On the challenges of simulating streamflow in glacierized catchments of the Himalayas using satellite and reanalysis forcing data

Anju Vijayan Nair, Sungwook Wi, R. Kayastha, Colin J. Gleason, I. Dollan, Viviana Maggioni, E. Nikolopoulos
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Abstract

Hydrologic assessment of climate change impacts on complex terrains and data-sparse regions like High Mountain Asia is a major challenge. Combining hydrological models with satellite and reanalysis data for evaluating changes in hydrological variables is often the only available approach. However, uncertainties associated with forcing dataset, coupled with model parameter uncertainties, can have significant impacts on hydrologic simulations. This work aims to understand and quantify how the uncertainty in precipitation and its interaction with the model uncertainty affect streamflow estimation in glacierized catchments. Simulations for four precipitation datasets (IMERG, CHIRPS, ERA5 Land, and APHRODITE) and two glaciohydrological models (GDM and HYMOD_DS) are evaluated for the Marsyangdi and Budhigandaki river basins in Nepal. Temperature sensitivity of streamflow simulations is also investigated. Relative to APHRODITE, which compared well with ground stations, ERA5 Land overestimate the catchment average precipitation for both basins by more than 70%; IMERG and CHIRPS overestimates by ∼20%. Precipitation uncertainty propagation to streamflow exhibits strong dependencies to model structure and streamflow components (snowmelt, icemelt, rainfallrunoff), but overall uncertainty dampens through precipitation-to-streamflow transformation. Temperature exerts a significant additional source of uncertainty in hydrologic simulations of such environments. GDM was found to be more sensitive to temperature variations, with >50% increase in total flow for 20% increase in actual temperature, emphasizing that models that rely on lapse rates for the spatial distribution of temperature have much higher sensitivity. Results from this study provide critical insight into the challenges of utilizing satellite and reanalysis products for simulating streamflow in glacierized catchments.
利用卫星和再分析强迫数据模拟喜马拉雅山冰川化集水区流体的挑战
对亚洲高山等复杂地形和数据稀缺地区的气候变化影响进行水文评估是一项重大挑战。将水文模型与卫星和再分析数据相结合来评估水文变量的变化往往是唯一可用的方法。然而,与强迫数据集相关的不确定性,再加上模型参数的不确定性,会对水文模拟产生重大影响。这项工作旨在了解和量化降水的不确定性及其与模型不确定性的相互作用如何影响冰川化流域的溪流估算。针对尼泊尔马尔斯扬迪河流域和布迪甘达基河流域的四个降水数据集(IMERG、CHIRPS、ERA5 Land 和 APHRODITE)和两个冰川水文模型(GDM 和 HYMOD_DS)进行了模拟评估。此外,还研究了流体模拟对温度的敏感性。与 APHRODITE 相比,ERA5 Land 高估了两个流域平均降水量的 70% 以上;IMERG 和 CHIRPS 则高估了 20%。降水的不确定性传播到溪流表现出与模型结构和溪流成分(融雪、融冰、降雨径流)的强烈依赖性,但通过降水到溪流的转换,总体不确定性有所减弱。在此类环境的水文模拟中,温度是一个重要的额外不确定因素。研究发现,GDM 对温度变化更为敏感,实际温度上升 20%,总流量就会增加 50%以上。这项研究的结果为利用卫星和再分析产品模拟冰川化集水区的溪流所面临的挑战提供了重要的启示。
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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