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Comparing and Combining Remotely Sensed Land Surface Temperature Products for Improved Hydrological Applications

机译:比较和组合遥感陆地表面温度产品以改善水文应用

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Land surface temperature (LST) is an important variable that provides a valuable connection between the energy and water budget and is strongly linked to land surface hydrology. Space-borne remote sensing provides a consistent means for regularly observing LST using thermal infrared (TIR) and passive microwave observations each with unique strengths and weaknesses. The spatial resolution of TIR based LST observations is around 1 km, a major advantage when compared to passive microwave observations (around 10 km). However, a major advantage of passive microwaves is their cloud penetrating capability making them all-weather sensors whereas TIR observations are routinely masked under the presence of clouds and aerosols. In this study, a relatively simple combination approach that benefits from the cloud penetrating capacity of passive microwave sensors was proposed. In the first step, TIR and passive microwave LST products were compared over Australia for both anomalies and raw timeseries. A very high agreement was shown over the vast majority of the country with R 2 typically ranging from 0.50 to 0.75 for the anomalies and from 0.80 to 1.00 for the raw timeseries. Then, the scalability of the passive microwave based LST product was examined and a pixel based merging approach through linear scaling was proposed. The individual and merged LST products were further compared against independent LST from the re-analysis model outputs. This comparison revealed that the TIR based LST product agrees best with the re-analysis data (R 2 0.26 for anomalies and R 2 0.76 for raw data), followed by the passive microwave LST product (R 2 0.16 for anomalies and R 2 0.66 for raw data) and the combined LST product (R 2 0.18 for anomalies and R 2 0.62 for raw data). It should be noted that the drop in performance comes with an increased revisit frequency of approximately 20% compared to the revised frequency of the TIR alone. Additionally, this comparison against re-analysis data was subdivided over Australia’s major climate zones and revealed that the relative agreement between the individual and combined LST products against the re-analysis data is consistent over these climate zones. These results are also consistent for both the anomalies and the raw time series. Finally, two examples were provided that demonstrate the proposed merging approach including an example for the Hunter Valley floods along Australia’s central coast that experienced significant flooding in April 2015.
机译:地表温度(LST)是一个重要的变量,它在能量和水的预算之间提供了宝贵的联系,并与地表水文学密切相关。星载遥感为使用热红外(TIR)和被动微波观测法定期观测LST提供了一种一致的手段,每种观测法都有各自的优缺点。基于TIR的LST观测的空间分辨率约为1 km,这是与被动微波观测(约10 km)相比的主要优势。但是,无源微波的主要优点是它们的云穿透能力使其成为全天候传感器,而TIR观测通常在云和气溶胶存在下被掩盖。在这项研究中,提出了一种相对简单的组合方法,该方法得益于无源微波传感器的云穿透能力。第一步,比较了澳大利亚的TIR和无源微波LST产品的异常和原始时间序列。在全国绝大多数地区显示出很高的一致性,R 2的异常范围通常为0.50至0.75,原始时间序列的范围为0.80至1.00。然后,研究了基于微波的无源LST产品的可扩展性,并提出了一种通过线性缩放的基于像素的合并方法。根据重新分析模型的输出,将单独的和合并的LST产品与独立的LST进行了进一步比较。这种比较表明,基于TIR的LST产品与再分析数据最吻合(异常R 2 0.26,原始数据R 2 0.76),其次是无源微波LST产品(异常R 2 0.16,R 2 0.66)。原始数据)和组合的LST乘积(异常值R 2 0.18,原始数据R 2 0.62)。应该注意的是,与单独修订的TIR频率相比,性能下降伴随着大约20%的重新访问频率增加。此外,这种与再分析数据的比较在澳大利亚的主要气候区进行了细分,结果表明,在这些气候区,单个和组合的LST产品与再分析数据之间的相对一致是一致的。这些结果对于异常和原始时间序列也是一致的。最后,提供了两个示例来说明拟议的合并方法,其中包括澳大利亚中部海岸的猎人谷洪水的示例,该洪水在2015年4月经历了严重的洪水。

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