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DOI10.1002/eap.1987
Landscape-level validation of allometric relationships for carbon stock estimation reveals bias driven by soil type
Beirne, C.1; Miao, Z.1; Nunez, C. L.1,2; Medjibe, V. P.1; Saatchi, S.3,4; White, L. J. T.5,6,7; Poulsen, J. R.1
发表日期2019
ISSN1051-0761
EISSN1939-5582
英文摘要

Mitigation of climate change depends on accurate estimation and mapping of terrestrial carbon stocks, particularly in carbon dense tropical forests. Allometric equations can be used to robustly estimate biomass of tropical trees, but often require tree height, which is frequently unknown. Researchers and practitioners must, therefore, decide whether to directly measure a subset of tree heights to develop diameter : height (D:H) equations or rely on previously published generic equations. To date, studies comparing the two approaches have been spatially restricted and/or not randomly allocated across the landscape of interest, making the implications of deciding whether or not to measure tree heights difficult to determine. To address this issue, we use inventory data from a systematic-random forest inventory across Gabon (102 forest sites; 42,627 trees, including 7,036 height-measured trees). Using plot-specific models of D:H as a benchmark, we compare the performance of a suite of locally fitted and commonly used generic models (parameterized national, georegional, and pantropical equations) across a variety of scales, and assess which abiotic, anthropogenic, and topographical covariates contribute the most to bias in height estimation. We reveal marked spatial structure in the magnitude and direction of bias in tree height estimation using all generic models, due at least in part to soil type, which compounded to substantial error in site-level AGB estimates (of up to 38% or 150 Mg/ha). However, two generic pantropical models (Chave 2014; Feldpausch 2012) converged to within 2.5% of mean AGB at the landscape scale. Our results suggest that some (not all) pantropical equations can extrapolate AGB across large spatial scales with minimal bias in estimated mean AGB. However, extreme caution must be taken when interpreting the AGB estimates from generic models at the site-level as they fail to capture substantial spatial variation in D:H relationships, which could lead to dramatic under- or over-estimation of site-level carbon stocks. Validated allometric models derived at site- or soil-type-levels may be the best way to reduce such biases arising from landscape-level heterogeneity in D:H model fit in the Afrotropics.


WOS研究方向Environmental Sciences & Ecology
来源期刊ECOLOGICAL APPLICATIONS
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/102163
作者单位1.Duke Univ, Nicholas Sch Environm, POB 90328, Durham, NC 27708 USA;
2.German Ctr Integrat Biodivers Res iDiv, D-04103 Leipzig, Germany;
3.CALTECH, NASA, Jet Prop Lab, 4800 Oak Grove Dr, Pasadena, CA 91109 USA;
4.Univ Calif Los Angeles, Inst Environm & Sustainabil, Los Angeles, CA 90095 USA;
5.Agence Natl Pares Nationaux, Batterie 6,BP 20379, Libreville, Gabon;
6.Inst Rech Ecol Trop, BP 13354, Libreville, Gabon;
7.Univ Stirling, Sch Nat Sci, African Forest Ecol Grp, Stirling FK9 4LA, Scotland
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GB/T 7714
Beirne, C.,Miao, Z.,Nunez, C. L.,et al. Landscape-level validation of allometric relationships for carbon stock estimation reveals bias driven by soil type[J],2019.
APA Beirne, C..,Miao, Z..,Nunez, C. L..,Medjibe, V. P..,Saatchi, S..,...&Poulsen, J. R..(2019).Landscape-level validation of allometric relationships for carbon stock estimation reveals bias driven by soil type.ECOLOGICAL APPLICATIONS.
MLA Beirne, C.,et al."Landscape-level validation of allometric relationships for carbon stock estimation reveals bias driven by soil type".ECOLOGICAL APPLICATIONS (2019).
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