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首页> 外文期刊>Journal of Geophysical Research. Biogeosciences >Land surface phenology from optical satellite measurement and CO _2 eddy covariance technique
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Land surface phenology from optical satellite measurement and CO _2 eddy covariance technique

机译:光学卫星测量和CO _2涡度协方差技术研究地表物候

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Land surface phenology (LSP) is an integrative indicator of vegetation dynamics under a changing environment. Increasing amounts of remote sensing measurements and CO _2 flux observations offer unprecedented opportunities to quantify LSP phases at landscape scale. LSP start of season (SOS) and end of season (EOS) estimates are often based on the use of a single-purpose vegetation index derived from optical satellite data, characterized by poor performances in decoupling soil and snow cover dynamics from LSP cycles, as well as contrasting responses of the needleleaf and broadleaf forests in boreal ecosystems. We propose a new remote-sensing-based phenology index (PI) which combines the merits of normalized difference vegetation index (NDVI) and normalized difference infrared index (NDII) by taking the difference of squared greenness and wetness to remove the soil and snow cover dynamics from key vegetation LSP cycles. We have cross-validated the remote-sensing-based LSP of CO _2 flux observations from 11 selected tower sites across Canada and the United States consisting of needleleaf forests, broadleaf forests, and croplands. The results indicate that PI estimates the SOS and EOS dates better than NDVI when compared to the LSP dates from CO_2 flux measurements (reduced RMSE, bias and dispersions, and higher correlation). PI-based SOS and EOS estimates are in good agreement with those derived from CO _2 flux measurements with mean bias comparable to the temporal resolution of the high-quality, 8-day composite satellite measurements. Finally, PI also shows a smoother time series compared to NDVI and NDII.
机译:地表物候学(LSP)是变化环境下植被动态的综合指标。越来越多的遥感测量和CO _2通量观测提供了前所未有的机会来量化景观尺度上的LSP相位。 LSP的季节开始(SOS)和季节结束(EOS)估计通常基于从光学卫星数据得出的单一植被指数的使用,其特征是将LSP循环中的土壤和积雪动力学解耦性能差,例如以及针叶林和阔叶林在北方生态系统中的对比反应。我们提出了一种新的基于遥感的物候指数(PI),该指数结合了归一化植被指数(NDVI)和归一化红外指数(NDII)的优点,方法是利用平方和的绿度和湿度的差异来去除土壤和积雪关键植被LSP周期的动态变化。我们已经对来自加拿大和美国的11个选定塔楼站点(包括针叶林,阔叶林和农田)的CO _2通量观测值的基于遥感的LSP进行了交叉验证。结果表明,与通过CO_2通量测量得到的LSP日期相比,PI估计SOS和EOS的日期要好于NDVI(降低的RMSE,偏差和离散度以及更高的相关性)。基于PI的SOS和EOS估算值与从CO _2通量测量得出的估算值非常吻合,其平均偏差可与高质量8天复合卫星测量的时间分辨率相媲美。最后,与NDVI和NDII相比,PI还显示了更平滑的时间序列。

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