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首页> 外文期刊>Journal of Hydrology >Hydrologic impacts of climate change: Comparisons between hydrological parameter uncertainty and climate model uncertainty
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Hydrologic impacts of climate change: Comparisons between hydrological parameter uncertainty and climate model uncertainty

机译:气候变化的水文影响:水文参数不确定性与气候模型的比较不确定性

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Assessing impacts of climate change on hydrology involves global scale climate projections by General Circulation Models (GCMs), downscaling of global scale projections to regional scale by statistical methods or regional climate models and then use of regional outputs in hydrological simulations. Hydrological simulations considers varying inputs starting with soil characteristics, land cover, vegetation types, control structures to social parameters such as human interventions, irrigation and water use. This makes the model highly parametrized and at the same time highly uncertain due to the non-availability of majority of input parameters. Here, we compare the contributions of uncertainty from hydrological parameterization in the hydrological projections of climate change to that generated from the use of multiple climate models. The Ganga River Basin in India was selected as the study region. For regional climate change projections, we use dynamic downscaling outputs from Coordinated Regional Climate Downscaling Experiment (CORDEX) and statistical downscaling outputs from a transfer function forced with 3 GCMs, Institut Pierre Simon Laplace (IPSL), European Consortium Earth System Model (EC-EARTH) and MPI (Max Plank Institut) ESM (Earth System Model). Monte-Carlo Simulations (MCS) are performed with 1000 generated sets of sensitive model parameters for each of the GCM-regional model combination. We find that the observed time series of river discharge is reproduced well but with bias in low-flow conditions. This is probably associated with human intervention and poor representation of baseflow in VIC due to the neglected groundwater storage which feed the surface water during low flow condition. The future projections show that the major uncertainty lies across climate models for all the four seasons (MAM, JJAS, ON and DJF) and for all the hydrological variables, soil moisture, evapotranspiration (ET), water yield and river discharge. The uncertainty resulting from the MCS is quite small as compared to the climate model uncertainty. We are unable to find any added value in hydrological simulations by rigorous hydrological calibration and parameterization in absence of many required data, when the forcing meteorological data has huge uncertainty. Our findings highlight the need of convergence of climate models before the studies on hydrological impacts assessment and subsequent development of adaptation strategies.
机译:评估气候变化对水文的影响涉及全球循环模型(GCMS)的全球范围气候预测,通过统计方法或区域气候模型向区域规模缩小全球规模预测,然后在水文模拟中使用区域产出。水文模拟考虑了不同的输入,从土壤特征,陆地覆盖,植被类型,控制结构,社会参数,诸如人类干预,灌溉和用水等。这使得模型高度参数化,同时非常不确定,由于大多数输入参数的非可用性。在这里,我们比较不确定性在水文参数化中的水文参数化对气候变化的水文投影中的贡献与多种气候模型产生的。印度的Ganga River盆地被选为研究区。对于区域气候变化预测,我们使用协调区域气候缩小实验(CORDEX)的动态缩小输出,并从传递函数中突出的统计尺寸输出,迫使3个GCMS,Institut Pierre Simon Laplace(IPSL),欧洲联盟地球系统模型(EC-MATHER )和MPI(Max Plank Institut)ESM(地球系统模型)。 Monte-Carlo模拟(MCS)为每个GCM区域模型组合使用1000生成的敏感模型参数集。我们发现观察到的时间系列河流放电再现,但在低流量条件下具有偏差。这可能与由于忽视地下水储存而在低流动条件下喂养地表水的被忽略的地下水储存,这可能与人为干预和碱基流量的差。未来的预测表明,所有四季(MAM,JJAS,AND和DJF)的气候模型和所有水文变量,土壤水分,蒸散(ET),水产产量和河流放电都在于气候模型。与气候模型不确定性相比,MCS产生的不确定性非常小。当迫使气象数据具有巨大的不确定性时,我们无法通过严格的水文校准和参数化在水文模拟中找到任何增加的值。我们的研究结果强调了在水文影响评估和随后改编策略的发展之前突出了气候模型收敛的需求。

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