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首页> 外文期刊>Journal of hydrometeorology >A Streamflow and Water Level Forecasting Model for the Ganges, Brahmaputra, and Meghna Rivers with Requisite Simplicity
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A Streamflow and Water Level Forecasting Model for the Ganges, Brahmaputra, and Meghna Rivers with Requisite Simplicity

机译:恒河,Brahmaputra和Meghna Rivers的流出和水平预测模型,简单简单

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A forecasting lead time of 5-10 days is desired to increase the flood response and preparedness for large river basins. Large uncertainty in observed and forecasted rainfall appears to be a key bottleneck in providing reliable flood forecasting. Significant efforts continue to be devoted to developing mechanistic hydrological models and statistical and satellite-driven methods to increase the forecasting lead time without exploring the functional utility of these complicated methods. This paper examines the utility of a data-based modeling framework with requisite simplicity that identifies key variables and processes and develops ways to track their evolution and performance. Findings suggest that models with requisite simplicity-relying on flow persistence, aggregated upstream rainfall, and travel time-can provide reliable flood forecasts comparable to relatively more complicated methods for up to 10 days lead time for the Ganges, Brahmaputra, and upper Meghna (GBM) gauging locations inside Bangladesh. Forecasting accuracy improves further by including weather-model-generated forecasted rainfall into the forecasting scheme. The use of water level in the model provides equally good forecasting accuracy for these rivers. The findings of the study also suggest that large-scale rainfall patterns captured by the satellites or weather models and their "predictive ability'' of future rainfall are useful in a data-driven model to obtain skillful flood forecasts up to 10 days for the GBM basins. Ease of operationalization and reliable forecasting accuracy of the proposed framework is of particular importance for large rivers, where access to upstream gauge-measured rainfall and flow data are limited, and detailed modeling approaches are operationally prohibitive and functionally ineffective.
机译:期望预测延长时间为5-10天,以增加大型河流盆地的洪水应答和准备。观察和预测降雨中的大不确定性似乎是提供可靠的洪水预测的关键瓶颈。显着努力开发机械水文模型和统计和卫星驱动的方法,以增加预测交易时间,而无需探索这些复杂方法的功能效用。本文介绍了基于数据的建模框架的实用性,其简单简单地标识了关键变量和流程,并开发了跟踪其演化和性能的方法。调查结果表明,具有必要简单的模型 - 依赖流动持久性,汇总上游降雨,以及旅行时间 - 可以提供可靠的洪水预测,与恒河,Brahmaputra和上部Meghna(GBM )孟加拉国里面的衡量位置。预测准确性进一步通过将天气模型产生的预测降量进入预测方案进一步提高。在模型中使用水位提供了这些河流的同样良好的预测精度。该研究的结果还表明,卫星或天气模型捕获的大规模降雨模式及其未来降雨的“预测能力”在数据驱动的模型中是有用的,以获得高达10天的熟练洪水预测为GBM盆地。促进框架的易操作化和可靠的预测准确性对大型河流进行了特别重要的,即大型河流是有限的,进入上游仪表测量的降雨和流量数据有限,并进行详细的建模方法在运行上且功能无效。

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