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An Information Theory Approach to Identifying a Representative Subset of Hydro‐Climatic Simulations for Impact Modeling Studies

机译:信息理论方法识别冲击模型研究的水文模拟的代表性子集

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摘要

Uncertainties in hydro‐climatic projections are (in part) related to various components of the production chain. An ensemble of numerous projections is usually considered to characterize the overall uncertainty; however in practice a small set of scenario combinations are constructed to provide users with a subset that is manageable for decision‐making. Since projections are unavoidably uncertain, and multiple projections are typically informationally redundant to a considerable extent, it would be helpful to identify an informationally representative subset in a large model ensemble. Here a framework rooted in the information theoretic Maximum Information Minimum Redundancy concept is proposed for identifying a representative subset from an available ensemble of hydro‐climatic projections. We analyze an ensemble of 16 precipitation and temperature projections for Sweden, and use these as inputs to the HBV hydrological model to project river discharge until the mid of this century. Representative subsets are judged in terms of different statistical properties of three essential climate variables (precipitation, temperature and discharge), whilst we further assess the sensitivity of the optimized subset for different seasons and future periods. Our results indicate that a quarter to a third of the available set of projections can represent more than 80% of the total information of hydro‐climatic changes. We find that the representative subsets are sensitive to the regional hydro‐climatic characteristics and the choice of variables, seasons and periods of interest. Therefore we recommend that any selection process should not be solely driven by climatic variables but, rather, should also consider variables of the impact model.
机译:水文气候预测的不确定性(部分)与生产链的各个组成部分有关。通常认为众多预测的集合来表征总体不确定性。但是在实践中,只构造了一小套方案组合,以为用户提供可管理的子集以进行决策。由于投影不可避免地不确定,并且多个投影通常在很大程度上在信息上是多余的,因此在大型模型集合中标识信息代表性的子集将很有帮助。在此提出了一个基于信息理论最大信息最小冗余概念的框架,用于从可用的水文气候预测集合中识别代表性子集。我们分析了瑞典的16个降水和温度预报的集合,并将其用作HBV水文模型的输入,以预测到本世纪中叶之前的河流流量。根据三个基本气候变量(降水,温度和流量)的不同统计特性来判断代表性子集,同时我们进一步评估优化子集在不同季节和未来时期的敏感性。我们的结果表明,可用预测集的四分之一到三分之一可以代表水文气候变化总信息的80%以上。我们发现代表性的子集对区域水文气候特征以及变量,季节和时期的选择敏感。因此,我们建议,任何选择过程均不应仅由气候变量驱动,而应考虑影响模型的变量。

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