull (2P and 3P), Johnson’s SB, beta, generalized beta and gamma-2P functions. The parameters were recovered from the first and the second moments of the distributions (mean and variance, respectively) by using parameter recovery models (PRM). Linear models were used to predict both moments from LiDAR data. In recovering the functions, the location parameters of the distributions were predetermined as the minimum diameter inventoried, and scale parameters were established as the maximum diameters predicted from LiDAR metrics. The Kolmogorov–Smirnov (KS) statistic (Dn), number of acceptances by the KS test, the Cramér von Misses (W2) statistic, bias and mean square error (MSE) were used to evaluate the goodness of fits. The fits for the six recovered functions were compared with the fits to all measured data from 58 TSPs (LiDAR metrics could only be extracted from 50 of the plots). In the fitting phase, the location parameters were fixed at a suitable value determined according to the forestry literature (0.75·dmin). The linear models used to recover the two moments of the distributions and the maximum diameters determined from LiDAR data were accurate, with R2 values of 0.750, 0.724 and 0.873 for dg, dmed and dmax. Reasonable results were obtained with all six recovered functions. The goodness-of-fit statistics indicated that the beta function was the most accurate, followed by the generalized beta function. The Weibull-3P function provided the poorest fits and the Weibull-2P and Johnson’s SB also yielded poor fits to the data.

Highlights

  • LiDAR (Laser Imaging Detection and Ranging) technology allows large areas to be scanned, generating continuous information about the entire space

  • Scant attention has been given to Aleppo pine plantations in Spain

  • We recovered the parameters of six probability density functions, i.e., the Weibull (2P and 3P), Johnson’s SB, beta, generalized beta and gamma-2P functions, from LiDAR metrics in 50

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Summary

Introduction

LiDAR (Laser Imaging Detection and Ranging) technology allows large areas to be scanned, generating continuous information about the entire space. In the last 20 years, LiDAR has been increasingly used in forest inventories at different scales [1,2], because of its ability to provide detailed three-dimensional information on the size and structure of forest cover [3]. The process provides data on the dimensions of the trees and on the structure of the forest cover, and other parameters such as canopy fuel attributes [4]. The main advantage of using field data that will be processed using LiDAR techniques is that a much smaller sampling effort is required (with a good sampling design), regarding both the number of plots and the number of tree height measurements required. LiDAR technology, such as airborne laser scanning (ALS), provides a great

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