Ground Data are Essential for Biomass Remote Sensing Missions

被引:1
|
作者
Jérôme Chave
Stuart J. Davies
Oliver L. Phillips
Simon L. Lewis
Plinio Sist
Dmitry Schepaschenko
John Armston
Tim R. Baker
David Coomes
Mathias Disney
Laura Duncanson
Bruno Hérault
Nicolas Labrière
Victoria Meyer
Maxime Réjou-Méchain
Klaus Scipal
Sassan Saatchi
机构
[1] UMR 5174 Evolution et Diversité Biologique (EDB),Université Toulouse 3 Paul Sabatier, CNRS, ENFA
[2] Smithsonian Tropical Research Institute,Center for Tropical Forest Science‐Forest Global Earth Observatory
[3] University of Leeds,School of Geography
[4] UR Forests & Societies,Cirad, Univ Montpellier
[5] International Institute for Applied Systems Analysis,Department of Geographical Sciences
[6] University of Maryland,Department of Plant Sciences, Forest Ecology and Conservation group
[7] University of Cambridge,Department of Geography
[8] University College London,Institut National Polytechnique Félix Houphouët
[9] UKNERC National Centre for Earth Observation (NCEO),Boigny
[10] INP-HB,Jet Propulsion Laboratory
[11] California Institute of Technology,AMAP, IRD, CNRS, CIRAD, INRA
[12] Univ Montpellier,undefined
[13] ESA-ESTEC,undefined
来源
Surveys in Geophysics | 2019年 / 40卷
关键词
Biomass; Calibration; Forest; In situ data; Validation;
D O I
暂无
中图分类号
学科分类号
摘要
Several remote sensing missions will soon produce detailed carbon maps over all terrestrial ecosystems. These missions are dependent on accurate and representative in situ datasets for the training of their algorithms and product validation. However, long-term ground-based forest-monitoring systems are limited, especially in the tropics, and to be useful for validation, such ground-based observation systems need to be regularly revisited and maintained at least over the lifetime of the planned missions. Here we propose a strategy for a coordinated and global network of in situ data that would benefit biomass remote sensing missions. We propose to build upon existing networks of long-term tropical forest monitoring. To produce accurate ground-based biomass estimates, strict data quality must be guaranteed to users. It is more rewarding to invest ground resources at sites where there currently is assurance of a long-term commitment locally and where a core set of data is already available. We call these ‘supersites’. Long-term funding for such an inter-agency endeavour remains an important challenge, and we here provide costing estimates to facilitate dialogue among stakeholders. One critical requirement is to ensure in situ data availability over the lifetime of remote sensing missions. To this end, consistent guidelines for supersite selection and management are proposed within the Forest Observation System, long-term funding should be assured, and principal investigators of the sites should be actively involved.
引用
收藏
页码:863 / 880
页数:17
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