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© 2025. This work is published under https://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.

Abstract

In the context of global change, it is essential to quantify and monitor the carbon stored in forests. Allometric equations are mathematical models that predict the biomass of a tree from dendrometrical characteristics that are easier to measure, such as tree diameter, height, or wood density. Various model forms have been proposed for allometric equations. Moreover, the model choice has a critical influence on the estimate of the biomass of a forest. So far, model selection for allometric equations has been performed based on the tree-level predictive performance of the models. However, allometric equations are used to estimate the biomass of plots rather than individual trees. The distribution of trees sampled for establishing allometric equations often differs from the forest structure. Moreover, at the plot level, the residual individual errors for different trees can cancel off. Therefore, we expect the plot-level predictive performance of a model to differ from its tree-level performance. Using a dataset giving the observed biomass of 844 trees in central Africa and a null model for the size distribution of trees in the forest, we simulated forest plots between 0.1 and 50 ha in area. Then, using a Monte Carlo approach, we calculated the mean sum of squared errors (MSS) of the differences between observed and predicted plot biomass. We showed that MSS could be well approximated by a three-term formula, where the first term corresponded to bias, the second one corresponded to the tree residual error, and the third one corresponded to the uncertainty on model coefficients. For small plots ( 0.1 ha), the plot-level predictive performance was dominated by the tree residual error term. Model selection based on plot-level predictive performance was then consistent with that based on tree-level performance. For large plots, this term vanished. Model selection based on plot-level performance could then differ from that based on tree-level performance. In the case of large plots, chains of models that combined a general equation to predict biomass and local equations to predict some of the predictors of the biomass equation could provide a good trade-off between the bias in and the uncertainty on model coefficients. We recommend using plot-level rather than tree-level predictive performance to select allometric equations. The three-term formula that we developed provides an easy way to assess the effect of plot size on model selection and to balance the respective contributions of bias, tree residual error, and the uncertainty on model coefficients.

Details

Title
Selecting allometric equations to estimate forest biomass from plot- rather than individual-level predictive performance
Author
Picard, Nicolas 1 ; Fonton, Noël 2 ; Bosela, Faustin Boyemba 3 ; Fayolle, Adeline 4 ; Loumeto, Joël 5 ; Ayecaba, Gabriel Ngua 6 ; Bonaventure Sonké 7 ; Olga Diane Yongo Bombo 8 ; Hervé Martial Maïdou 9 ; Ngomanda, Alfred 10 

 GIP Ecofor, Paris, France 
 Faculty of Agronomic Science, University of Abomey-Calavi, Cotonou, Benin 
 Faculty of Science, University of Kisangani, Kisangani, Democratic Republic of the Congo 
 Forêts et Sociétés, Université de Montpellier, Cirad Montpellier, France; Cirad Forêts et Sociétés, Montpellier, France 
 Faculty of Science and Technology, University Marien NGouabi, Brazzaville, Republic of the Congo 
 Instituto Nacional de Desarrollo Forestal y Manejo del Sistema Nacional de Areas Protegidas (INDEFOR), Bata, Equatorial Guinea 
 École normale supérieure, University of Yaoundé 1, Yaounde, Cameroon 
 Faculty of Science, University of Bangui, Bangui, Central African Republic 
 Commission des Forêts d'Afrique Centrale (COMIFAC), Yaounde, Cameroon 
10  Centre National de la Recherche Scientifique et Technologique (CENAREST), Libreville, Gabon 
Pages
1413-1426
Publication year
2025
Publication date
2025
Publisher
Copernicus GmbH
ISSN
17264170
e-ISSN
17264189
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
3176464782
Copyright
© 2025. This work is published under https://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.