论文标题

通过组合光学卫星,机载激光扫描和NFI数据来改善生活生物量C储备损失估计

Improving living biomass C-stock loss estimates by combining optical satellite, airborne laser scanning, and NFI data

论文作者

Breidenbach, Johannes, Ivanovs, Janis, Kangas, Annika, Nord-Larsen, Thomas, Nilson, Mats, Astrup, Rasmus

论文摘要

旨在增强森林在缓解气候变化中作用的政策措施和管理决策需要对温室气体库存中C储备动态的可靠估计(GHGIS)。这项研究的目的是组装基于设计的估计器,以使用国家森林库存(NFI)数据提供与GHGI相关的估计值。通过利用模型辅助(MA)估计中利用远程感知的辅助数据,我们仅使用现场数据来改善生活生物量C储备损失的基本扩展(BE)估计值。我们来自挪威,瑞典,丹麦和拉脱维亚的案例研究覆盖了> 70 MHA的面积。基于Landsat的森林覆盖损失(FCL)和一次性壁式空降激光扫描(ALS)数据用作辅助数据。 ALS在FCL指示的潜在干扰之前提供了有关C储备的信息。在MA估计量中使用FCL导致了可观的效率增长,在大多数情况下,通过使用ALS此外,进一步增加了效率。国家估计值可能会增加效率的一倍,并且在次国国家水平上观察到了更大的效率。使用全年的NFI数据,平均年度估计值比汇总估计值更为精确。远程敏感的NFI字段数据的组合得出可靠的估计值,而在没有参考观察的情况下,使用远程感应的数据时不一定是这种情况。

Policy measures and management decisions aiming at enhancing the role of forests in mitigating climate-change require reliable estimates of C-stock dynamics in greenhouse gas inventories (GHGIs). Aim of this study was to assemble design-based estimators to provide estimates relevant for GHGIs using national forest inventory (NFI) data. We improve basic expansion (BE) estimates of living-biomass C-stock loss using field-data only, by leveraging with remotely-sensed auxiliary data in model-assisted (MA) estimates. Our case studies from Norway, Sweden, Denmark, and Latvia covered an area of >70 Mha. Landsat-based Forest Cover Loss (FCL) and one-time wall-to-wall airborne laser scanning (ALS) data served as auxiliary data. ALS provided information on the C-stock before a potential disturbance indicated by FCL. The use of FCL in MA estimators resulted in considerable efficiency gains which in most cases were further increased by using ALS in addition. A doubling of efficiency was possible for national estimates and even larger efficiencies were observed at the sub-national level. Average annual estimates were considerably more precise than pooled estimates using NFI data from all years at once. The combination of remotely-sensed with NFI field data yields reliable estimates which is not necessarily the case when using remotely-sensed data without reference observations.

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