PREMHYCE: An operational tool for low-flow forecasting

Q3 Earth and Planetary Sciences
P. Nicolle, F. Besson, O. Delaigue, P. Etchevers, D. François, Matthieu Le Lay, C. Perrin, F. Rousset, D. Thiéry, François Tilmant, C. Magand, Timothée Leurent, Élise Jacob
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引用次数: 4

Abstract

Abstract. In many countries, rivers are the primary supply of water. A number of uses are concerned (drinking water, irrigation, hydropower, etc.) and they can be strongly affected by water shortages. Therefore, there is a need for the early anticipation of low-flow periods to improve water management. This is strengthened by the perspective of having more severe summer low flows in the context of climate change. Several French institutions (Inrae, BRGM, Météo-France, EDF and Lorraine University) have been collaborating over the last years to develop an operational tool for low-flow forecasting, called PREMHYCE. It was tested in real time on 70 catchments in continental France in 2017, and on 48 additional catchments in 2018. PREMHYCE includes five hydrological models: one uncalibrated physically-based model and four storage-type models of various complexity, which are calibrated on gauged catchments. The models assimilate flow observations or implement post-processing techniques. Low-flow forecasts can be issued up to 90 d ahead, based on ensemble streamflow prediction (ESP) using historical climatic data as ensembles of future input scenarios. These climatic data (precipitation, potential evapotranspiration and temperature) are provided by Météo-France with the daily gridded SAFRAN reanalysis over the 1958–2017 period, which includes a wide range of conditions. The tool provides numerical and graphical outputs, including the forecasted ranges of low flows, and the probability to be under low-flow warning thresholds provided by the users. Outputs from the different hydrological models can be combined through a simple multi-model approach to improve the robustness of forecasts. Results are illustrated for the Ill River at Didenheim (northeastern France) where the 2017 low-flow period was particularly severe and for which PREMHYCE provided useful forecasts.
PREMHYCE:低流量预报的操作工具
摘要在许多国家,河流是主要的水源。涉及一些用途(饮用水、灌溉、水力发电等),它们可能受到缺水的严重影响。因此,有必要提前预测低流量期,以改善水资源管理。在气候变化的背景下,更严重的夏季低流量的前景加强了这一点。几家法国机构(Inrae、BRGM、msamtsamo - france、EDF和洛林大学)在过去几年中一直在合作开发一种名为PREMHYCE的低流量预测操作工具。2017年在法国大陆的70个集水区进行了实时测试,2018年又在48个集水区进行了实时测试。PREMHYCE包括五个水文模型:一个未经校准的基于物理的模型和四个不同复杂性的存储类型模型,这些模型在测量的集水区上进行校准。这些模型模拟了流量观测或实现了后处理技术。低流量预测可以提前90天发布,基于集成流流量预测(ESP),使用历史气候数据作为集成未来输入情景。这些气候数据(降水、潜在蒸散量和温度)由msamt -法兰西公司通过1958-2017年期间的每日网格化SAFRAN再分析提供,其中包括广泛的条件。该工具提供数值和图形输出,包括低流量的预测范围,以及用户提供的低流量警告阈值下的概率。不同水文模型的输出可以通过简单的多模型方法进行组合,以提高预测的稳健性。结果以Didenheim(法国东北部)的Ill河为例,其中2017年的低流量期特别严重,premhyce为此提供了有用的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Proceedings of the International Association of Hydrological Sciences
Proceedings of the International Association of Hydrological Sciences Earth and Planetary Sciences-Earth and Planetary Sciences (all)
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