Wood density estimation using dendrometric and edaphoclimatic data in artificial neural networks

Authors

DOI:

https://doi.org/10.5965/223811712242023685

Keywords:

artificial intelligence, modeling, wood quality

Abstract

Forestry measurement is aimed at volumetric production of wood; however, for the pulp processing industry, the main interest is productivity in wood biomass and, to know this variable, it is necessary to determine the basic wood density (BWD) beforehand. Artificial neural networks (ANN) have been used in the forestry sector quite successfully to describe the dynamics of forest characteristics, such as estimating wood volume. In this context, the objective of this study was to assess the accuracy of the basic wood density estimates by means of ANN’s with Continuous Forest Inventory (CFI) and edaphoclimatic input variables. The database consisted of 3,797 data, from permanent plots of the CFI conducted in Eucalyptus sp stands and edaphoclimatic data from the planting sites. The five best ANNs were selected and the analysis of the estimates was carried out through the correlation between the estimated and BWD, the relative root mean square error (RMSE%) and graphical information. It was observed that both the CFI, edaphoclimatic information and the combination of both are potential and present similar results for the basic wood density estimate, and the errors associated with the estimates are between 3.9% to 3.5%.  The ANNs based only on the CFI information presented higher RMSE. The use of ANN’s is feasible for estimating BWD and allows for excellent accuracy statistics.

Downloads

Download data is not yet available.

Author Biographies

Mauro Antônio Pereira Werneburg, Cenibra S.A – Celulose Nipo-Brasileira, Belo Horizonte, MG, Brazil

.

Mayra Luiza Marques da Silva, Federal University of São João del Rei

.

Helio Garcia Leite, Federal University of Viçosa

.

Antonilmar Araújo Lopes da Silva, Cenibra S.A – Celulose Nipo-Brasileira, Belo Horizonte, MG, Brazil

.

José Marinaldo Gleriani, Federal University of Viçosa

.

Jeferson Pereira Martins Silva, Federal University of Espírito Santo

.

Tais Rizzo Moreira, Federal University of Espírito Santo

.

Sofia Maria Gonçalves Rocha, Federal University of Espírito Santo

.

Nívea Maria Mafra Rodrigues, Federal University of Espírito Santo

.

References

ALCÂNTARA AEM. 2015. Redes Neurais Artificiais para prognose do crescimento e da produção de povoamento de eucalipto em Minas Gerais. Tese (Doutorado em Ciência Florestal). Viçosa: UFV. 58p.

ALMEIDA MNF et al. 2020. Heartwood variation of Eucalyptus urophylla is influenced by climatic conditions. Forest Ecology and Management 458: 117743.

ASSIS TF. 2014. Melhoramento genético de Eucalyptus: desafios e perspectivas. In: Encontro Brasileiro de Silvicultura. Anais… Curitiba: Malinovski. p.307.

BARBOSA TL et al. 2019. Influence of site in the wood quality of Eucalyptus in plantations in Brazil. Southern Forests: a journal of Forest Science 81: 247-253.

BINOTI DHB. 2010. Estratégias de regulação de florestas equiâneas com vistas ao manejo da paisagem. Dissertação (Mestrado em Ciência Florestal). Viçosa: UFV. 145p.

BINOTI DHB. 2013. Neuroforest. Web site. Available: https://neuroforest.ucoz.com/. Access in: 20 jan. 2021

BINOTI MLMS et al. 2014. Redes neurais artificiais para estimação do volume de árvores. Revista Árvore 38: 283-288.

BOA AC. 2018. Modelagem da densidade básica da madeira de eucalipto utilizando redes neurais artificiais. Tese (Doutorado em Ciência Florestal). Viçosa: UFV. 88p.

BRITO AS et al. 2020. Influência da idade nas propriedades da madeira de eucalipto. In: VIDAURRE GB et al. (Ed.). Qualidade da madeira de eucalipto proveniente de plantações no Brasil. Vitória: EdUfes. p.103-131.

BURKHART HE & TOMÉ M. 2012. Modeling forest trees and stands. Netherlands: Springer.

CAMPOS JCC & LEITE HG. 2013. Mensuração florestal: perguntas e respostas. Viçosa: Editora UFV.

CORDEIRO MA et al. 2015. Estimativa do volume de Acacia mangium utilizando técnicas de redes neurais artificiais e máquinas vetor de suporte. Pesquisa Florestal Brasileira 35: 255-261.

COSTA SEL et al. 2020. The effects of contrasting environments on the basic density and mean annual increment of wood from Eucalyptus clones. Forest Ecology and Management 458: 461-470.

ELLI EF et al. 2019. Assessing the growth gaps of Eucalyptus plantations in Brazil – Magnitudes, causes and possible mitigation strategies. Forest Ecology and Management 451: 312 – 325.

ELLI EF et al. 2020. Gauging the effects of climate variability on Eucalyptus plantations productivity across Brazil: A process-based modelling approach. Ecological Indicators 114: 106325.

FERNÁNDEZ ME et al. 2019. New insights into wood anatomy and function relationships: how Eucalyptus challenges what we already know. Forest Ecology and Management 454: 117638.

GALLO R et al. 2018. Growth and wood quality traits in the genetic selection of potential Eucalyptus dunnii Maiden clones for pulp production. Industrial Crops and Products 123: 434–441.

GORGENS EB et al. 2009. Estimação do volume de árvores utilizando redes neurais artificiais. Revista Árvore 33: 1141-1147.

HAYKIN S. 2001. Redes neurais: princípios e prática. 2.ed. Porto Alegre: Bookman.

IBÁ. 2020. Indústria Brasileira de Árvores. Relatório IBÁ 2020 [cited 2021 February 10]. Available from: https://iba.org/datafiles/publicacoes/relatorios/relatorio-iba-2020.pdf. Access in: 15 nov. 2022

KNAPIC S et al. 2007. Radial variation of wood density components and ring width in cork oak trees. Annals of Forest Science 64: 211-218.

LEITE HG et al. 2016. Redes Neurais Artificiais para a estimação da densidade básica da madeira. Scientia Forestalis 44: 149-154.

LEITE HG et al. 2011. Estimation of inside-bark diameter and heartwood diameter for Tectona grandis Linn. trees using artificial neural networks. European Journal of Forest Research 130: 263-269.

LOPES IL. 2018. Avaliação e seleção de variáveis preditoras na estimativa da densidade da madeira de eucalipto. Dissertação (Mestrado em Ciências Florestais). Jerônimo Monteiro: UFES. 73p.

MARTINS APM et al. 2017. Estimativa do afilamento do fuste de araucária utilizando técnicas de inteligência artificial. Floresta e Ambiente 24: 234.

MEHTÄTALO L et al. 2006. The use of quantile trees in the prediction of the diameter distribution of a stand. Silva Fennica 40: 501-516.

RIBEIRO MDSB. 2018. Densidade básica da madeira de plantios florestais de Eucalyptus spp.: associações com variáveis do sítio e do plantio e estimativas com redes neurais artificiais. Tese (Doutorado em Agronomia). Botucatu: UNESP. 112p.

ROCHA SMG et al. 2020. Influence of climatic variations on production. biomass and density of wood in eucalyptus clones of different species. Forest Ecology and Management 473: 118290.

SCHIKOWSKI AB et al. 2015. Estudo da forma do fuste utilizando redes neurais artificiais e funções de afilamento. Pesquisa Florestal Brasileira 35: 119-127.

SETTE Jr CR et al. 2016. Relationship between climate variables, trunk growth rate and wood density of Eucalyptus grandis W. Mill ex Maiden trees. Rev. Árvore 40: 337-346.

SILVA JPM et al. 2018. Redes neurais artificiais para estimar a densidade básica de madeiras do cerrado. Pesquisa Florestal Brasileira 38: 1 – 10.

SILVA JPM et al. 2019. Estimation of the basic wood density of native species using mixed linear models. Pesquisa Floresta e Ambiente 26: 1 – 10.

SILVA MLM et al. 2009. Ajuste do modelo de Schumacher e Hall e aplicação de redes neurais artificiais para estimar volume de árvores de eucalipto. Revista Árvore 33: 1133-1139.

TAN B et al. 2018. Genomic relationships reveal significant dominance effects for growth in hybrid Eucalyptus. Plant Science 267: 84-93.

TSOUMIS G. 1991. Science and technology of wood: structure, properties, utilization. New York: Van Nostrand Reinhold.

VIDAURRE GB et al. 2020. Qualidade da madeira de eucalipto proveniente de plantações no Brasil. Vitória: EdUfes.

Downloads

Published

2023-12-29

How to Cite

WERNEBURG, Mauro Antônio Pereira; SILVA, Mayra Luiza Marques da; LEITE, Helio Garcia; SILVA, Antonilmar Araújo Lopes da; GLERIANI, José Marinaldo; SILVA, Jeferson Pereira Martins; MOREIRA, Tais Rizzo; ROCHA, Sofia Maria Gonçalves; RODRIGUES, Nívea Maria Mafra. Wood density estimation using dendrometric and edaphoclimatic data in artificial neural networks. Revista de Ciências Agroveterinárias, Lages, v. 22, n. 4, p. 685–694, 2023. DOI: 10.5965/223811712242023685. Disponível em: https://periodicos.udesc.br/index.php/agroveterinaria/article/view/23732. Acesso em: 21 nov. 2024.

Issue

Section

Research Article - Multisections and Related Areas

Most read articles by the same author(s)