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Characterizing forest disturbance dynamics in the humid tropics using optical and Lidar remotely sensed data sets.

机译:使用光学和激光雷达遥感数据集表征潮湿热带地区的森林干扰动态。

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摘要

Human-induced tropical deforestation and forest degradation are widely recognized as major environmental threats, negatively affecting tropical forest ecosystem services, such as biodiversity and climate regulation. To mitigate the effects of forest disturbance, particularly carbon emissions, national forest monitoring systems are being established throughout the tropics. Multiple good practice guidelines aimed at developing accurate, compatible and cost-effective monitoring systems have been issued by IPCC, UNFCCC, GFOI and other organizations. However, there is a lack of consensus in characterization of the baseline state of the forests and carbon stocks. This dissertation is focused on the improvement of the current methods of remotely-sensed forest area and carbon loss estimation. A sample-based estimation method employing Landsat-based forest type and change maps and GLAS Lidar-modeled carbon data was first prototyped for the Democratic Republic of the Congo (DRC), and then applied for the entire pan-tropical region. The DRC study found that Landsat-scale (30m) map-based forest loss assessments unadjusted for errors may lead to significant underestimation of forest aboveground carbon (AGC) loss in the environments with small-scale land cover change dynamics. This conclusion was supported by the pan-tropical study, which revealed that Landsat-based mapping omitted almost half (44%) of forest loss in Africa compared to the sample-based estimate (sample-based estimate exceeded map-based by 78%). Landsat performed well in Latin America and Southeast Asia (sample-based estimate exceeded map-based by 15% and 6% respectively), where forest dynamics are dominated by large-scale industrial forest clearings. The pan-tropical validation sample also allowed disaggregating forest cover and AGC loss by occurrence in natural- (primary and mature secondary forests, and natural woodlands) or human-managed (tree plantations, agroforestry systems, areas of subsistence agriculture with rapid tree cover rotation) forests. Pan-tropically, 58% of AGC loss came from natural forests, with proportion of natural AGC loss being the highest in Brazil (72%) and the lowest in the humid tropical Africa outside of the DRC (22%). The pan-tropical study employed a novel forest stratification for carbon estimation based on forest structural characteristics (canopy cover and height) and intactness, which aided in reducing standard errors of the sample-based estimate (SE of 4% for the pan-tropical gross forest loss area estimate). Such a stratification also allowed for the quantification of forest degradation by delineating intact and non-intact forest areas with different carbon content. This indirect approach to quantify forest degradation was advanced in the last research chapter by automating the process of intact (hinterland) forest mapping. Hinterland forests are defined as forest patches absent of and removed from disturbance in near-term history. Their utility in using spatial context to map structurally different (degraded and non-degraded) forests points a way forward for improved stratification of forest carbon stocks. Conclusions from the dissertation summarize strengths and challenges of sample-based area estimation in monitoring forest carbon stocks and the possible use of such estimates in the revision of spatially explicit maps by adjusting them to match the unbiased sample-based estimates. Hinterland forest maps, in addition to providing a valuable stratum for sample-based carbon monitoring, may serve as a baseline for the near real-time monitoring of remaining ecologically intact tropical forests.
机译:人为导致的热带森林砍伐和森林退化被广泛认为是主要的环境威胁,对诸如生物多样性和气候调节等热带森林生态系统服务产生负面影响。为了减轻森林干扰特别是碳排放的影响,正在整个热带地区建立国家森林监测系统。 IPCC,UNFCCC,GFOI和其他组织已经发布了多个旨在开发准确,兼容和具有成本效益的监控系统的良好实践准则。但是,在表征森林和碳储量的基准状态方面缺乏共识。本文的重点是对现有遥感林区面积和碳损失估算方法的改进。首先使用基于Landsat的森林类型和变化图以及GLAS Lidar建模的碳数据的基于样本的估算方法,然后将其应用于刚果民主共和国(DRC),然后应用于整个泛热带地区。刚果(金)研究发现,未经土地误差评估的基于Landsat比例尺(30m)的森林损失评估可能会导致在土地覆盖变化规模较小的环境中严重低估森林地上碳(AGC)损失。该结论得到了泛热带研究的支持,该研究表明,与基于样本的估计相比,基于Landsat的制图省掉了非洲几乎一半的森林损失(44%)(基于样本的估计比基于地图的估计高出78%)。 。在拉丁美洲和东南亚,Landsat的表现良好(基于样本的估计分别比基于地图的估计高出15%和6%),那里的森林动态主要由大规模的工业森林砍伐所主导。泛热带验证样本还允许按自然(原始和成熟的次生森林以及天然林地)或人为管理(人工林,农林业系统,树木覆盖快速旋转的生计农业区域)中发生的森林覆盖率和AGC损失进行分类)森林。泛热带地区,AGC损失的58%来自天然林,天然AGC损失的比例在巴西最高(72%),在刚果(金)以外的潮湿热带非洲最低(22%)。泛热带研究基于森林的结构特征(冠层覆盖和高度)和完整性,采用了一种新颖的森林分层方法进行碳估算,这有助于减少基于样本的估算的标准误差(泛热带森林总误差的SE为4%森林损失面积估算)。这种分层还可以通过划定具有不同碳含量的完整和非完整森林区域来量化森林退化。在上一研究章节中,通过使完整的(腹地)森林制图过程自动化,对间接量化森林退化的方法进行了改进。腹地森林被定义为近期历史中没有干扰并已从干扰中移除的森林斑块。它们在利用空间环境绘制结构不同(退化和非退化)森林的地图中的效用,为改善森林碳储量的分层提供了一种途径。论文的结论总结了基于样本的面积估计在监测森林碳储量方面的优势和挑战,以及通过调整空间显式地图以使其与无偏的基于样本的估计值相匹配的方法,可以将这些估计值用于空间显式图的修订。腹地森林地图除了为基于样本的碳监测提供有价值的基础外,还可以作为对剩余的生态完好的热带森林进行近实时监测的基准。

著录项

  • 作者

    Tyukavina, Alexandra.;

  • 作者单位

    University of Maryland, College Park.;

  • 授予单位 University of Maryland, College Park.;
  • 学科 Geography.;Remote sensing.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 136 p.
  • 总页数 136
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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