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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Derivation of consistent, continuous daily river temperature data series by combining remote sensing and water temperature models
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Derivation of consistent, continuous daily river temperature data series by combining remote sensing and water temperature models

机译:通过组合遥感和水温模型来推导一致,连续的日常河流温度数据系列

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Scarcity of water temperature data in rivers may limit a diversity of studies considering this property, which regulates many physical, chemical, and biological processes. We present a robust method to generate a consistent, continuous daily river water temperature (RWT) data series for medium and large rivers using the combined techniques of remote sensing and water temperature modelling. In order to validate our approach, we divided this study into two parts: (i) we evaluated methods to derive RWT from Landsat 7 ETM+ and Landsat 8 TIRS imagery; and (ii) we evaluated the calibration and validation of river temperature models, using these data, to generate the continuous RWT data series. A 1.2 km section of the White River located near Hazleton, IN, USA, was selected to assess this method mainly due to river width and data availability. We tested three methods to retrieve RWT from Landsat 7 and four from Landsat 8, and we also applied a simple thermal sharpening technique. For Landsat 7, the methods showed bias and RMSE of 0.01-0.46 degrees C and 1.32-1.84 degrees C, while for Landsat 8, the methods showed bias and RMSE of 0.08-1.27 degrees C and 1.74-2.17 degrees C, and in both cases, the best results were found applying the radiative transfer equation with NASA's Atmospheric Correction Parameter Calculator. For the second part of the validation process, we compared a stochastic model and a hybrid model, air2stream, using as input two datasets: the RWT data derived from Landsat 7 only, and a combined dataset of both Landsat 7 and 8 derived RWT. The air2stream model outperformed the stochastic model when calibrated with Landsat 7 data only, with RMSE of 1.83 degrees C, but both models showed similar results when calibrated with the combined Landsat data, when air2stream showed RMSE of 1.58 degrees C. Due to its physical basis, better calibration procedure, and higher consistency, air2stream was considered the best model for deriving the continuous RWT data series. When compared to the measured daily mean RWT data, there was no observed tendency in under or overestimating the RWT in low or high temperature conditions by the modelled series. While further tests are needed in order to evaluate if our approach can be applied to analyse past behaviour and present trends, and the impacts of climate change on the temperature of rivers, the consistent results indicate that this approach has the potential to be applied in rivers with no measured temperature data, for example, in the spatial modelling of longitudinal profiles of rivers and the modelling of tributary river temperatures.
机译:河流中水温数据的稀缺可能限制考虑到这一财产的研究,这调节了许多物理,化学和生物过程。我们介绍了一种强大的方法,可以使用遥感和水温建模的组合技术来生成中型和大河流的一致,连续的日常河水温度(RWT)数据系列。为了验证我们的方法,我们将这项研究分为两部分:(i)我们评估了从Landsat 7 ETM +和Landsat 8 Tirs Imag的派生RWT的方法; (ii)我们评估了使用这些数据的河流温度模型的校准和验证,以产生连续的RWT数据系列。选择哈特尔顿附近的白河1.2公里的白色河段被选中,主要是由于河宽和数据可用性的主要原因。我们测试了三种方法从Landsat 8从Landsat 7和四个中检索RWT,我们还应用了一种简单的热锐化技术。对于LANDSAT 7,该方法显示出偏置和RMSE为0.01-0.46℃和1.32-1.84℃,而LANDSAT 8,该方法显示出偏差和0.08-1.27摄氏度和1.74-2.17摄氏度的偏差和RMSE案例,发现使用NASA的大气校正参数计算器辐射转移方程应用辐射转移方程。对于验证过程的第二部分,我们将随机模型和混合模型进行比较,Air2Stream使用作为输入两个数据集:从Landsat 7导出的RWT数据,以及Landsat 7和8导出的RWT的组合数据集。使用Landsat 7数据校准时,Air2Stream模型的表现优于随机模型,随着1.83摄氏度的RMSE,但在Air2Stream显示RMSE为1.58℃的情况下,两种模型都显示出类似的结果。 ,更好的校准程序和更高的一致性,Air2Stream被认为是导出连续RWT数据系列的最佳模型。与测量的每日平均RWT数据相比,通过建模系列在低温或高温条件下没有观察到的趋势或估计RWT。虽然需要进一步测试以评估我们的方法来分析过去行为和现在的趋势,以及气候变化对河流温度的影响,但结果表明这种方法有可能在河流中应用例如,没有测量的温度数据,在河流纵向谱的空间建模和支流河温度的建模中。

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