利用 GEDI 和分层模型绘制印度尼西亚低地森林的地上生物量图

IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Remote Sensing of Environment Pub Date : 2024-08-23 DOI:10.1016/j.rse.2024.114384
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引用次数: 0

摘要

空间激光雷达(光探测和测距)仪器,如全球生态系统动态调查(GEDI),通过产生对植物物质垂直排列敏感的大范围测量值,作为测量的补充,为全球森林资源清查提供了一个独特的机会。激光雷达测量值无法直接与包括生物量在内的大多数相关物理属性相关联,因此必须通过统计模型进行关联。此外,全球环境与发展指数的观测数据在空间上并不完整,因此必须采用方法将不完整的样本转换为预测区域平均值/总值。在印尼等赤道地区和持续多云地区,这种方法可能会面临挑战,因为在这些地区,高质量观测数据的密度会降低。我们开发并实施了一个分层模型,在印尼占碑省的低洼地区以不同的分辨率绘制无间隙的地上生物量密度(AGBD)地图。生物量模型是在当地的实地地块和通过机载激光扫描(ALS)数据模拟的 GEDI 波形中训练出来的。在选择了适合当地的寻地算法设置后,我们训练了一个误差模型,描述了模拟波形与 GEDI 观测波形之间的差异。最后,我们使用一个地质统计模型来模拟在轨 GEDI 观测数据的空间分布。这三个模型被嵌套到一个单一的分层模型中,将 GEDI 观测数据的空间分布与实地测量的 AGBD 联系起来。该模型允许在任意分辨率下进行完整的空间预测,同时考虑到关系中每个阶段的不确定性。相对于预测生物量而言,模型的不确定性较低,1 公里分辨率下的中位相对标准偏差为 8%,100 米分辨率下的中位相对标准偏差为 26%。我们的模型提供了空间上一致的 AGBD 信息,有利于支持可持续森林管理、碳固存计划和减缓气候变化。这对于印尼占碑这样一个充满活力的热带地区尤为重要,有助于了解从森林到油棕和橡胶等经济作物的土地利用转变所带来的影响。更广泛地说,我们主张使用分层模型作为框架,以考虑实地数据和传感器数据之间的多阶段关系,并为最终预测提供可靠的不确定性审计。
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Mapping aboveground biomass in Indonesian lowland forests using GEDI and hierarchical models

Spaceborne lidar (light detection and ranging) instruments such as the Global Ecosystem Dynamics Investigation (GEDI) provide a unique opportunity for global forest inventory by generating broad-scale measurements sensitive to the vertical arrangement of plant matter as a supplement to in situ measurements. Lidar measurables are not directly relatable to most physical attributes of interest, including biomass, and therefore must be related through statistical models. Further, GEDI observations are not spatially complete, necessitating methods to convert the incomplete samples to predictions of area averages/totals. Such methods can face challenges in equatorial and persistently cloudy areas, such as Indonesia, where the density of quality observations is diminished. We developed and implemented a hierarchical model to produce gap-free maps of aboveground biomass density (AGBD) at various resolutions within the lowlands of Jambi province, Indonesia. A biomass model was trained between local field plots and a metric from GEDI waveforms simulated with coincident airborne laser scanning (ALS) data. After selecting a locally suitable ground-finding algorithm setting, we trained an error model depicting the discrepancies between the simulated and GEDI-observed waveforms. Finally, a geostatistical model was used to model the spatial distribution of the on-orbit GEDI observations. These three models were nested into a single hierarchical model, relating the spatial distribution of GEDI observations to field-measured AGBD. The model allows spatially complete predictions at arbitrary resolutions while accounting for uncertainties at each stage of the relationship. The model uncertainties were low relative to the predicted biomass, with a median relative standard deviation of 8% at the 1 km resolution and 26% at the 100 m resolution. The spatially consistent information on AGBD provided by our model is beneficial in support of sustainable forest management, carbon sequestration initiatives and the mitigation of climate change. This is particularly relevant in a dynamic tropical landscape like Jambi, Indonesia in order to understand the impacts of land-use transformations from forests to cash crops like oil palm and rubber. More generally, we advocate for the use of hierarchical models as a framework to account for multiple stages of relationships between field and sensor data and to provide reliable uncertainty audits for final predictions.

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来源期刊
Remote Sensing of Environment
Remote Sensing of Environment 环境科学-成像科学与照相技术
CiteScore
25.10
自引率
8.90%
发文量
455
审稿时长
53 days
期刊介绍: Remote Sensing of Environment (RSE) serves the Earth observation community by disseminating results on the theory, science, applications, and technology that contribute to advancing the field of remote sensing. With a thoroughly interdisciplinary approach, RSE encompasses terrestrial, oceanic, and atmospheric sensing. The journal emphasizes biophysical and quantitative approaches to remote sensing at local to global scales, covering a diverse range of applications and techniques. RSE serves as a vital platform for the exchange of knowledge and advancements in the dynamic field of remote sensing.
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