The objective of this study was to obtain neural networks that would precisely estimate inside-bark diameter (d ib ) and heartwood diameter (d h ) and compare to the results obtained by the Taper models. The databank was formed so as to eliminate inconsistent and biased data, and stratified: minimum d ib of 4, 6 and 8 cm and minimum d h of 10, 15 and 20 cm. The adjusted Taper model used was the Kozak model. For the fitting of artificial neural networks (ANN), tests were performed to identify the independent variables and the database scope level, i.e., the following input variables were tested: diameter at breast height (dbh), total height (H), height at diameter d ib or d h (h) and outside-bark diameter at h (d ob ), bark thickness at 1.3 ...
This paper seeks to estimate tree volumes of different species from the Brazilian savann...
<p>Residuals of diameter predictions (cm) versus tree stem diameters (cm) in the upper plots, as wel...
Aim of Study: As an innovative prediction technique, Artificial Intelligence technique based on a De...
The financial exploitation of forests constitutes an important part of human activity. This effort i...
The objective of the study was to estimate the diameter at different stem heights and the tree volum...
Part 1: ANN-Classification and Pattern RecognitionInternational audienceOne of the most important st...
Understanding diameter distribution patterns of branches within whorls in radiata pine (pinus radiat...
ABSTRACT Development of artificial neural network (ANN) models to estimate stem tapers of individual...
Estimates of tree bark thickness are fundamental for forest management, however, the degree of preci...
<div><p>Tree stem form in native tropical forests is very irregular, posing a challenge to establish...
Equations to predict Eucalyptus timber volume are continuously updated, but most of them cannot be u...
Estimating the diameter increment of forests is one of the most important relationships in forest ma...
Linear and nonlinear crown variable functions for 173 Brutian pine (Pinus brutia Ten.) trees were in...
Linear and nonlinear crown variable functions for 173 Brutian pine (Pinus brutia Ten.) trees were in...
Decision-making in natural resources often leads to complexities beyond the statistical empirical me...
This paper seeks to estimate tree volumes of different species from the Brazilian savann...
<p>Residuals of diameter predictions (cm) versus tree stem diameters (cm) in the upper plots, as wel...
Aim of Study: As an innovative prediction technique, Artificial Intelligence technique based on a De...
The financial exploitation of forests constitutes an important part of human activity. This effort i...
The objective of the study was to estimate the diameter at different stem heights and the tree volum...
Part 1: ANN-Classification and Pattern RecognitionInternational audienceOne of the most important st...
Understanding diameter distribution patterns of branches within whorls in radiata pine (pinus radiat...
ABSTRACT Development of artificial neural network (ANN) models to estimate stem tapers of individual...
Estimates of tree bark thickness are fundamental for forest management, however, the degree of preci...
<div><p>Tree stem form in native tropical forests is very irregular, posing a challenge to establish...
Equations to predict Eucalyptus timber volume are continuously updated, but most of them cannot be u...
Estimating the diameter increment of forests is one of the most important relationships in forest ma...
Linear and nonlinear crown variable functions for 173 Brutian pine (Pinus brutia Ten.) trees were in...
Linear and nonlinear crown variable functions for 173 Brutian pine (Pinus brutia Ten.) trees were in...
Decision-making in natural resources often leads to complexities beyond the statistical empirical me...
This paper seeks to estimate tree volumes of different species from the Brazilian savann...
<p>Residuals of diameter predictions (cm) versus tree stem diameters (cm) in the upper plots, as wel...
Aim of Study: As an innovative prediction technique, Artificial Intelligence technique based on a De...