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基于星载传感器的水位重建和预测:以湄公河和长江流域为例。

Water Level Reconstruction and Prediction Based on Space-Borne Sensors: A Case Study in the Mekong and Yangtze River Basins.

机构信息

School of Geodesy and Geomatics, Wuhan University, Wuhan 430079, China.

Key Laboratory of Geospace Environment and Geodesy, Ministry of Education, Wuhan University, Wuhan 430079, China.

出版信息

Sensors (Basel). 2018 Sep 13;18(9):3076. doi: 10.3390/s18093076.

Abstract

Water level (WL) measurements denote surface conditions that are useful for monitoring hydrological extremes, such as droughts and floods, which both affect agricultural productivity and regional development. Due to spatially sparse in situ hydrological stations, remote sensing measurements that capture localized instantaneous responses have recently been demonstrated to be a viable alternative to WL monitoring. Despite a relatively good correlation with WL, a traditional passive remote sensing derived WL is reconstructed from nearby remotely sensed surface conditions that do not consider the remotely sensed hydrological variables of a whole river basin. This method's accuracy is also limited. Therefore, a method based on basin-averaged, remotely sensed precipitation from the Tropical Rainfall Measuring Mission (TRMM) and gravimetrically derived terrestrial water storage (TWS) from the Gravity Recovery and Climate Experiment (GRACE) is proposed for WL reconstruction in the Yangtze and Mekong River basins in this study. This study examines the WL reconstruction performance from these two remotely sensed hydrological variables and their corresponding drought indices (i.e., TRMM Standardized Precipitation Index (TRMM-SPI) and GRACE Drought Severity Index (GRACE-DSI)) on a monthly temporal scale. A weighting procedure is also developed to explore a further potential improvement in the WL reconstruction. We found that the reconstructed WL derived from the hydrological variables compares well to the observed WL. The derived drought indices perform even better than those of their corresponding hydrological variables. The indices' performance rate is owed to their ability to bypass the influence of El Niño Southern Oscillation (ENSO) events in a standardized form and their basin-wide integrated information. In general, all performance indicators (i.e., the Pearson Correlation Coefficient (PCC), Root-mean-squares error (RMSE), and Nash⁻Sutcliffe model efficiency coefficient (NSE)) reveal that the remotely sensed hydrological variables (and their corresponding drought indices) are better alternatives compared with traditional remote sensing indices (e.g., Normalized Difference Vegetation Index (NDVI)), despite different geographical regions. In addition, almost all results are substantially improved by the weighted averaging procedure. The most accurate WL reconstruction is derived from a weighted TRMM-SPI for the Mekong (and Yangtze River basins) and displays a PCC of 0.98 (and 0.95), a RMSE of 0.19 m (and 0.85 m), and a NSE of 0.95 (and 0.89); by comparison, the remote sensing variables showed less accurate results (PCC of 0.88 (and 0.82), RMSE of 0.41 m (and 1.48 m), and NSE of 0.78 (and 0.67)) for its inferred WL. Additionally, regardless of weighting, GRACE-DSI displays a comparable performance. An external assessment also shows similar results. This finding indicates that the combined usage of remotely sensed hydrological variables in a standardized form and the weighted averaging procedure could lead to an improvement in WL reconstructions for river basins affected by ENSO events and hydrological extremes.

摘要

水位(WL)测量表示表面条件,可用于监测水文极值,如干旱和洪水,这两者都影响农业生产力和区域发展。由于空间上的水文站稀疏,最近的研究表明,捕捉局部瞬时响应的遥感测量可以作为 WL 监测的可行替代方法。尽管与 WL 具有较好的相关性,但传统的无源遥感衍生的 WL 是根据附近的遥感表面条件重建的,这些条件不考虑整个流域的遥感水文变量。该方法的准确性也受到限制。因此,本研究提出了一种基于流域平均的方法,利用热带降雨测量任务(TRMM)的遥感降水和重力恢复与气候实验(GRACE)的重力推断的陆地水存储(TWS)来重建长江和湄公河流域的 WL。本研究在月时间尺度上研究了这两个遥感水文变量及其相应的干旱指数(即 TRMM 标准化降水指数(TRMM-SPI)和 GRACE 干旱严重指数(GRACE-DSI))的 WL 重建性能。还开发了一种加权程序来探索 WL 重建的进一步潜在改进。我们发现,从水文变量推导的 WL 与观测到的 WL 吻合较好。衍生的干旱指数甚至比其对应的水文变量表现得更好。这些指数的表现归因于它们以标准化形式绕过厄尔尼诺-南方涛动(ENSO)事件影响的能力,以及它们的流域综合信息。总的来说,所有性能指标(即皮尔逊相关系数(PCC)、均方根误差(RMSE)和纳什-苏特克里夫模型效率系数(NSE))表明,与传统遥感指数(如归一化植被指数(NDVI))相比,遥感水文变量(及其相应的干旱指数)是更好的替代方法,尽管它们处于不同的地理区域。此外,加权平均程序几乎可以显著提高所有结果。最准确的 WL 重建是由加权 TRMM-SPI 对湄公河(和长江流域)的衍生,显示出 0.98(和 0.95)的 PCC、0.19 m(和 0.85 m)的 RMSE 和 0.95(和 0.89)的 NSE;相比之下,遥感变量对其推断的 WL 表现出较低的准确性(PCC 为 0.88(和 0.82),RMSE 为 0.41 m(和 1.48 m),NSE 为 0.78(和 0.67))。此外,无论加权与否,GRACE-DSI 都显示出类似的性能。外部评估也显示出类似的结果。这一发现表明,以标准化形式结合使用遥感水文变量和加权平均程序,可能会提高受 ENSO 事件和水文极值影响的流域的 WL 重建。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aff0/6163373/3aa97faff2a8/sensors-18-03076-g001.jpg

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