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Mapping vegetation spatial patterns from modeled water, temperature and solar radiation gradients

机译:根据模拟的水,温度和太阳辐射梯度绘制植被空间格局

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摘要

Maps of current and potential vegetation spatial patterns can be used to assess land cover changes, and aid in ecosystem management and restoration. The vegetation spatial patterns of subalpine forest species are largely controlled by variation in temperature, water and solar radiation resources. These fundamental resources were quantified across a 1100-km~2 landscape using biophysical models, a digital elevation model (DEM), and weather station data. Field data of species abundances were used to define species-habitat relationships and calibrate maximum likelihood classifications of the biophysical gradients. For comparison, a standard land cover classification of Landsat Thematic Mapper satellite imagery had an overall accuracy 68.3%. Using the biophysical gradients alone gave a similar 67.4% accuracy. The highest accuracy classification (83.2%) used both biophysical and spectral data. The biophysical resources were also used to map the presence or absence of four herb and shrub species that cannot be sensed remotely. These predictions ranged from 60% to 79% accurate. Maps of relative abundance were less accurate, from 61% to 63.2%. This low result may be due to historical and stochastic events, or simply a small data set. The spatial pattern of species and communities that are controlled by resources can be predicted using general biophysical models. The species-habitat relationships can also be used to improve remote sensing products.
机译:当前和潜在的植被空间格局图可用于评估土地覆盖变化,并有助于生态系统的管理和恢复。亚高山森林物种的植被空间格局在很大程度上受温度,水和太阳辐射资源变化的控制。使用生物物理模型,数字高程模型(DEM)和气象站数据,在1100 km〜2的景观中对这些基本资源进行了量化。物种丰度的现场数据用于定义物种与栖息地的关系,并校准生物物理梯度的最大似然分类。为了进行比较,Landsat Thematic Mapper卫星影像的标准土地覆被分类的整体准确度为68.3%。单独使用生物物理梯度可以得到相似的67.4%的准确度。最高准确度的分类(83.2%)同时使用了生物物理和光谱数据。生物物理资源还用于绘制无法遥测的四种草药和灌木物种的存在与否。这些预测的准确度从60%到79%不等。相对丰度图的准确性较低,从61%到63.2%。较低的结果可能是由于历史和随机事件,或者仅仅是少量数据集。可以使用一般的生物物理模型预测受资源控制的物种和群落的空间格局。物种-栖息地的关系也可用于改善遥感产品。

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