1992 - 2016年尼泊尔树木覆盖变化的制图与理解

Jefferson Fox, Sumeet Saksena, Kaspar Hurni, Jamon Van Den Hoek, Alexander Cuthbert Smith, Ram Chhetri, Pitamber Sharma
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摘要

自20世纪80年代以来,尼泊尔这个世界上最贫穷的国家之一,因其成功的社区林业项目而获得了全世界的认可。然而,由于地形的影响,例如遮阳、云、雪和冰,阻碍了遥感图像的分析,研究人员以前没有记录这种森林转变的空间明确影响。这个多学科研究项目使用了美国地质调查局(USGS)的Landsat 5、7和8从1988年到2016年的表面反射正确图像,这些图像可以在谷歌地球引擎中获得,以绘制全国森林覆盖变化。然后,我们使用随机森林(机器学习方法)和多水平回归分析来评估森林覆盖变化与地理和社会经济变量之间的关系。我们发现,从1992年到2016年,尼泊尔的森林覆盖率几乎翻了一番。除其他变量外,作为社区林业用户组的成员和从移徙到其他地方工作的儿童那里获得汇款收入对森林覆盖率有积极影响。
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Mapping and Understanding Changes in Tree Cover in Nepal: 1992 to 2016
Since the 1980s, Nepal, one of the poorest countries in the world, has gained worldwide recognition for its successful community forestry program. Researchers, however, have not previously documented the spatially explicit impacts of this forest transition because of the topographic effects, e.g., shading, clouds, snow, and ice, hindered remote-sensing imagery analysis. This multi-disciplinary research project used United States Geological Survey (USGS) Landsat 5, 7, and 8 surface reflected-correct imagery from 1988 to 2016 that were available in Google Earth Engine to map forest cover change across the country. We then used a RandomForest (machine learning method) and multilevel regression analyses to assess associations between changes in forest cover and physiographic and socio-economic variables. We found that between 1992 and 2016, forest cover in Nepal almost doubled. Among other variables, being a member of a community-forestry user group, and receiving remittance income from children who had migrated elsewhere to work had a positive impact on forest cover.
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