Global patterns of tree wood density
Authors/Creators
- Yang, Hui (Contact person)1
- Wang, Siyuan1, 2
- Son, Rackhun1, 3
- Lee, Hoontaek1, 2
- Benson, Vitus1, 4
- Zhang, Weijie1
- Zhang, Yahai5
- Kattge, Jens1, 6
- Boenisch, Gerhard1
- Schepaschenko, Dmitry7
- Karaszewski, Zbigniew8
- Krzysztof, Sterenczak9
- Moreno-Martínez, Álvaro10
- Nabais, Cristina11
- Birnbaum, Philippe12, 13
- Vieilledent, Ghislain12
- Weber, Ulrich1
- Carvalhais, Nuno1, 14, 4
-
1.
Max Planck Institute for Biogeochemistry
- 2. Technische Universität Dresden
- 3. Pukyong National University
- 4. ELLIS Unit Jena
- 5. Beijing Normal University
- 6. German Centre for Integrative Biodiversity Research (iDiv) Halle-Jena-Leipzig
- 7. International Institute for Applied Systems Analysis (IIASA)
- 8. Łukasiewicz Research Network-Wood Technology Institute
-
9.
Forest Research Institute
- 10. Universitat de València
-
11.
University of Coimbra
- 12. Univ Montpellier
- 13. Institut Agronomique néo-Calédonien (IAC)
-
14.
Universidade Nova de Lisboa
Description
Wood density is a fundamental property related to tree biomechanics and hydraulic function while playing a crucial role in assessing vegetation carbon stocks by linking volumetric retrieval and a mass estimate. This study provides a high-resolution map of the global distribution of tree wood density at the 0.01º (~1 km) spatial resolution, derived from four decision trees machine learning models using a global database of 28,822 tree-level wood density measurements. An ensemble of four top-performing models, combined with eight cross-validation strategies shows great consistency, providing wood density patterns with pronounced spatial heterogeneity. The global pattern shows lower wood density values in northern and northwestern Europe, Canadian forest regions, and slightly higher values in Siberia forests, western USA, and southern China. In contrast, tropical regions, especially wet tropical areas, exhibit high wood density. Climatic predictors explain 49~63% of spatial variations, followed by vegetation characteristics (25~31%) and edaphic properties (11~16%). Notably, leaf type (evergreen vs. deciduous) and leaf habit type (broadleaved vs. needleleaved) are the most dominant individual features among all selected predictive covariates. Wood density tends to be higher for angiosperm broadleaf trees compared to gymnosperm needleleaf trees, particularly for evergreen species. The distributions of wood density categorized by leaf types and leaf habit types have good agreement with the features observed in wood density measurements. This global map quantifying wood density distribution can help improve accurate predictions of forest carbon stocks, providing deeper insights into ecosystem functioning and carbon cycling such as forest vulnerability to hydraulic and thermal stresses in the context of future climate change.
Research Funding
- GlobBiomass DUE Project. Grant Number: 4000113100/14/I-NB
- German Federal Ministry for Economic Affairs and Climate Action. Grant Number: 50EE1904
- ESM2025
- H2020 European Research Council. Grant Number: 855187
- International Max Planck Research School for Biogeochemical Cycles
- ESA IFBN project. Grant Number: 4000114425/15/NL/FF/gp
- ESA FRM4BIOMASS. Grant Number: 4000142684/23/I-EF-bgh
- Poland National Centre for Research and Development REMBIOFOR project. Grant Number: BIOSTRATEG1/267755/4/NCBR/2015
Files
global-wood-density-main-1.1.zip
Files
(2.9 GB)
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md5:fb381cc4e666e413d60185d0f169732b
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Additional details
Dates
- Accepted
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2024-03-08
Software
- Repository URL
- https://gitlab.gwdg.de/siyuan.wang/global-wood-density.git
- Programming language
- Python , MATLAB , Linux Kernel Module , Shell
- Development Status
- Active