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SELECTION OF RIVER FLOW INDICES FOR THE ASSESSMENT OF HYDROECOLOGICAL CHANGE

机译:水文生态变化评估中河流流量指标的选择

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A wide range of 'ecologically relevant' hydrological indices (variables) have been identified as potential drivers of riverine communities. Recently, concerns have been expressed regarding index redundancy (i.e. similar patterns of variance) across the host of hydrological descriptors on offer to researchers and water resource managers. Some guiding principles are required to aid selection of the most statistically defensible and meaningful river flow indices for hydroecological analysis. In this short communication, we investigate the utility of a principal components analysis (PCA)-based method that identifies 25 hydrological variables to characterize the major modes of statistical variation in 201 hydrological indices for 83 rivers across England and Wales. The emergent variables, and all 201 hydrological variables, are used to develop regression models [for the whole data set and three river flow regime shape (i.e. annual hydrograph form) classes] for an 11-year macroinvertebrate community dataset (i.e. LIFE scores). The same 'best' models are produced using the PCA-based method and all 201 hydrological variables for two of the three river flow regime groups. However, weaker models are yielded by the PCA-based method for the remaining (flashy) river flow regime class and the whole data set (all 83 rivers). Thus, it is important to exercise caution when employing data reduction/index redundancy approaches, as they may reject variables of ecological significance due to the assumption that the statistically dominant sources of hydrological variability are the principal drivers of, perhaps more subtle (sensitive), hydroecological associations.
机译:广泛的“与生态相关”的水文指数(变量)被确定为河流社区的潜在驱动力。近来,人们对提供给研究人员和水资源管理者的整个水文描述符中的索引冗余(即类似的方差模式)表示关注。需要一些指导原则来帮助选择最有统计依据和最有意义的河流流量指数进行水生态学分析。在这次简短的交流中,我们研究了基于主成分分析(PCA)的方法的实用性,该方法可识别25个水文变量,以表征英格兰和威尔士83条河流的201个水文指数的主要统计变化模式。出现的变量和所有201个水文变量都用于为11年的大型无脊椎动物群落数据集(即LIFE得分)开发回归模型(针对整个数据集和三个河流水流形态(即年度水文形式)类别)。使用基于PCA的方法和三个河流水流状态组中的两个的所有201个水文变量,得出相同的“最佳”模型。但是,基于PCA的方法对于剩余(浮华)河流水流状况分类和整个数据集(全部83条河流)得出的模型较弱。因此,重要的是在采用数据缩减/指数冗余方法时要格外小心,因为它们可能会拒绝具有生态意义的变量,这是由于以下假设:水文变异性的统计上占主导地位的来源可能是更细微(敏感),水生态协会。

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