基于多尺度遥感数据的徐州地区净初级生产力估算

Kun Tan, Erzhu Li, Peijun Du
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引用次数: 1

摘要

利用基于Landsat ETM+和MODIS两种遥感数据和气候变量的改进Carnegie - Ames - Stanford方法估算了徐州市2006年、2008年和2010年6月的净初级生产力(NPP)。研究区NPP随空间尺度的扩大而减小;近年来,由于气候和环境的变化,徐州市陆地植被的平均NPP呈下降趋势;整个研究区划分为NPP高分区、NPP高分区、NPP低分区和NPP低分区。随着空间尺度的扩大,各分区的平均NPP呈下降趋势,低分区面积占比呈上升趋势,不同空间尺度的NPP结构存在差异。不同植被类型的NPP受尺度效应影响显著。其中,城市林地的NPP由于混合像元的存在而降低,并随着尺度的扩大而增大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of net primary productivity using multi-scale remote sensing data in Xuzhou, China
An improved Carnegie Ames Stanford Approach model based on two kinds of remote sensing data, Landsat ETM+ and MODIS, and climate variables was applied to estimate the net primary productivity (NPP) of Xuzhou in the June of 2006,2008 and 2010. The NPP of the study area decreases with the spatial scale expanding; The average NPP of terrestrial vegetation in Xuzhou shows decreasing trend in recent years because of the changes in climate and environment; The whole study area was plotted out four sub-regions, which were NPP higher sub-region, NPP high sub-region, NPP low sub-region and NPP lower sub-region. The average NPP of every sub-region was decreasing and the area percentage of lower sub-region was increasing with the scale expanding, so the NPP structure is various in different spatial scales. The NPP of the different vegetation types is significantly influenced by scale effect. In particular, the NPP of urban woodland was estimated lower value because of mixed pixel, it was increasing with the scale expanding.
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