Acessibilidade / Reportar erro

Artificial neural networks and regression analysis for volume estimation in native species1 1 Research developed at Recôncavo region, Bahia, Brazil

Redes neurais artificiais e análise de regressão para estimativa de volume de espécies nativas

HIGHLIGHTS:

Artificial neural networks (ANNs) provide a more robust and accurate estimate of timber volume than simple regression models.

Estimates improve as the number of neurons in the hidden layer increases, thereby reducing errors.

The ANNs models are more robust to estimate the volumes of the trees with greater accuracy than using simple regression ones.

ABSTRACT

Modeling is an important tool to estimate forest production in planted areas. Although this issue has been studied worldwide, knowledge regarding volume measurement in specific locations such as Northeast Brazil is still scarce. The present study aimed to evaluated the effectiveness of artificial neural networks (ANNs) and regression analysis in estimating the timber volume of homogeneous stands of Anadantera macrocarpa, Genipa americana, and Mimosa casalpinifolia, in order to better predict the growth and production of these species. Both methods were suitable for estimating the individual volume in 7-year-old stands with different spacing. The Spurr regression model showed better statistical results and dispersion of unbiased errors for Anadantera macrocarpa and Genipa americana, whereas the Shumacher-Hall model provided more accurate volume estimates for Mimosa caesalpinifolia. The ANNs calibrated with two neurons in the middle layer exhibited the best fit for all three species. As such, artificial neural networks can be recommended to estimate the individual volumes of the species analyzed in the study area.

Key words:
native forest; production volume; prediction models; ANNs

Unidade Acadêmica de Engenharia Agrícola Unidade Acadêmica de Engenharia Agrícola, UFCG, Av. Aprígio Veloso 882, Bodocongó, Bloco CM, 1º andar, CEP 58429-140, Campina Grande, PB, Brasil, Tel. +55 83 2101 1056 - Campina Grande - PB - Brazil
E-mail: revistagriambi@gmail.com