2020
DOI: 10.3832/ifor3495-013
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Tree volume modeling for forest types in the Atlantic Forest: generic and specific models

Abstract: National Forest Inventories are important primary data sources for large-scale forest resource surveys, in which volume estimates of sampled trees are essential for quantitative analysis. Volume prediction models in natural forests are scarce in Brazil due to legal restrictions for cutting trees, especially in the Atlantic Forest. This study aimed to fit volume models for the main forest types and timber species of the Atlantic Forest in Rio de Janeiro state, considering two hypotheses: (I) generic volume mode… Show more

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Cited by 8 publications
(13 citation statements)
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“…was the most reliable model for estimating tree bole volumes of mahogany, especially when the D and H data were available. The reliability of Schumacher-Hall model (VDH3) was also reported by Cysneiros et al (2020) who developed tree volume models for the main forest types of the Atlantic Forest region.…”
Section: B Volume Models For Mahoganymentioning
confidence: 70%
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“…was the most reliable model for estimating tree bole volumes of mahogany, especially when the D and H data were available. The reliability of Schumacher-Hall model (VDH3) was also reported by Cysneiros et al (2020) who developed tree volume models for the main forest types of the Atlantic Forest region.…”
Section: B Volume Models For Mahoganymentioning
confidence: 70%
“…To estimate the model parameters (b 0 , b 1 , and b 2 ), generalized linear and non-linear least square (GLS/GNLS) methods from the nlme package of R software 3.6.3 was used (Pinheiro, Bates, DebRoy, & Sarkar, 2020; R Core Team, 2020), which are more effective than the ordinary least square (OLS) methods in eliminating heteroscedasticity (nonconstant variance) of the model residuals. The performance of regression models was assessed using the goodness-of-fit statistics: Root Mean Squared Error (RMSE; Equation (4a)), Akaike's Information Criterion (AIC; Equation (4b)), and adjusted coefficient of determination (R 2 adj ; Equation (4c)) as follows (Burnham & Anderson, 2002;Cysneiros et al, 2020;Rawlings, Pantula, & Dickey, 1998) Two preferred models were selected: one that uses only the D as a predictor (Equation 3a to 3c) and another one that uses both D and H t as predictors (Equation 3d to 3f) for further analyses.…”
Section: Development Of Volume Modelsmentioning
confidence: 99%
“…A non-destructive method was used to measure all living tree species during the inventory process [24,32]. It is an alternative method for obtaining tree volume data without cutting down or cause physical damage to the trees [33,34].…”
Section: Data Collectionmentioning
confidence: 99%
“…At the base segment of the tree (from ground level to 0.3 m), the first three measurements were of the constant length of 0.1 m. In the following segment (0.3-1.3 m height), five measurements were made at 0.20 m interval. The upper section started at 1.30 m above the ground, here, the diameter outside bark was measured at 1 m interval up to the maximum height measurable using a ladder and climbing techniques [32]. These measurements were considered to describe tree profile in the lower section in which taper changes so rapidly low on the bole [36].…”
Section: Data Collectionmentioning
confidence: 99%
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