Individual Growth Model forEucalyptusStands in Brazil Using Artificial Neural Network
Author(s) -
Renato Vinícius Oliveira Castro,
Carlos Pedro Boëchat Soares,
Hélio Garcia Leite,
Agostinho Lopes de Souza,
Gilciano Saraiva Nogueira,
Fabrina Bolzan Martins
Publication year - 2013
Publication title -
isrn forestry
Language(s) - English
Resource type - Journals
ISSN - 2090-892X
DOI - 10.1155/2013/196832
Subject(s) - artificial neural network , eucalyptus , hectare , multilayer perceptron , perceptron , statistics , tree (set theory) , yield (engineering) , artificial intelligence , mathematics , data set , group (periodic table) , forestry , machine learning , computer science , geography , ecology , biology , agriculture , mathematical analysis , materials science , archaeology , metallurgy , chemistry , organic chemistry
This work aimed to model the growth and yield of Eucalyptus stands located in northern Brazil, at the individual tree level, by using artificial neural networks (ANNs). Data from permanent plots were used for training the neural networks to predict tree height and diameter as well as mortality probability. Once trained, the networks were evaluated using an independent data set. The first group was composed of 33 plots (11 in each productive capacity class) and was used for artificial neural network training. In five measurements, this group totaled 8,735 cases (measurements of individual trees), as each plot had 53 trees on average throughout this evaluation. The second group was composed of 30 plots (10 in each productive capacity class) and was used for model validation. This group totaled 7,756 cases. Were tested different network architectures Multilayer Perceptron (MLP). Results revealed an underestimation bias for number of surviving trees. However, estimates of diameter, height, and volume per hectare were found to be accurate. This indicates that artificial neural networks are a viable alternative to the traditional growth and yield modeling approach in the forestry sector.
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