aboveground biomass; allometric equation; Haut-Katanga; Miombo; REDD+ process; terrestrial LiDAR; Ecology, Evolution, Behavior and Systematics; Renewable Energy, Sustainability and the Environment; Environmental Science (all)
Abstract :
[en] Accurate assessments of aboveground biomass (AGB) stocks and their changes in extensive Miombo forests are challenging due to the lack of site-specific allometric equations (AEs). Terrestrial Laser Scanning (TLS) is a non-destructive method that enables the calibration of AEs and has recently been validated by the IPCC guidelines for carbon accounting within the REDD+ framework. TLS surveys were carried out in five non-contiguous 1-ha plots in two study sites in the wet Miombo forest of Katanga, in the Democratic Republic Congo. Local wood densities (WD) were determined from wood cores taken from 619 trees on the sites. After a careful checking of Quantitative Structure Models (QSMs) output, the individual volumes of 213 trees derived from TLS data processing were converted to AGB using WD. Four AEs were calibrated using different predictors, and all presented strong performance metrics (e.g., R2 ranging from 90 to 93%), low relative bias and relative individual mean error (11.73 to 16.34%). Multivariate analyses performed on plot floristic and structural data showed a strong contrast in terms of composition and structure between sites and between plots within sites. Even though the whole variability of the biome has not been sampled, we were thus able to confirm the transposability of results within the wet Miombo forests through two cross-validation approaches. The AGB predictions obtained with our best AE were also compared with AEs found in the literature. Overall, an underestimation of tree AGB varying from −35.04 to −19.97% was observed when AEs from the literature were used for predicting AGB in the Miombo of Katanga.
Muledi, Jonathan Ilunga ; Ecologie, Restauration Ecologique et Paysage, Faculté des Sciences Agronomiques, Université de Lubumbashi, Lubumbashi, Democratic Republic Congo
Momo Takoudjou, Stéphane ; Université de Liège - ULiège > Département GxABT > Gestion des ressources forestières
Ploton, Pierre ; AMAP, University Montpellier, IRD, CIRAD, CNRS, INRAE, Montpellier, France
Ibey, Wilfred Kombe; Faculté de Gestion des Ressources Naturelles Renouvelables, Université de Kisangani, Kisangani, Democratic Republic Congo
Pamavesi, Blaise Mupari; Ecologie, Restauration Ecologique et Paysage, Faculté des Sciences Agronomiques, Université de Lubumbashi, Lubumbashi, Democratic Republic Congo
Mushabaa, Benoît Amisi; Ministère de l’Environnement et Développement Durable (MEDD), Kinshasa, Democratic Republic Congo
Shutcha, Mylor Ngoy; Ecologie, Restauration Ecologique et Paysage, Faculté des Sciences Agronomiques, Université de Lubumbashi, Lubumbashi, Democratic Republic Congo
Mwenze, David Nkulu; Ecologie, Restauration Ecologique et Paysage, Faculté des Sciences Agronomiques, Université de Lubumbashi, Lubumbashi, Democratic Republic Congo
Sonké, Bonaventure; Plant Systematic and Ecology Laboratory (LaBosystE), Department of Biology, Higher Teachers’ Training College, University of Yaoundé I, Yaoundé, Cameroon
Tshanika, Urbain Mumba ; Ecologie, Restauration Ecologique et Paysage, Faculté des Sciences Agronomiques, Université de Lubumbashi, Lubumbashi, Democratic Republic Congo
Bamuninga, Benjamin Toirambe; Ministère de l’Environnement et Développement Durable (MEDD), Kinshasa, Democratic Republic Congo
Ndikumagenge, Cléto; Food and Agriculture Organization, Kinshasa, Democratic Republic Congo
Barbier, Nicolas ; AMAP, University Montpellier, IRD, CIRAD, CNRS, INRAE, Montpellier, France
This study benefited data from the FAO-IRD-UNILU \u201CElaboration d\u2019une Equation Allometrique pour les for\u00EAts de Miombo de la RDC\u201D project. SMT was supported by an IRD grant and UNILU researchers received directly grant from project. Our deepest respect goes to the late Andr\u00E9 Kondjo from the DR Congo\u2019s forest inventory and management services, without whom this project could not have been made. We (IRD and UNILU) are also grateful to owners of Mikembo Wildlife Reserve and \u201Cl\u2019Institut Congolais pour la Conservation de la Nature (ICCN)\u201D for all their accommodations during field missions.This study was funded by the project entitled \u201CElaboration d\u2019une Equation Allom\u00E9trique pour les for\u00EAts Miombo de la RDC/UNJP/DRC/057/UNJ CAFI\u201D under Memorandum of Understanding No. 110/2019. Publication costs were covered by the Faculty of Agricultural Sciences of the University of Lubumbashi (UNIUL).
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