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首页> 外文期刊>Advances in Water Resources >Quantification of predictive uncertainty in hydrological modelling by harnessing the wisdom of the crowd: Methodology development and investigation using toy models
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Quantification of predictive uncertainty in hydrological modelling by harnessing the wisdom of the crowd: Methodology development and investigation using toy models

机译:利用人群的智慧量化水文建模中的预测不确定性:使用玩具模型进行方法开发和调查

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摘要

We introduce an ensemble learning post-processing methodology for probabilistic hydrological modelling. This methodology generates numerous point predictions by applying a single hydrological model, yet with different parameter values drawn from the respective simulated posterior distribution. We call these predictions "sister predictions". Each sister prediction extending in the period of interest is converted into a probabilistic prediction using information about the hydrological model's errors. This information is obtained from a preceding period for which observations are available, and is exploited using a flexible quantile regression model. All probabilistic predictions are finally combined via simple quantile averaging to produce the output probabilistic prediction. The idea is inspired by the ensemble learning methods originating from the machine learning literature. The proposed methodology offers larger robustness in performance than basic post-processing methodologies using a single hydrological point prediction. It is also empirically proven to "harness the wisdom of the crowd" in terms of average interval score, i.e., the obtained quantile predictions score no worse -usually better- than the average score of the combined individual predictions. This proof is provided within toy examples, which can be used for gaining insight on how the methodology works and under which conditions it can optimally convert point hydrological predictions to probabilistic ones. A large-scale hydrological application is made in a companion paper.
机译:我们介绍了用于概率水文建模的整体学习后处理方法。该方法通过应用单个水文模型产生了大量的点预测,但是具有从相应的模拟后验分布中得出的不同参数值。我们称这些预测为“姐妹预测”。使用有关水文模型误差的信息,将在关注期间内扩展的每个姐妹预测转换为概率预测。该信息是从可以进行观察的前一时期获得的,并使用灵活的分位数回归模型加以利用。最后,通过简单的分位数平均将所有概率预测组合在一起,以产生输出概率预测。这个想法的灵感来自于机器学习文献中的整体学习方法。与使用单个水文点预测的基本后处理方法相比,所提出的方法在性能上具有更高的鲁棒性。经验还证明,它可以平均间隔得分来“利用人群的智慧”,即所获得的分位数预测得分不会比合并的单个预测的平均得分差(通常更好)。玩具示例中提供了此证明,可用于深入了解该方法的工作原理以及在何种条件下可以将点水文预测最佳地转换为概率预测。在配套文件中提出了大规模的水文应用。

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