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个人信息Personal Information
教师拼音名称:zhenzhen
所在单位:林学院
学历:博士研究生毕业
学位:农学博士学位
在职信息:在职
学科:森林经理学
Upscaling aboveground biomass of larch ( Larix olgensis Henry) plantations from field to satellite measurements: a comparison of individual tree-based and area-based approaches
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影响因子:6.238
DOI码:10.1080/15481603.2022.2055381
发表刊物:GIScience & Remote Sensing
关键字:LiDAR; AGB; spatial uncertainty; ITA; ABA
摘要:Currently, aboveground biomass (AGB) estimation primarily relies on an area-based approach (ABA), particularly at a large scale. With the advancement of individual tree detection techniques and the availability of multi-platform remotely sensed data, the individual tree-based approach (ITA) provides the potential of accurate and nondestructive fine AGB mapping. However, the performances of the two approaches on upscaling AGB from individual tree to stand level have not been thoroughly investigated. This study conducted the nondestructive AGB estimation using both ITA and ABA and compared the AGB estimates and their spatial uncertainties from an individual tree- to stand-level based on multi-platform LiDAR and Landsat 8 OLI imagery, taking Larix olgensis that is one of the most notable afforestation tree species in northeastern China as an example. Results showed that the point cloud segmentation (PCS) outperformed CHM-based individual tree crown delineation algorithms and obtained the highest accuracy of individual tree AGB estimate (R2 = 0.97, RMSE = 28.58 kg, rRMSE = 21.13%) for the dense larch plantations (about 1265 trees/ha). The plot-level AGB estimate aggregated by all detected trees and its uncertainty based on Monte Carlo simulation were 158.16 and 3.64 Mg·ha−1, respectively. The average pixel-level AGB of larch plantations in Maorshan Forest Farm estimated by ITA and ABA were similar (129.66 v.s 144.38 Mg·ha−1). ITA outperformed ABA in terms of pixel-level AGB accuracy and spatial uncertainty of pixel-level and stand-level AGB estimates. The overestimation of low AGB values, typical in ABA, was effectively eliminated by the ITA. The upscaling frameworks proposed in this study for AGB estimation and spatial uncertainty quantification based on ITA and ABA could be extended to other plantations or uncomplex forests. This study contributes to the accurate quantification of AGB and understanding of the uncertainties in the carbon stock of forest ecosystems at multi-scales.
合写作者:Hung Il Jin,Qingbin Wei,Ye Ma,Lan Yang
第一作者:Q1, Zhen Zhen
论文类型:期刊论文
通讯作者:Yinghui Zhao*
卷号:59
期号:1
页面范围:722-743
ISSN号:1548-1603, 1943-7226
是否译文:否
发表时间:2022-01-01
收录刊物:SCI