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The use of hydrological information to improve flood management-integrated hydrological modelling of the Zambezi River basin

机译:利用水文信息改善洪水管理 - 赞比西河流域的综合水文模拟

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摘要

The recent high profile flooding events – that have occurred in many parts of the world – have drawn attention to the need for new and improved methods for water resources assessment, water management and the modelling of large-scale flooding events. In the case of the Zambezi Basin, a review of the 2000 and 2001 floods identified the need for tools to enable hydrologists to assess and predict daily stream flow and identify the areas that are likely to be affected by flooding. As a way to address the problem, a methodology was set up to derive catchment soil moisture statistics from Earth Observation (EO) data and to study the improvements brought about by an assimilation of this information into hydrological models for improving reservoir management in a data scarce environment. Rainfall data were obtained from the FEWSNet Web site and computed by the National Oceanic and Atmospheric Administration Climatic Prediction Center (NOAA/CPC). These datasets were processed and used to monitor rainfall variability and subsequently fed into a hydrological model to predict the daily flows for the Zambezi River Basin. The hydrological model used was the Geospatial Stream Flow Model (GeoSFM), developed by the United States Geological Survey (USGS). GeoSFM is a spatially semi-distributed physically-based hydrological model, parameterised using spatially distributed topographic data, soil characteristics and land cover data sets available globally from both Remote Sensing and in situ sources. The Satellite rainfall data were validated against data from twenty (20) rainfall gauges located on the Lower Zambezi. However, at several rain gauge stations (especially those with complex topography, which tended to experience high rainfall spatial variability), there was no direct correlation between the satellite estimates and the ground data as recorded in daily time steps. The model was calibrated for seven gauging stations. The calibrated model performed quite well at seven selected locations (R2=0.66 to 0.90, CE=0.51 to 0.88, RSR=0.35 to 0.69, PBIAS=−4.5 to 7.5). The observed data were obtained from the National Water Agencies of the riparian countries. After GeoSFM calibration, the model generated an integration of the flows into a reservoir and hydropower model to optimise the operation of Kariba and Cahora Bassa dams. The Kariba and Cahora Bassa dams were selected because this study considers these two dams as the major infrastructures for controlling and alleviating floods in the Zambezi River Basin. Other dams (such as the Kafue and Itezhi-Thezi) were recognised in terms of their importance but including them was beyond the scope of this study because of financial and time constraints. The licence of the reservoir model was limited to one year for the same reason. The reservoir model used was the MIKE BASIN, a professional engineering software package and quasi-steady-state mass balance modelling tool for integrated river basin and management, developed by the Denmark Hydraulic Institute (DHI) in 2003. The model was parameterised by the geometry of the reservoir basin (level, area, volume relationships) and by the discharge-level (Q-h) relationship of the dam spillways. The integrated modelling system simulated the daily flow variation for all Zambezi River sub-basins between 1998 and 2008 and validated between 2009 and 2011. The resulting streamflows have been expressed in terms of hydrograph comparisons between simulated and observed flow values at the four gauging stations located downstream of Cahora Bassa dam. The integrated model performed well, between observed and forecast streamflows, at four selected gauging stations (R2=0.53 to 0.90, CE=0.50 to 0.80, RSR=0.49 to 0.69, PBIAS=−2.10 to 4.8). From the results of integrated modelling, it was observed that both Kariba and Cahora Bassa are currently being operated based on the maximum rule curve and both remain focused on maximising hydropower production and ensuring dam safety rather than other potential influences by the Zambezi River (such as flood control downstream – where the communities are located – and environmental issues). In addition, the flood mapping analysis demonstrated that the Cahora Bassa dam plays an important part in flood mitigation downstream of the dams. In the absence of optimisation of flow releases from both the Kariba and Cahora Bassa dams, in additional to the contribution of any other tributaries located downstream of the dams, the impact of flooding can be severe. As such, this study has developed new approaches for flood monitoring downstream of the Zambezi Basin, through the application of an integrated modelling system. The modelling system consists of: predicting daily streamflow (using the calibrated GeoSFM), then feeding the predicted streamflow into MIKE BASIN (for checking the operating rules) and to optimise the releases. Therefore, before releases are made, the flood maps can be used as a decision-making tool to both assess the impact of each level of release downstream and to identify the communities likely to be affected by the flood – this ensures that the necessary warnings can be issued before flooding occurs. Finally an integrated flood management tool was proposed – to host the results produced by the integrated system – which would then be accessible for assessment by the different users. These results were expressed in terms of water level (m). Four discharge-level (Q-h) relationships were developed for converting the simulated flow into water level at four selected sites downstream of Cahora Bassa dam – namely: Cahora Bassa dam site, Tete (E-320), Caia (E-291) and Marromeu (E-285). However, the uncertainties in these predictions suggested that improved monitoring systems may be achieved if data access at appropriate scale and quality was improved.
机译:最近在世界许多地方发生的备受瞩目的洪灾事件已引起人们对对水资源评估,水管理和大规模洪灾事件建模的新型改进方法的需求的关注。以赞比西河流域为例,对2000年和2001年的洪灾进行了回顾,发现需要使水文学家能够评估和预测日流量并确定可能受到洪灾影响的区域的工具。为了解决该问题,建立了一种从地球观测(EO)数据中得出流域土壤湿度统计数据并研究将这些信息同化为水文模型所带来的改进的方法,以改善缺乏数据的水库管理环境。降雨数据是从FEWSNet网站获得的,并由美国国家海洋与大气管理局气候预测中心(NOAA / CPC)计算得出。这些数据集经过处理后用于监测降​​雨的变化性,随后被输入到水文模型中以预测赞比西河流域的日流量。使用的水文模型是由美国地质调查局(USGS)开发的地理空间流模型(GeoSFM)。 GeoSFM是一种空间半分布式的基于物理的水文模型,它使用空间分布的地形数据,土壤特征和土地覆盖数据集进行参数化,这些数据可从遥感和现场来源获得。卫星降雨量数据已根据赞比西河下游二十(20)个雨量计的数据进行了验证。但是,在几个雨量计站(尤其是那些地形复杂的站,这些站往往经历较大的降雨空间变化),卫星估算值与每天时间步长记录的地面数据之间没有直接相关性。该模型已针对七个计量站进行了校准。校准的模型在七个选定位置(R2 = 0.66至0.90,CE = 0.51至0.88,RSR = 0.35至0.69,PBIAS = -4.5至7.5)表现良好。观测数据是从河岸国家的国家水务机构获得的。经过GeoSFM校准后,该模型将水流模型集成到水库和水电模型中,以优化Kariba和Cahora Bassa大坝的运行。选择Kariba和Cahora Bassa水坝是因为该研究将这两个水坝视为控制和缓解赞比西河流域洪水的主要基础设施。其他大坝(例如Kafue和Itezhi-Thezi)的重要性也得到认可,但由于财务和时间限制,将它们包括在本研究范围之外。出于同样的原因,水库模型的许可证被限制为一年。所使用的储层模型是MIKE BASIN,这是丹麦水利学院(DHI)于2003年开发的用于集成流域和管理的专业工程软件包和准稳态质量平衡建模工具。该模型由几何参数化水库流域的水位(水位,面积,体积关系)以及大坝溢洪道的水位(Qh)关系。集成的建模系统模拟了1998年至2008年期间所有赞比西河流域的日流量变化,并于2009年至2011年进行了验证。所产生的水流已通过水位图比较来表示,该水文图比较了位于四个计量站的模拟流量和观测流量卡奥拉巴萨水坝下游。集成模型在四个选定的测量站(R2 = 0.53至0.90,CE = 0.50至0.80,RSR = 0.49至0.69,PBIAS = -2.10至4.8)之间,在观测到的流量与预测的流量之间表现良好。从综合建模的结果来看,观察到Kariba和Cahora Bassa目前都基于最大规则曲线进行操作,并且都致力于最大化水力发电和确保大坝安全,而不是赞比西河的其他潜在影响(例如下游的防洪–社区所在地–环境问题。此外,洪水地图分析表明,卡奥拉·巴萨(Cahora Bassa)大坝在减轻大坝下游的洪水中起着重要作用。在没有优化Kariba和Cahora Bassa大坝的泄洪量的情况下,除了大坝下游的其他支流的影响外,洪水的影响可能很严重。因此,本研究通过集成模型系统的开发,为赞比西河流域下游的洪水监测开发了新方法。建模系统包括:预测日流量(使用校准的GeoSFM),然后将预测的流量输入MIKE BASIN(用于检查操作规则)并优化释放。因此,在发布之前,洪水地图可以用作决策工具,既可以评估下游各个释放水平的影响,也可以确定可能受到洪水影响的社区–这确保了在洪水发生之前可以发出必要的警告。最后,提出了一个集成的洪水管理工具-托管集成系统产生的结果-然后可供不同用户进行评估。这些结果以水位(m)表示。开发了四个流量级(Qh)关系,用于将模拟流量转换为卡奥拉·巴萨大坝下游四个选定地点的水位,即:卡奥拉·巴萨大坝所在地,太特(E-320),凯亚(E-291)和Marromeu (E-285)。但是,这些预测的不确定性表明,如果以适当的规模和质量访问数据,可以改善监视系统。

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