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首页> 外文期刊>Journal of hydrometeorology >A Multiscale Remote Sensing Model for Disaggregating Regional Fluxes to Micrometeorological Scales
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A Multiscale Remote Sensing Model for Disaggregating Regional Fluxes to Micrometeorological Scales

机译:用于将区域通量分解为微气象尺度的多尺度遥感模型。

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摘要

Disaggregation of regional-scale (10~3 m) flux estimates to micrometeorological scales (10~1–10~2 m) facilitates direct comparison between land surface models and ground-based observations. Inversely, it also provides a means for upscaling flux-tower information into a regional context. The utility of the Atmosphere–Land Exchange Inverse (ALEXI) model and associated disaggregation technique (DisALEXI) in effecting regional to local downscaling is demonstrated in an application to thermal imagery collected with the Geostationary Operational Environmental Satellite (GOES) (5-km resolution) and Landsat (60-m resolution) over the state of Oklahoma on 4 days during 2000–01. A related algorithm (DisTrad) sharpens thermal imagery to resolutions associated with visible–near-infrared bands (30 m on Landsat), extending the range in scales achievable through disaggregation. The accuracy and utility of this combined multiscale modeling system is evaluated quantitatively in comparison with measurements made with flux towers in the Oklahoma Mesonet and qualitatively in terms of enhanced information content that emerges at high resolution where flux patterns can be identified with recognizable surface phenomena. Disaggregated flux fields at 30-m resolution were reaggregated over an area approximating the tower flux footprint and agreed with observed fluxes to within 10%. In contrast, 5-km flux predictions from ALEXI showed a higher relative error of 17% because of the gross mismatch in scale between model and measurement, highlighting the efficacy of disaggregation as a means for validating regional-scale flux predictions over heterogeneous landscapes. Sharpening the thermal inputs to DisALEXI with DisTrad did not improve agreement with observations in comparison with a simple bilinear interpolation technique because the sharpening interval associated with Landsat (60–30 m) was much smaller than the dominant scale of heterogeneity (200–500 m) in the scenes studied. Greater benefit is expected in application to Moderate Resolution Imaging Spectroradiometer (MODIS) data, where the potential sharpening interval (1 km to 250 m) brackets the typical agricultural field scale. Thermal sharpening did, however, significantly improve output in terms of visual information content and model convergence rate.
机译:将区域尺度(10〜3 m)通量估计值分解为微气象尺度(10〜1–10〜2 m),有助于直接比较陆地表面模型和地面观测。相反,它也提供了一种将通量塔信息提升到区域环境的方法。大气-陆地交换逆模型(ALEXI)和相关的分解技术(DisALEXI)在实现区域到局部缩小方面的实用性在对地静止可操作环境卫星(GOES)采集的热图像中的应用得到了证明(5 km分辨率) 2000-01年的第4天,在俄克拉荷马州的Landsat(分辨率为60 m)上。一种相关的算法(DisTrad)将热成像锐化为与可见-近红外波段(Landsat上30 m)相关的分辨率,从而扩大了可通过分解实现的比例范围。与在俄克拉荷马州Mesonet中使用磁通塔进行的测量相比,该组合式多尺度建模系统的准确性和实用性得到了定量评估,并在高分辨率下以增强的信息含量定性了,其中可以通过可识别的表面现象识别磁通量模式。以30 m分辨率分解的磁通量场在接近塔磁通足迹的区域内重新聚集,并且与观测到的磁通量一致,在10%以内。相比之下,ALEXI的5公里通量预测显示出较高的相对误差,这是由于模型与测量之间规模上的总体失配所致,因此有17%的相对误差,这突出表明了分解的有效性,该方法可用于验证异质景观上的区域尺度通量预测。与简单的双线性插值技术相比,使用DisTrad锐化DisALEXI的热量输入并不能改善与观测值的一致性,因为与Landsat(60–30 m)相关的锐化间隔远小于非均质性的主导尺度(200–500 m)在研究的场景中。在中分辨率成像光谱仪(MODIS)数据中应用有望获得更大的收益,其中潜在的锐化间隔(1 km至250 m)包围了典型的农业领域规模。但是,热锐化确实在视觉信息内容和模型收敛速度方面显着提高了输出。

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