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首页> 外文期刊>Water resources research >Improved error estimates of a discharge algorithm for remotely sensed river measurements: Test cases on Sacramento and Garonne Rivers
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Improved error estimates of a discharge algorithm for remotely sensed river measurements: Test cases on Sacramento and Garonne Rivers

机译:改进的用于遥感河流测量的流量算法的误差估计:萨克拉曼多和加龙河的测试案例

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摘要

We present an improvement to a previously presented algorithm that used a Bayesian Markov Chain Monte Carlo method for estimating river discharge from remotely sensed observations of river height, width, and slope. We also present an error budget for discharge calculations from the algorithm. The algorithm may be utilized by the upcoming Surface Water and Ocean Topography (SWOT) mission. We present a detailed evaluation of the method using synthetic SWOT-like observations (i.e., SWOT and AirSWOT, an airborne version of SWOT). The algorithm is evaluated using simulated AirSWOT observations over the Sacramento and Garonne Rivers that have differing hydraulic characteristics. The algorithm is also explored using SWOT observations over the Sacramento River. SWOT and AirSWOT height, width, and slope observations are simulated by corrupting the "true'' hydraulic modeling results with instrument error. Algorithm discharge root mean square error (RMSE) was 9% for the Sacramento River and 15% for the Garonne River for the AirSWOT case using expected observation error. The discharge uncertainty calculated from Manning's equation was 16.2% and 17.1%, respectively. For the SWOT scenario, the RMSE and uncertainty of the discharge estimate for the Sacramento River were 15% and 16.2%, respectively. A method based on the Kalman filter to correct errors of discharge estimates was shown to improve algorithm performance. From the error budget, the primary source of uncertainty was the a priori uncertainty of bathymetry and roughness parameters. Sensitivity to measurement errors was found to be a function of river characteristics. For example, Steeper Garonne River is less sensitive to slope errors than the flatter Sacramento River.
机译:我们提出了一种对先前提出的算法的改进,该算法使用贝叶斯马尔可夫链蒙特卡罗方法从河流高度,宽度和坡度的遥感观测值估算河流流量。我们还提出了用于算法计算排放量的误差预算。即将到来的地表水和海洋地形(SWOT)任务可以利用该算法。我们使用合成的类似SWOT的观测结果(即SWOT和AirSWOT,SWOT的机载版本)对该方法进行了详细评估。使用模拟的AirSWOT观测值对萨克拉曼多河和加龙河的水力特征有所不同,对算法进行了评估。还使用萨克拉曼多河上的SWOT观测资料探索了该算法。 SWOT和AirSWOT的高度,宽度和坡度观测值是通过破坏带有仪器误差的“真实”水力模型结果来模拟的,萨克拉曼多河的算法排放均方根误差(RMSE)为9%,加龙河的算法为15%在使用预期观测误差的AirSWOT案例中,根据曼宁方程计算的排放不确定性分别为16.2%和17.1%;对于SWOT情景,萨克拉曼多河的排放均方根值和排放估算的不确定性分别为15%和16.2%。提出了一种基于卡尔曼滤波器的流量估算误差修正方法,以提高算法性能;从误差预算中,不确定性的主要来源是测深和粗糙度参数的先验不确定性,对测量误差的敏感性为例如,与更平坦的萨克拉门托河相比,Steeper Garonne河对坡度误差的敏感性较低。

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  • 来源
    《Water resources research》 |2016年第1期|278-294|共17页
  • 作者单位

    Northeastern Univ, Dept Civil & Environm Engn, Boston, MA 02115 USA|Univ Calif Merced, Sierra Nevada Res Inst, Merced, CA USA;

    INSA Strasbourg, Fluid Mech Team, ICUBE UMR 7357, Strasbourg, France;

    Univ Fed Rio Grande do Sul, Inst Pesquisas Hidraul, Porto Alegre, RS, Brazil;

    Ohio State Univ, Sch Earth Sci, Columbus, OH 43210 USA;

    Univ Toulouse, Allee Camille Soula, Toulouse, France|UPS, CNRS, INPT, Allee Camille Soula, Toulouse, France|Inst Mecan Fluides Toulouse, Allee Camille Soula, Toulouse, France;

    Northeastern Univ, Dept Civil & Environm Engn, Boston, MA 02115 USA;

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