Fitting diameter distribution models to data from forest inventories with concentric plot design

  • Nikos Nanos Universidad Politécnica de Madrid, ETSI Montes, Forestal y del Medio Natural, Ciudad Universitaria s/n, 28040, Madrid
  • Sara Sjöstedt de Luna Umeå University, Dept. Mathematics and Mathematical Statistics, SE-901 87 Umeå
Keywords: expansion factors, forest growth and yield, National Forest Inventory, spatial point pattern, Weibull

Abstract

Aim: Several national forest inventories use a complex plot design based on multiple concentric subplots where smaller diameter trees are inventoried when lying in the smaller-radius subplots and ignored otherwise. Data from these plots are truncated with threshold (truncation) diameters varying according to the distance from the plot centre. In this paper we designed a maximum likelihood method to fit the Weibull diameter distribution to data from concentric plots.

Material and methods: Our method (M1) was based on multiple truncated probability density functions to build the likelihood. In addition, we used an alternative method (M2) presented recently. We used methods M1 and M2 as well as two other reference methods to estimate the Weibull parameters in 40000 simulated plots. The spatial tree pattern of the simulated plots was generated using four models of spatial point patterns. Two error indices were used to assess the relative performance of M1 and M2 in estimating relevant stand-level variables. In addition, we estimated the Quadratic Mean plot Diameter (QMD) using Expansion Factors (EFs).

Main results: Methods M1 and M2 produced comparable estimation errors in random and cluster tree spatial patterns. Method M2 produced biased parameter estimates in plots with inhomogeneous Poisson patterns. Estimation of QMD using EFs produced biased results in plots within inhomogeneous intensity Poisson patterns.

Research highlights:We designed a new method to fit the Weibull distribution to forest inventory data from concentric plots that achieves high accuracy and precision in parameter estimates regardless of the within-plot spatial tree pattern. 

 

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Published
2017-10-20
How to Cite
Nanos, N., & Sjöstedt de Luna, S. (2017). Fitting diameter distribution models to data from forest inventories with concentric plot design. Forest Systems, 26(2), e01S. https://doi.org/10.5424/fs/2017262-10486
Section
SPECIAL SECTION MEDITERRANEAN SILVICULTURE: HOMAGE TO GREGORIO MONTERO