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Predicting Peak Flows in Real Time through Event Based Hydrologic Modeling for a Trans-Boundary River Catchment

机译:通过基于事件的跨边界流域水文建模实时预测峰值流量

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摘要

Investigating the hydrological response of an area to adverse climate changes and extreme rainfall events is crucial for managing land and water resources and mitigating the natural hazards like floods. Limited availability of the in situ data, especially in case of Transboundary Rivers, further highlights the need to develop and evaluate decision support systems which may predict the flows in real time using open source rainfall data. This paper presents the study conducted in Chenab River catchment, Pakistan, to develop and evaluate a hydrologic model using HEC-HMS for predicting flows based on TRMM rainfall data. The catchment was analyzed for hydro-morphological properties using SRTM DEM in HEC-GeoHMS. To rely on open source data as much as possible, digital soil map of the world developed by FAO and global land cover map developed by European Space Agency were utilized to compute Curve Number grid data for the catchment. These preliminary data analyses were employed to set initial values of different parameters to be used for model calibration. The model was calibrated for five rainfall events occurred in the rainy seasons of 2006, 2010 and 2013. The calibrated model was then validated for four other rainfall events of similar type in the same years. Consistency in simulated and observed flows was found with percent difference in volume ranging from -6.17 % to 5.47 % and percent difference in peak flows to be in the range of 6.96 % to 7.28 %. Values of Nash-Sutcliffe Efficiency were ranging from 0.299 to 0.909 with an average value of 0.586 for all flow events. The model was found well capable of capturing the hydrologic response of the catchment due to rainfall events and can be helpful in providing alerts of peak flows in real time based on real time/forecasted rainfall data.
机译:调查该地区对不利的气候变化和极端降雨事件的水文响应,对于管理土地和水资源以及减轻洪水等自然灾害至关重要。实地数据的可用性有限,尤其是在跨界河流的情况下,这进一步凸显了开发和评估决策支持系统的必要性,这些决策支持系统可以使用开源降雨数据实时预测流量。本文介绍了在巴基斯坦Chenab河流域进行的研究,以开发和评估基于TRC降雨数据的HEC-HMS预测流量的水文模型。在HEC-GeoHMS中使用SRTM DEM对流域的水文形态特性进行了分析。为了尽可能地依赖开源数据,利用了粮农组织开发的世界数字土壤图和欧洲航天局开发的全球土地覆盖图来计算流域的曲线编号网格数据。这些初步数据分析用于设置要用于模型校准的不同参数的初始值。针对2006年,2010年和2013年的雨季中发生的五次降雨事件对模型进行了校准。然后,针对同一年内其他四次相似类型的降雨事件对校准后的模型进行了验证。发现模拟流量和观察流量的一致性,体积百分比差异在-6.17%至5.47%之间,峰值流量百分比差异在6.96%至7.28%的范围内。 Nash-Sutcliffe效率的值在0.299至0.909的范围内,所有流量事件的平均值为0.586。该模型被发现能够很好​​地捕获由于降雨事件引起的流域水文响应,并且有助于基于实时/预测的降雨数据实时提供峰值流量警报。

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