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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Improving SMAP freeze-thaw retrievals for pavements using effective soil temperature from GEOS-5: Evaluation against in situ road temperature data over the U.S
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Improving SMAP freeze-thaw retrievals for pavements using effective soil temperature from GEOS-5: Evaluation against in situ road temperature data over the U.S

机译:使用Geos-5的有效土壤温度改善Smap Freeze-解冻检索,用于使用Geos-5的有效土壤温度:对U.S的原位路温度数据进行评估

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摘要

Seasonal freeze-thaw (FT) affects over half the northern hemisphere and impacts many key processes of the Earth System such as energy exchange, hydrology and vegetation. Nearly all past studies using spaceborne FT retrievals have focused on characterizing FT specifically for natural environments. FT in the built environment is also routinely studied and a topic of great interest, especially with regards to transportation infrastructure. Whereas natural FT process are frequently investigated using spaceborne observations, FT studies of roads are often limited to local scales, using in situ or nearby weather station data only. Comparisons between FT retrievals obtained from NASA's Soil Moisture Active Passive (SMAP) satellite and roads in Alaska (AK) and the Contiguous United States (CONUS) showed that spaceborne FT retrievals had good agreement with road data. But those results also indicated that NASA FT retrievals in CONUS were relatively too warm compared to road data. If SMAP FT retrievals were to be used for identifying FT transition timing for applications by the transportation community, it is also important for frozen conditions to be identified more accurately. This work is primarily concerned with improving frozen retrievals made in CONUS by calculating new Normalized Polarization Ratio (NPR) thresholds as compared to those currently used in SMAP FT. We found that focusing on a temporal subset of October through May for comparisons greatly improved the correlation between NPR and effective soil temperature (T-eff, one of SMAP's ancillary datasets), often from about zero to 0.6. We then applied linear regression between NPR and T-eff to obtain new NPR thresholds resulting in the FT-Roads (FT-R) product. NASA FT and FT-R were evaluated against road data at about 1000 locations in CONUS and a battery of different tests indicated that FT-R performed better under nearly all conditions compared to NASA FT. Overall, NASA FT accuracies were 69% and 80% for 6 am and 6 pm SMAP retrievals, while FT-R achieved accuracies of 79% and 82%. We also investigated the potential for using T-eff for road FT (6 am, only) and found that those comparisons were even more accurate (84%). We've also quantified inter- and intraregional differences of SMAP FT performance and found that accuracy metrics vary over twice as much between geographic subdivisions (9%) as compared to between the states within a subdivision (4%). Most importantly, the main goal of improving the detection of in situ frozen conditions in CONUS was realized, with FT-R accurately detecting frozen conditions > 50% more frequently than NASA FT.
机译:季节性冻融(FT)影响北半球的一半,并影响地球系统的许多关键过程,如能量交换,水文和植被。几乎所有过去使用Spareborne FT检索的研究都集中在专门用于自然环境的FT。建造环境中的FT也是常规研究的,特别是兴趣的主题,特别是对于运输基础设施而言。虽然使用星载观察经常调查自然FT过程,但是,道路的FT研究通常仅限于本地秤,原位或附近的气象站数据仅限于本地尺度。从美国国家航空航天局的土壤水分活跃被动(SMAP)卫星和公路在阿拉斯加(AK)中获得的FT检索之间的比较,以及连续的美国(康明斯)表明,星载FT检索与道路数​​据有良好的一致性。但这些结果也表明,与道路数据相比,康纳斯的美国国家航空航空航天局的FT检索相对太温暖。如果使用SMAP FT检索用于通过运输社区识别应用程序的FT转换时间,对于更准确地识别的冻结条件也很重要。这项工作主要涉及通过计算新的归一化偏振率(NPR)阈值,改善康明斯的冻结检索,与当前用于SMAP FT中使用的阈值。我们发现,专注于10月至5月的时间子集大大改善了NPR和有效土壤温度之间的相关性(T-EFF,SMAP的辅助数据集之一),通常从约0到0.6。然后,我们在NPR和T-EFF之间应用线性回归,以获得新的NPR阈值,导致FT路(FT-R)产品。在康纳斯的大约1000个位置评估NASA FT和FT-R和不同测试电池的电池表明,与NASA FT相比,FT-R在几乎所有条件下更好。总体而言,NASA FT精度为69%和80%,持续6:00和6:6下午6点,而FT-R可实现79%和82%的精度。我们还调查了使用道路FT的T-Eff(仅限6时)的可能性,发现这些比较更准确(84%)。我们还规定了SMAP FT性能的间间和内部差异,发现,与细分内的状态(4%)之间的状态相比,在地理细分(9%)之间的准确度度量在地理细分(9%)之间的两倍多。最重要的是,实现了改善康明斯原位冷冻条件检测的主要目标,FT-R比NASA FT更频繁地检测冷冻条件> 50%。

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