Sampling procedures for inventory of commercial volume tree species in Amazon Forest

ABSTRACT The spatial distribution of tropical tree species can affect the consistency of the estimators in commercial forest inventories, therefore, appropriate sampling procedures are required to survey species with different spatial patterns in the Amazon Forest. For this, the present study aims to evaluate the conventional sampling procedures and introduce the adaptive cluster sampling for volumetric inventories of Amazonian tree species, considering the hypotheses that the density, the spatial distribution and the zero-plots affect the consistency of the estimators, and that the adaptive cluster sampling allows to obtain more accurate volumetric estimation. We use data from a census carried out in Jamari National Forest, Brazil, where trees with diameters equal to or higher than 40 cm were measured in 1,355 plots. Species with different spatial patterns were selected and sampled with simple random sampling, systematic sampling, linear cluster sampling and adaptive cluster sampling, whereby the accuracy of the volumetric estimation and presence of zero-plots were evaluated. The sampling procedures applied to species were affected by the low density of trees and the large number of zero-plots, wherein the adaptive clusters allowed concentrating the sampling effort in plots with trees and, thus, agglutinating more representative samples to estimate the commercial volume.

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Main Authors: NETTO,SYLVIO P., PELISSARI,ALLAN L., CYSNEIROS,VINICIUS C., BONAZZA,MARCELO, SANQUETTA,CARLOS R.
Format: Digital revista
Language:English
Published: Academia Brasileira de Ciências 2017
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0001-37652017000401829
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spelling oai:scielo:S0001-376520170004018292019-11-29Sampling procedures for inventory of commercial volume tree species in Amazon ForestNETTO,SYLVIO P.PELISSARI,ALLAN L.CYSNEIROS,VINICIUS C.BONAZZA,MARCELOSANQUETTA,CARLOS R. Adaptive cluster sampling spatial species distribution volume estimation zero-plots ABSTRACT The spatial distribution of tropical tree species can affect the consistency of the estimators in commercial forest inventories, therefore, appropriate sampling procedures are required to survey species with different spatial patterns in the Amazon Forest. For this, the present study aims to evaluate the conventional sampling procedures and introduce the adaptive cluster sampling for volumetric inventories of Amazonian tree species, considering the hypotheses that the density, the spatial distribution and the zero-plots affect the consistency of the estimators, and that the adaptive cluster sampling allows to obtain more accurate volumetric estimation. We use data from a census carried out in Jamari National Forest, Brazil, where trees with diameters equal to or higher than 40 cm were measured in 1,355 plots. Species with different spatial patterns were selected and sampled with simple random sampling, systematic sampling, linear cluster sampling and adaptive cluster sampling, whereby the accuracy of the volumetric estimation and presence of zero-plots were evaluated. The sampling procedures applied to species were affected by the low density of trees and the large number of zero-plots, wherein the adaptive clusters allowed concentrating the sampling effort in plots with trees and, thus, agglutinating more representative samples to estimate the commercial volume.info:eu-repo/semantics/openAccessAcademia Brasileira de CiênciasAnais da Academia Brasileira de Ciências v.89 n.3 20172017-09-01info:eu-repo/semantics/articletext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0001-37652017000401829en10.1590/0001-3765201720160760
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countrycode BR
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libraryname SciELO
language English
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author NETTO,SYLVIO P.
PELISSARI,ALLAN L.
CYSNEIROS,VINICIUS C.
BONAZZA,MARCELO
SANQUETTA,CARLOS R.
spellingShingle NETTO,SYLVIO P.
PELISSARI,ALLAN L.
CYSNEIROS,VINICIUS C.
BONAZZA,MARCELO
SANQUETTA,CARLOS R.
Sampling procedures for inventory of commercial volume tree species in Amazon Forest
author_facet NETTO,SYLVIO P.
PELISSARI,ALLAN L.
CYSNEIROS,VINICIUS C.
BONAZZA,MARCELO
SANQUETTA,CARLOS R.
author_sort NETTO,SYLVIO P.
title Sampling procedures for inventory of commercial volume tree species in Amazon Forest
title_short Sampling procedures for inventory of commercial volume tree species in Amazon Forest
title_full Sampling procedures for inventory of commercial volume tree species in Amazon Forest
title_fullStr Sampling procedures for inventory of commercial volume tree species in Amazon Forest
title_full_unstemmed Sampling procedures for inventory of commercial volume tree species in Amazon Forest
title_sort sampling procedures for inventory of commercial volume tree species in amazon forest
description ABSTRACT The spatial distribution of tropical tree species can affect the consistency of the estimators in commercial forest inventories, therefore, appropriate sampling procedures are required to survey species with different spatial patterns in the Amazon Forest. For this, the present study aims to evaluate the conventional sampling procedures and introduce the adaptive cluster sampling for volumetric inventories of Amazonian tree species, considering the hypotheses that the density, the spatial distribution and the zero-plots affect the consistency of the estimators, and that the adaptive cluster sampling allows to obtain more accurate volumetric estimation. We use data from a census carried out in Jamari National Forest, Brazil, where trees with diameters equal to or higher than 40 cm were measured in 1,355 plots. Species with different spatial patterns were selected and sampled with simple random sampling, systematic sampling, linear cluster sampling and adaptive cluster sampling, whereby the accuracy of the volumetric estimation and presence of zero-plots were evaluated. The sampling procedures applied to species were affected by the low density of trees and the large number of zero-plots, wherein the adaptive clusters allowed concentrating the sampling effort in plots with trees and, thus, agglutinating more representative samples to estimate the commercial volume.
publisher Academia Brasileira de Ciências
publishDate 2017
url http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0001-37652017000401829
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