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Utility of SCaMPR Satellite versus Ground-Based Quantitative Precipitation Estimates in Operational Flood Forecasting: The Effects of TRMM Data Ingest

机译:SCaMPR卫星与地面定量降水估计在实用洪水预报中的实用性:TRMM数据提取的影响

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This study examines the utility of satellite-based quantitative precipitation estimates (QPEs) from the Self-Calibrating Multivariate Precipitation Retrieval (SCaMPR) algorithm for hydrologic prediction. In this work, two sets of SCaMPR QPEs, one without and the other with Tropical Rainfall Measurement Mission(TRMM) version 6 data integrated, were used as input forcing to the lumped National Weather Service hydrologic model to retrospectively generate flow simulations for 10 Texas catchments over 2000-07. The year 2000 was used for the model spinup, 2001-04 for calibration, and 2005-07 for validation. The results were validated using observed streamflow alongside similar simulations obtained using interpolated gauge QPEs with varying gauge network densities, and still others using the operational radar-gauge multisensor product(MAPX). The focus of the evaluation was on the high-flow events. A number of factors that could impact the relative utility of SCaMPR satellite QPE and gauge-only analysis (GMOSAIC) for flood prediction were examined, namely, 1) the incremental impacts of TRMM version 6 data ingest, 2) gauge density, 3) effects of calibration approaches, and 4) basin properties. Results indicate that ground-sensor-based QPEs in a broad sense outperform SCaMPR QPEs, while SCaMPR QPEs are competitive in a minority of catchments. TRMM ingest helped substantially improve the SCaMPR QPE-based simulation results. Change in calibration forcing, that is, calibrating the model using individual QPEs rather than the MAPX(the most accurate QPE), yielded overall improvements to the simulation accuracy but did not change the relative performance of the QPEs.
机译:这项研究检验了基于自校正多元降水检索(SCaMPR)算法的基于卫星的定量降水估计(QPE)在水文预测中的效用。在这项工作中,使用了两组SCaMPR QPE,一组没有集成,另一组集成了热带降雨测量任务(TRMM)版本6数据,作为集总的国家气象局水文模型的输入强迫,以追溯生成10个德克萨斯集水区的流量模拟超过2000-07。 2000年用于模型升级,2001-04年用于校准,2005-07年用于验证。使用观察到的水流以及通过使用具有变化的仪表网络密度的内插仪表QPE获得的类似模拟以及使用可操作雷达仪表多传感器产品(MAPX)进行的其他模拟来验证结果。评估的重点是高流量事件。研究了许多可能影响SCaMPR卫星QPE和纯水位分析(GMOSAIC)的洪水预报相对实用性的因素,即1)TRMM版本6数据摄取的增量影响,2)水位密度,3)影响校准方法,以及4)盆地特性。结果表明,从广义上讲,基于地面传感器的QPE优于SCaMPR QPE,而SCaMPR QPE在少数流域具有竞争力。 TRMM摄取帮助大大改善了基于SCaMPR QPE的仿真结果。校准强制的改变,即使用单个QPE而不是MAPX(最精确的QPE)校准模型,对模拟精度产生了总体改善,但并未改变QPE的相对性能。

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