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Optimizing spatial distribution of watershed-scale hydrologic models using Gaussian Mixture Models

机译:使用高斯混合模型优化流域水艺模型的空间分布

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摘要

Common methods for spatial distribution, such as hydrologic response units, are subjective, time-consuming, and fail to capture the full range of basin attributes. Recent advances in statistical-learning techniques allow for new approaches to this problem. We propose the use of Gaussian Mixture Models (GMMs) for spatial distribution of hydrologic models. GMMs objectively select the set of modeling locations that best represent the distribution of watershed features relevant to the hydrologic cycle. We demonstrate this method in two hydrologically distinct headwater catchments of the Sierra Nevada and show that it meets or exceeds the performance of traditionally distributed models for multiple metrics across the water balance at a fraction of the time cost. Finally, we use univariate GMMs to identify the most-important drivers of hydrologic processes in a basin. The GMM method allows for more robust, objective, and repeatable models, which are critical for advancing hydrologic research and operational decision making.
机译:用于空间分布的常见方法,例如水文响应单元是主观的,耗时的,并且无法捕获全系列的盆地属性。统计学技术的最新进展允许新方法对此问题。我们建议使用高斯混合模型(GMMS)进行水文模型的空间分布。 GMMS客观地选择最能代表与水文周期相关的流域功能分布的建模位置集。我们在Sierra Nevada的两个水文上独特的麦克风集水区中展示了这种方法,并表明它符合或超过传统分布式模型的性能,以便在时间成本的一小部分中跨越水平衡的多个指标。最后,我们使用单变量的GMM来确定盆中的水文过程中最重要的驱动因素。 GMM方法允许更强大,目标和可重复的模型,这对于推进水文研究和操作决策至关重要。

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