%0 Journal Article %T Generalized Height-Diameter Models for <i>Pinus montezumae</i> Lamb. and <i>Pinus pseudostrobus</i> Lindl. Plantations in Michoacan, Mexico %A Jonathan Herná %A ndez-Ramos %A Valentí %A n José %A Reyes-Herná %A ndez %A Hé %A ctor Manuel De los Santos-Posadas %A Aurelio Manuel Fierros-Gonzá %A lez %A Enrique Buendí %A a-Rodrí %A guez %A Geró %A nimo Quiñ %A onez-Barraza %J Open Journal of Forestry %P 214-232 %@ 2163-0437 %D 2024 %I Scientific Research Publishing %R 10.4236/ojf.2024.143014 %X Tree height (<i>H</i>) in a natural stand or forest plantation is a fundamental variable in management, and the use of mathematical expressions that estimate <i>H</i> as a function of diameter at breast height (<i>d</i>) or variables at the stand level is a valuable support tool in forest inventories. The objective was to fit and propose a generalized <i>H-d</i> model for <i>Pinus montezumae</i> and <i>Pinus pseudostr</i><i>o</i><i>bus</i> established in forest plantations of Nuevo San Juan Parangaricutiro, Michoacan, Mexico. Using nonlinear least squares (NLS), 10 generalized <i>H-d </i>models were fitted to 883 and 1226 pairs of <i>H-d</i> data from <i>Pinus montezumae</i> and <i>Pinus pseudostrobus</i>, respectively. The best model was refitted with the maximum likelihood mixed effects model (MEM) approach by including the site as a classification variable and a known variance structure. The Wang and Tang equation was selected as the best model with NLS; the MEM with an additive effect on two of its parameters and an exponential variance function improved the fit statistics for <i>Pinus montezumae</i> and <i>Pinus pseudostrobus</i>, respectively. The model validation showed equality of means among the estimates for both species and an independent subsample. The calibration of the MEM at the plot level was efficient and might increase the applicability of these results. The inclusion of dominant height in the MEM approach helped to reduce bias in the estimates and also to better explain the variability among plots. %K Random Covariate %K Random Effects %K Variance Structure %K Forest Inventories %K Forest Management %K Mixed Models %U http://www.scirp.org/journal/PaperInformation.aspx?PaperID=133750