首页> 外文期刊>Agricultural and Forest Meteorology >Spatial representativeness of tall tower eddy covariance measurements using remote sensing and footprint analysis.
【24h】

Spatial representativeness of tall tower eddy covariance measurements using remote sensing and footprint analysis.

机译:使用遥感和足迹分析的高塔涡流协方差测量的空间代表性。

获取原文
获取原文并翻译 | 示例
       

摘要

We present a method for the estimation of the spatial representativeness of tall tower eddy covariance measurements monitoring a heterogeneous landscape. The approach attributes the measured signal to the different ecosystems surrounding the tall tower site. For the identification of the ecosystems, remotely sensed vegetation index time series are used. Using 250 m grid resolution defined by the available MODIS vegetation index data, we quantify the spatial distribution of winter and summer crops and we also provide an estimate on the fractional crop coverage for pixels with heterogeneous crop type. Using a state-of-the-art footprint model applicable in the mixed layer we calculate a footprint climatology for the 5-year period 2003-2007. With the synergy of the footprint analysis and the land cover classification scheme we quantify the representativeness of the eddy covariance measurement. It was found that the source region distribution is very similar from year to year. The biggest impact to the measurement originates generally within 1 km radius from the tower. 75-80% of the measured signal originates from agricultural areas, while the contribution of pastures is also relevant. Though there are important other land use types in the region (e.g. forests, settlements) their contribution to the measured signal is rather small (<5% for forested regions, <2% for urban areas). Inside the source area the relative importance and spatial distribution of summer and winter crops is variable among the years, which may influence the measured signal due to the different timing of the intensive carbon uptake period and harvest. The presented methodology is used to estimate summer and winter crop-specific carbon dioxide exchange time series. The crop-specific carbon dioxide fluxes are markedly different in each year, and exhibit strong covariation with the crop-specific NDVI time series. The results further suggest that the applied footprint model provides accurate footprint estimates.
机译:我们提出了一种监测异质景观的高塔涡流协方差测量的空间代表性的估计方法。该方法将测得的信号归因于高塔址周围的不同生态系统。为了识别生态系统,使用了遥感植被指数时间序列。使用可用的MODIS植被指数数据定义的250 m网格分辨率,我们可以量化冬季和夏季作物的空间分布,并且还可以为异质作物类型的像素提供部分作物覆盖率的估计。使用适用于混合层的最新足迹模型,我们可以计算2003-2007年这5年的足迹气候。利用足迹分析和土地覆盖分类方案的协同作用,我们可以量化涡度协方差测量的代表性。发现源区域分布每年都非常相似。对测量的最大影响通常来自塔架半径1公里以内。被测信号的75-80%来自农业地区,而牧场的影响也很重要。尽管该地区还有其他重要的土地利用类型(例如森林,居民点),但它们对测得信号的贡献却很小(森林地区<5%,城市地区<2%)。在源区内部,夏季和冬季作物的相对重要性和空间分布在这些年中是可变的,由于集约化碳吸收期和收获时间的不同,这可能会影响实测信号。提出的方法用于估计夏季和冬季特定作物的二氧化碳交换时间序列。每年特定农作物的二氧化碳通量都存在显着差异,并且与特定农作物的NDVI时间序列表现出很强的协变性。结果进一步表明所应用的足迹模型提供了准确的足迹估计。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号