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Separating Regressions for Model Fitting to Reduce the Uncertainty in Forest Volume-Biomass Relationship

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Type de ressource
Article de revue
Auteurs/contributeurs
  • Liu, Caixia (Auteur)
  • Zhou, Xiaolu (Auteur)
  • Lei, Xiangdong (Auteur)
  • Huang, Huabing (Auteur)
  • Zhou, Carl (Auteur)
  • Peng, Changhui (Auteur)
  • Wang, Xiaoyi (Auteur)
Titre
Separating Regressions for Model Fitting to Reduce the Uncertainty in Forest Volume-Biomass Relationship
Résumé
The method of forest biomass estimation based on a relationship between the volume and biomass has been applied conventionally for estimating stand above- and below-ground biomass (SABB, t ha−1) from mean growing stock volume (m3 ha−1). However, few studies have reported on the diagnosis of the volume-SABB equations fitted using field data. This paper addresses how to (i) check parameters of the volume-SABB equations, and (ii) reduce the bias while building these equations. In our analysis, all equations were applied based on the measurements of plots (biomass or volume per hectare) rather than individual trees. The volume-SABB equation is re-expressed by two Parametric Equations (PEs) for separating regressions. Stem biomass is an intermediate variable (parametric variable) in the PEs, of which one is established by regressing the relationship between stem biomass and volume, and the other is created by regressing the allometric relationship of stem biomass and SABB. A graphical analysis of the PEs proposes a concept of “restricted zone,” which helps to diagnose parameters of the volume-SABB equations in regression analyses of field data. The sampling simulations were performed using pseudo data (artificially generated in order to test a model) for the model test. Both analyses of the regression and simulation demonstrate that the wood density impacts the parameters more than the allometric relationship does. This paper presents an applicable method for testing the field data using reasonable wood densities, restricting the error in field data processing based on limited field plots, and achieving a better understanding of the uncertainty in building those equations.
Publication
Forests
Volume
10
Numéro
8
Pages
658
Date
2019-08-05
Abrév. de revue
Forests
Langue
en
DOI
10.3390/f10080658
ISSN
1999-4907
URL
https://www.mdpi.com/1999-4907/10/8/658
Consulté le
12/11/2024 21:32
Catalogue de bibl.
DOI.org (Crossref)
Autorisations
https://creativecommons.org/licenses/by/4.0/
Référence
Liu, C., Zhou, X., Lei, X., Huang, H., Zhou, C., Peng, C., & Wang, X. (2019). Separating Regressions for Model Fitting to Reduce the Uncertainty in Forest Volume-Biomass Relationship. Forests, 10(8), 658. https://doi.org/10.3390/f10080658
Auteur·e·s
  • Peng, Changhui
Document
  • Liu et al. - 2019 - Separating Regressions for Model Fitting to Reduce the Uncertainty in Forest Volume-Biomass Relation.pdf
Lien vers cette notice
https://bibliographies.uqam.ca/escer/bibliographie/6YMNISNZ
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