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Ecosistemas y recursos agropecuarios
versão On-line ISSN 2007-901Xversão impressa ISSN 2007-9028
Resumo
ORDONEZ-PRADO, Casimiro; NAVA-NAVA, Adan; TAMARIT-URIAS, Juan Carlos e HERNANDEZ-ZARAGOZA, Pedro. Equations to estimate the total height of commercial culms in three bamboo species. Ecosistemas y recur. agropecuarios [online]. 2023, vol.10, n.3, e3696. Epub 26-Abr-2024. ISSN 2007-901X. https://doi.org/10.19136/era.a10n3.3696.
The total height (Th) of bamboo culms is essential for inventories of volume, biomass, carbon stores, and products distribution. The high density of the canopy and the natural inclination of the upper part of the crown make its direct measurement of the field difficult. Allometric equations are a viable alternative to efficiently estimating the height as a function of the diameter at breast height (Dbh). The aim was to fit mathematical models Th-Dbh and select the best predictive capacity to estimate the Th of culms of Bambusa oldhamii Munro, Guadua aculeata Rupr. and Guadua angustifolia Kunth in the Northeastern Sierra of Puebla, Mexico. In the analysis, 101 pairs of Th-Dbh observations measured in 2019 were used, with which six allometric models and three growth models were fitted by non-linear regression. Nonlinear ordinary least squares techniques with indicator variables (NL-OLS-VI) and nonlinear mixed effects models (NL-MEM) were compared. The “nlme” package of the R software was used. We evaluated the models based on the adjusted coefficient of determination (R2 ad j ), the root mean square error (RMSE), and the mean bias (B). NL-OLS-VI explained 83.5% and NL-MEM 83.2% of the observed variability. The model with the best performance was the Logistic fitted with NL-OLS-VI (R2 ad j = 0.835, RMSE = 2.280 m y B = 0.005 m). The generated Th-Dbh model is workable to estimate the Th for culms of the three bamboo taxa with low errors.
Palavras-chave : Giant bamboo; random effects; prediction error; nonlinear functions; allometric relationships.