Improving Yield Projections from Early Ages in Eucalypt Plantations with the Clutter Model and Artificial Neural Networks.

Autor: Casas, Gianmarco Goycochea, Fardin, Leonardo Pereira, Silva, Simone, de Oliveira Neto, Ricardo Rodrigues, Binoti, Daniel Henrique Breda, Leite, Rodrigo Vieira, Domiciano, Carlos Alberto Ramos, de Sousa Lopes, Lucas Sérgio, da Cruz, Jovane Pereira, dos Reis, Thaynara Lopes, Leite, Hélio Garcia
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Zdroj: Pertanika Journal of Science & Technology; Apr2022, Vol. 30 Issue 2, p1257-1272, 16p
Abstrakt: A common issue in forest management is related to yield projection for stands at young ages. This study aimed to evaluate the Clutter model and artificial neural networks for projecting eucalypt stands production from early ages, using different data arrangements. In order to do this, the changes in the number of measurement intervals used as input in the Clutter model and artificial neural networks (ANNs) are tested. The Clutter model was fitted considering two sets of data: usual, with inventory measurements (I) paired at intervals each year (I1-I2, I2-I3, ..., In-In+1); and modified, with measurements paired at all possible age intervals (I1-I2, I1-I3, ..., I2-I3, I2-I4, ..., In-In+1). The ANN was trained with the modified dataset plus soil type and geographic coordinates as input variables. The yield projections were made up to the final ages of 6 and 7 years from all possible initial ages (2, 3, 4, 5, or 6 years). The methods are evaluated using the relative error (RE%), bias, correlation coefficient (yy? r), and relative root mean square error (RMSE%). The ANN was accurate in all cases, with RMSE% from 8.07 to 14.29%, while the Clutter model with the modified dataset had values from 7.95 to 23.61%. Furthermore, with ANN, the errors were evenly distributed over the initial projection ages. This study found that ANN had the best performance for stand volume projection surpassing the Clutter model regardless of the initial or final age of projection. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index