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Hydrologic consistency as a basis for assessing complexity of monthly water balance models for the continental United States

机译:水文一致性作为评估美国大陆每月水平衡模型复杂性的基础

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摘要

Methods to select parsimonious and hydrologically consistent model structures are useful for evaluating dominance of hydrologic processes and representativeness of data. While information criteria (appropriately constrained to obey underlying statistical assumptions) can provide a basis for evaluating appropriate model complexity, it is not sufficient to rely upon the principle of maximum likelihood (ML) alone. We suggest that one must also call upon a "principle of hydrologic consistency," meaning that selected ML structures and parameter estimates must be constrained (as well as possible) to reproduce desired hydrological characteristics of the processes under investigation. This argument is demonstrated in the context of evaluating the suitability of candidate model structures for lumped water balance modeling across the continental United States, using data from 307 snow-free catchments. The models are constrained to satisfy several tests of hydrologic consistency, a flow space transformation is used to ensure better consistency with underlying statistical assumptions, and information criteria are used to evaluate model complexity relative to the data. The results clearly demonstrate that the principle of consistency provides a sensible basis for guiding selection of model structures and indicate strong spatial persistence of certain model structures across the continental United States. Further work to untangle reasons for model structure predominance can help to relate conceptual model structures to physical characteristics of the catchments, facilitating the task of prediction in ungaged basins.
机译:选择简约和水文上一致的模型结构的方法可用于评估水文过程的优势和数据的代表性。尽管信息标准(适当地遵守了基本的统计假设)可以为评估适当的模型复杂性提供基础,但仅依靠最大似然(ML)的原理还是不够的。我们建议,人们还必须呼吁“水文一致性原则”,这意味着必须(尽可能)限制所选的ML结构和参数估计值,以再现所研究过程的所需水文特征。在使用307个无积雪集水区的数据评估整个美国大陆集总水量平衡模型的候选模型结构的适用性的背景下,证明了这一论点。这些模型必须满足水文一致性的多项测试,流空间转换可确保与基础统计假设更好的一致性,信息标准可用于评估相对于数据的模型复杂性。结果清楚地表明,一致性原理为指导模型结构的选择提供了明智的基础,并表明了整个美国大陆上某些模型结构的强大空间持久性。进一步开展工作以弄清模型结构优势的原因,可以帮助将概念模型结构与集水区的物理特征联系起来,从而促进未成盆盆地的预测任务。

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  • 来源
    《Water resources research》 |2011年第12期|p.W12540.1-W12540.18|共18页
  • 作者单位

    Department of Hydrology and Water Resources, University of Arizona, Tucson, AZ 85721, USA,INTERA Inc., 1812 Centre Creek Dr., Suite 300, Austin, TX 78754, USA;

    Department of Hydrology and Water Resources, University of Arizona, Tucson, AZ 85721, USA;

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