2017
DOI: 10.1590/01047760201723032352
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Site Classification for Eucalypt Stands Using Artificial Neural Network Based on Environmental and Management Features

Abstract: Several methods have been proposed to perform site classification for timber production. However, there is frequent need to assess site productive capacity before forest establishment. This has motivated the application of Artificial Neural Networks (ANN) for site classification. Hereby, the traditional guide curve (GC) procedure was compared to the ANN with no stand measures as input. In addition, different ANN settings were tested to assess the best setting. The variables used to train the ANN were: climatic… Show more

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Cited by 13 publications
(9 citation statements)
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References 29 publications
(28 reference statements)
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“…The neuron number in the hidden layer varied from 3-25 in scenario (a) and from 1-30 in (b). In scenario (a), the number of input variables of ANNs with the general data was higher than the other approaches of this same scenario and, in scenario (b), the number of input variables in the intensity of the one tree per diameter class was lower (13)(14)(15)(16)(17)(18)(19).…”
Section: Ann Retained In Scenarios (A) and (B)mentioning
confidence: 84%
See 1 more Smart Citation
“…The neuron number in the hidden layer varied from 3-25 in scenario (a) and from 1-30 in (b). In scenario (a), the number of input variables of ANNs with the general data was higher than the other approaches of this same scenario and, in scenario (b), the number of input variables in the intensity of the one tree per diameter class was lower (13)(14)(15)(16)(17)(18)(19).…”
Section: Ann Retained In Scenarios (A) and (B)mentioning
confidence: 84%
“…In forestry, ANNs have been applied in several studies [18]. For instance, for modelling forest growth and dynamics [14], predicting height of individual trees [19], diametric distribution [20], prediction of biomass above ground [21], prognosis of diameter [22], volume of stems and branches [23], and modeling of survival and mortality [24].…”
Section: Introductionmentioning
confidence: 99%
“…Until now, in the field of forest modeling, the implemented research led to the conclusion that artificial neural network models (ANNs) can be considered as a significant alternative modeling technique for many characteristics of trees against to standard modeling methods (Liu et al 2003;Özçelik et al 2008;Soares et al 2013;Imada 2014;Ercanli et al 2018;Socha et al 2020). Moreover, according to the same research field, ANN models have gained publicity because they have successfully been applied for classification (Schmoldt et al 1997;Sarigul et al 2003;Cosenza et al 2017) and estimation and prediction problems (Pertsen et al 2010;Leite et al 2011;Reis et al 2016;Özçelik et al 2017;Monteiro da Silva et al 2018;Zhou et al 2018;Socha et al 2020). Despite the fact that ANNs need effort for avoiding over or under-fitting the data during their training phase, artificial intelligence has been successfully used for total tree height models construction (Li and Jiang 2010;Diamantopoulou and Özçelik 2012;Özçelik et al 2013;Vieira et al 2018;Thanh et al 2019; Ercanli 2020), as well.…”
Section: Introductionmentioning
confidence: 99%
“…According to Skovsgaard and Vanclay (2008); Cosenza et al, (2017), the methods for assessing the productivity of a site can be divided into dendrocentric and geocentric, the first based on information from the stands themselves and the second using environmental variables related to the site.…”
Section: Introductionmentioning
confidence: 99%