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The influence of methodological procedures on hydrological classification performance

机译:方法程序对水文分类性能的影响

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Hydrological classification has emerged as a suitable procedure to disentangle the inherent hydrological complexity of river networks. This practice has contributed to determining key biophysical relations in fluvial ecosystems and the effects of flow modification. Thus, a plethora of classification approaches, which agreed in general concepts and methods but differed largely in specific procedures, have emerged in the last decades. However, few studies have compared the implication of applying contrasting approaches and specifications over the same hydrological data. In this work, using cluster analysis and modelling approaches, we classify the entire river network covering the northern third of the Iberian Peninsula. Specifically, we developed classifications of increasing level of detail, ranging from 2 to 20 class levels, either based on raw and normalized daily flow series and using two contrasting approaches to determine class membership: classify-then-predict (ClasF) and predict-then-classify (PredF). Classifications were compared in terms of their statistical strength, the hydrological interpretation, the ability to reduce the bias associated with underrepresented parts of the hydrological space and their spatial correspondnece. The results highlighted that both the data processing and the classification strategy largely influenced the classification outcomes and properties, although differences among procedures were not always statistically significant. The normalization of flow data removed the influence of flow magnitude and generated more complex classifications in which a wider range of hydrologic characteristics were considered. The application of the PredF strategy produced, in most of the cases, classifications with higher discrimination ability and presented greater ability to deal with the presence of distinctive gauges in the data set than using the ClasF strategy.
机译:水文分类已经成为解决河网内在水文复杂性的合适方法。这种做法有助于确定河流生态系统中关键的生物物理关系以及流量变化的影响。因此,在过去的几十年中出现了许多分类方法,这些方法在一般概念和方法上都一致,但在特定程序上却大不相同。但是,很少有研究比较在相同的水文数据上采用对比方法和规范的含义。在这项工作中,我们使用聚类分析和建模方法对覆盖伊比利亚半岛北部三分之一的整个河网进行了分类。具体来说,我们根据原始和标准化的日常流量序列并使用两种对比方法确定班级成员身份,开发了详细程度从2到20个班级级别的分类,即分类-然后-预测(ClasF)和预测-然后-分类(PredF)。比较了分类的统计强度,水文解释,减少与水文空间代表性不足部分相关的偏差的能力及其空间对应性。结果强调,尽管程序之间的差异并不总是统计上显着的,但是数据处理和分类策略都在很大程度上影响分类结果和属性。流量数据的归一化消除了流量大小的影响,并产生了更复杂的分类,其中考虑了更广泛的水文特征。与使用ClasF策略相比,在大多数情况下,PredF策略的应用产生了具有更高判别能力的分类,并且具有更大的能力来处理数据集中存在独特的量表。

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