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Operational hydrological forecasting during the IPHEx-IOP campaign - Meet the challenge

机译:IPHEx-IOP活动期间的业务水文预报-应对挑战

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摘要

An operational streamflow forecasting testbed was implemented during the Intense Observing Period (IOP) of the Integrated Precipitation and Hydrology Experiment (IPHEx-IOP) in May-June 2014 to characterize flood predictability in complex terrain. Specifically, hydrological forecasts were issued daily for 12 headwater catchments in the Southern Appalachians using the Duke Coupled surface-groundwater Hydrology Model (DCHM) forced by hourly atmospheric fields and QPFs (Quantitative Precipitation Forecasts) produced by the NASA-Unified Weather Research and Forecasting (NU-WRF) model. Previous day hindcasts forced by radar-based QPEs (Quantitative Precipitation Estimates) were used to provide initial conditions for present day forecasts. This manuscript first describes the operational testbed framework and workflow during the IPHEx-IOP including a synthesis of results. Second, various data assimilation approaches are explored a posteriori (post-IOP) to improve operational (flash) flood forecasting. Although all flood events during the MP were predicted by the IPHEx operational testbed with lead times of up to 6 h, significant errors of over-and, or under-prediction were identified that could be traced back to the QPFs and subgrid-scale variability of radar QPEs. To improve operational flood prediction, three data-merging strategies were pursued post-IOP: (1) the spatial patterns of QPFs were improved through assimilation of satellite-based microwave radiances into NU-WRF; (2) QPEs were improved by merging raingauge observations with ground-based radar observations using bias correction methods to produce streamflow hindcasts and associated uncertainty envelope capturing the streamflow observations, and (3) river discharge observations were assimilated into the DCHM to improve streamflow forecasts using the Ensemble Kalman Filter (EnKF), the fixed-lag Ensemble Kalman Smoother (EnKS), and the Asynchronous EnKF (i.e. AEnKF) methods. Both flood hindcasts and forecasts were significantly improved by assimilating discharge observations into the DCHM. Specifically, Nash-Sutcliff Efficiency (NSE) values as high as 0.98, 0.71 and 0.99 at 15-min time-scales were attained for three headwater catchments in the inner mountain region demonstrating that the assimilation of discharge observations at the basin's outlet can reduce the errors and uncertainties in soil moisture at very small scales. Success in operational flood forecasting at lead times of 6, 9, 12 and 15 h was also achieved through discharge assimilation with NSEs of 0.87, 0.78, 0.72 and 0.51, respectively. Analysis of experiments using various data assimilation system configurations indicates that the optimal assimilation time window depends both on basin properties and storm-specific space-time-structure of rainfall, and therefore adaptive, context-aware configurations of the data assimilation system are recommended to address the challenges of flood prediction in headwater basins. (C) 2016 Elsevier B.V. All rights reserved.
机译:2014年5月至6月,在综合降水与水文学实验(IPHEx-IOP)的密集观测期(IOP)实施了可操作的流量预报试验台,以表征复杂地形中的洪水可预测性。具体而言,每天使用每小时大气场和美国国家航空航天局统一天气研究与预报(QPF)产生的QPF(定量降水预报)强制使用杜克耦合地表地下水水文学模型(DCHM),对阿巴拉契亚南部的12个上游水源地每天发布水文预报。 NU-WRF)模型。利用基于雷达的QPE(定量降水估算)强迫进行的前一天后预报为当前预报提供了初始条件。该手稿首先描述了IPHEx-IOP期间的操作测试平台框架和工作流程,包括结果的综合。其次,探索了各种数据同化方法(后IOP),以改善运行(快速)洪水预报。尽管MPHEx操作测试平台预测了MP期间的所有洪水事件,前置时间最长为6小时,但仍发现了严重的过高或过低预测误差,可以追溯到QPF和亚电网规模的变化。雷达QPE。为了改进业务洪水预报,在IOP后采用了三种数据合并策略:(1)通过将基于卫星的微波辐射吸收到NU-WRF中来改善QPF的空间模式; (2)通过将雨量计观测值与基于地面的雷达观测值结合使用偏差校正方法来改进QPE,以产生流量后兆和捕获流量观测值的相关不确定性包络,并且(3)将河流流量观测值同化到DCHM中,从而使用集合卡尔曼滤波器(EnKF),固定滞后集合卡尔曼平滑器(EnKS)和异步EnKF(即AEnKF)方法。通过将排放观测资料纳入DCHM,可以显着改善洪水的后预报和预报。具体而言,内山区三个源头集水区在15分钟时标上的纳什—苏克利夫效率(NSE)值分别达到0.98、0.71和0.99,这表明流域出口处的排放观测值的同化可以减少小规模土壤水分的误差和不确定性。通过排放同化的NSE分别为0.87、0.78、0.72和0.51,也成功实现了提前6、9、12和15 h的业务洪水预报。使用各种数据同化系统配置进行的实验分析表明,最佳同化时间窗口取决于流域属性和特定于降雨的风暴时空结构,因此建议采用自适应的,根据上下文而定的数据同化系统配置来解决水源流域洪水预报的挑战。 (C)2016 Elsevier B.V.保留所有权利。

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