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Relative information from thermal infrared imagery via unoccupied aerial vehicle informs simulations and spatially-distributed assessments of stream temperature

机译:通过空载飞行器从红外热像获得的相对信息可为模拟和空间温度分布评估提供参考

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Stream temperature is a measure of water quality that reflects the balance of atmospheric heat exchange at the air-water interface and gains or losses of water along a stream reach. In urban areas, storm water sewers deliver water with varying magnitude and temperature to streams at variable timescales. Understanding the impacts of stormwater through space and time is therefore difficult to do with conventional approaches like in situ sensors. To study the impacts of stormwater on creek water temperatures, we combined in situ water temperature observations with thermal infrared (TIR) imagery collected via unoccupied aerial vehicle (UAV). Imagery was collected in May, June, and July of 2017. As ongoing work with UAV-based TIR suggests that this imagery is prone to poor accuracy, we focused on creating several data products beyond absolute water temperatures that can be used to assess temporal and spatial water temperature variations. In particular, TIR data products were used to extract the length of the observed stormwater plume as well as the width of the creek cross-section impacted by stormwater. From these values, we conclude that relatively narrow stormwater plumes affecting a small fraction of creek width can alter creek water temperatures for considerable distances downstream. We also applied TIR data to constrain results of a deterministic stream temperature model (HFLUX 3.0) that simulates the physical processes affecting stream heat exchanges. Stormwater plume lengths obtained from TIR imagery were used to refine spatially-distributed simulations, demonstrating that relative temperature information obtained from UAV imagery can provide useful calibration targets for stream temperature models. Overall, our work demonstrates the added value of UAV datasets for understanding urban stream temperatures, calibrating water quality models, and for modeling and monitoring of the impact of spatially explicit hydrologic processes on stream temperature. (C) 2019 Elsevier B.V. All rights reserved.
机译:溪流温度是水质的一种度量标准,反映了空气-水界面处大气热交换的平衡以及溪流沿岸水的得失。在城市地区,雨水管道以不同的时间尺度将大小和温度变化的水输送到河流中。因此,很难通过常规方法(例如原位传感器)来了解雨水在空间和时间上的影响。为了研究雨水对小溪水温的影响,我们将原位水温观测与通过无人飞行器(UAV)收集的热红外(TIR)图像相结合。图像是在2017年5月,6月和7月收集的。由于基于无人机的TIR正在进行的工作表明该图像的准确性很低,因此我们专注于创建超出绝对水温的几种数据产品,这些产品可用于评估时间和温度。空间水温变化。特别是,TIR数据产品用于提取观察到的雨水羽流的长度以及受雨水影响的小溪断面的宽度。从这些值可以得出结论,相对狭窄的暴雨羽流会影响小河宽度的一小部分,从而可以改变小河水的下游下游温度。我们还应用了TIR数据来约束确定性物流温度模型(HFLUX 3.0)的结果,该模型模拟了影响物流热交换的物理过程。从TIR影像获得的雨水羽流长度用于完善空间分布的模拟,表明从UAV影像获得的相对温度信息可以为河流温度模型提供有用的校准目标。总体而言,我们的工作证明了无人机数据集的附加价值,可用于了解城市溪流温度,校准水质模型以及对空间明确的水文过程对溪流温度的影响进行建模和监控。 (C)2019 Elsevier B.V.保留所有权利。

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