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探索无人机激光雷达作为赞比亚米奥姆博林地基于卫星的地上生物量估计的采样工具。

Exploring UAS-lidar as a sampling tool for satellite-based AGB estimations in the Miombo woodland of Zambia.

作者信息

Shamaoma Hastings, Chirwa Paxie W, Zekeng Jules C, Ramoelo Able, Hudak Andrew T, Handavu Ferdinand, Syampungani Stephen

机构信息

Department of Urban and Regional Planning, Copperbelt University, 21692, Kitwe, Zambia.

Forest Science Postgraduate Programme, Department of Plant and Soil Sciences, University of Pretoria, Private Bag X20, Hatfield, Pretoria, 0028, South Africa.

出版信息

Plant Methods. 2024 Jun 8;20(1):88. doi: 10.1186/s13007-024-01212-4.

Abstract

To date, only a limited number of studies have utilized remote sensing imagery to estimate aboveground biomass (AGB) in the Miombo ecoregion using wall-to-wall medium resolution optical satellite imagery (Sentinel-2 and Landsat), localized airborne light detection and ranging (lidar), or localized unmanned aerial systems (UAS) images. On the one hand, the optical satellite imagery is suitable for wall-to-wall coverage, but the AGB estimates based on such imagery lack precision for local or stand-level sustainable forest management and international reporting mechanisms. On the other hand, the AGB estimates based on airborne lidar and UAS imagery have the precision required for sustainable forest management at a local level and international reporting requirements but lack capacity for wall-to-wall coverage. Therefore, the main aim of this study was to investigate the use of UAS-lidar as a sampling tool for satellite-based AGB estimation in the Miombo woodlands of Zambia. In order to bridge the spatial data gap, this study employed a two-phase sampling approach, utilizing Sentinel-2 imagery, partial-coverage UAS-lidar data, and field plot data to estimate AGB in the 8094-hectare Miengwe Forest, Miombo Woodlands, Zambia, where UAS-lidar estimated AGB was used as reference data for estimating AGB using Sentinel-2 image metrics. The findings showed that utilizing UAS-lidar as reference data for predicting AGB using Sentinel-2 image metrics yielded superior results (Adj-R = 0.70, RMSE = 27.97) than using direct field estimated AGB and Sentinel-2 image metrics (R = 0.55, RMSE = 38.10). The quality of AGB estimates obtained from this approach, coupled with the ongoing advancement and cost-cutting of UAS-lidar technology as well as the continuous availability of wall-to-wall optical imagery such as Sentinel-2, provides much-needed direction for future forest structural attribute estimation for efficient management of the Miombo woodlands.

摘要

迄今为止,仅有数量有限的研究利用遥感影像,借助全覆盖的中分辨率光学卫星影像(哨兵 - 2 号和陆地卫星)、局部航空激光雷达探测和测距(激光雷达)或局部无人机系统(UAS)影像,来估算米奥姆博生态区的地上生物量(AGB)。一方面,光学卫星影像适用于全覆盖,但基于此类影像的AGB估算对于地方或林分水平的可持续森林管理及国际报告机制而言缺乏精度。另一方面,基于航空激光雷达和UAS影像的AGB估算具备地方层面可持续森林管理所需的精度及国际报告要求,但缺乏全覆盖能力。因此,本研究的主要目的是调查在赞比亚米奥姆博林地中,使用UAS激光雷达作为基于卫星的AGB估算的采样工具的情况。为了弥合空间数据差距,本研究采用了两阶段抽样方法,利用哨兵 - 2号影像、部分覆盖的UAS激光雷达数据和实地样地数据,来估算赞比亚米奥姆博林地8094公顷的米恩圭森林中的AGB,其中将UAS激光雷达估算的AGB用作使用哨兵 - 2号影像指标估算AGB的参考数据。研究结果表明,使用UAS激光雷达作为参考数据,通过哨兵 - 2号影像指标预测AGB,比使用直接的实地估算AGB和哨兵 - 2号影像指标(R = 0.55,RMSE = 38.10)产生了更优的结果(调整R = 0.70,RMSE = 27.97)。通过这种方法获得的AGB估算质量,再加上UAS激光雷达技术的不断进步和成本降低,以及像哨兵 - 2号这样的全覆盖光学影像的持续可得性,为米奥姆博林地的高效管理的未来森林结构属性估算提供了急需的指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef3d/11162019/bab28c3fafd7/13007_2024_1212_Fig1_HTML.jpg

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