首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Estimating landscape net ecosystem exchange at high spatial-temporal resolution based on Landsat data, an improved upscaling model framework, and eddy covariance flux measurements
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Estimating landscape net ecosystem exchange at high spatial-temporal resolution based on Landsat data, an improved upscaling model framework, and eddy covariance flux measurements

机译:基于Landsat数据,改进的放大模型框架和涡度协方差通量测量,以高时空分辨率估算景观网生态系统交换

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More accurate estimation of the carbon dioxide flux depends on the improved scientific understanding of the terrestrial carbon cycle. Remote-sensing-based approaches to continental-scale estimation of net ecosystem exchange (NEE) have been developed but coarse spatial resolution is a source of errors. Here we demonstrate a satellite-based method of estimating NEE using Landsat TM/ETM + data and an upscaling framework. The upscaling framework contains flux-footprint climatology modeling, modified regression tree (MRT) analysis and image fusion. By scaling NEEmeasured at flux towers to landscape and regional scales, this satellite-based method can improve NEE estimation at high spatial-temporal resolution at the landscape scale relative to methods based on MODIS data with coarser spatial-temporal resolution. This method was applied to sixteen flux sites from the Canadian Carbon Program and AmeriFlux networks located in North America, covering forest, grass, and cropland biomes. Compared to a similar method using MODIS data, our estimation is more effective for diagnosing landscape NEE with the same temporal resolution and higher spatial resolution (30 m versus 1 km) (r~2 = 0.7548 vs. 0.5868, RMSE = 1.3979 vs. 1.7497 g C m~(-2) day~(-1), average error = 0.8950 vs. 1.0178 g C m~(-2) day~(-1), relative error = 0.47 vs. 0.54 for fused Landsat and MODIS imagery, respectively). We also compared the regional NEE estimations using Carbon Tracker, our method and eddy-covariance observations. This study demonstrates that the data-driven satellite-based NEE diagnosed model can be used to upscale eddy-flux observations to landscape scales with high spatial-temporal resolutions.
机译:二氧化碳通量的更准确估计取决于对陆地碳循环的科学认识。已经开发了基于遥感的大陆式净生态系统交换(NEE)规模估算方法,但是粗略的空间分辨率是造成误差的原因。在这里,我们演示了使用Landsat TM / ETM +数据和升级框架的基于卫星的NEE估算方法。升级框架包含流量足迹气候模型,修改后的回归树(MRT)分析和图像融合。通过将在通量塔处测得的NEE缩放到景观和区域尺度,相对于基于MODIS数据的方法,该方法可以提高景观时域在高时空分辨率下的NEE估计,而该方法具有较粗糙的时空分辨率。该方法已应用于来自加拿大碳计划和位于北美的AmeriFlux网络的16个通量站点,覆盖森林,草丛和农田生物群落。与使用MODIS数据的类似方法相比,我们的估计对于诊断具有相同时间分辨率和更高空间分辨率(30 m对1 km)的景观NEE更有效(r〜2 = 0.7548 vs. 0.5868,RMSE = 1.3979 vs. 1.7497 g C m〜(-2)天〜(-1),对于Landsat和MODIS融合图像,平均误差= 0.8950 vs.1.0178 g C m〜(-2)天〜(-1),相对误差= 0.47 vs.0.54 , 分别)。我们还使用Carbon Tracker,我们的方法和涡度协方差观察结果对区域NEE估计值进行了比较。这项研究表明,基于数据的基于卫星的NEE诊断模型可用于将涡流观测扩展到具有高时空分辨率的景观尺度。

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