Uncertainty Quantification in Hydrologic Predictions: A Brief Review

Y. Fan
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引用次数: 4

Abstract

This study provides a brief review for uncertainty quantification in hydrological predictions. The major approaches for hydrologic predictions are firstly introduced, including the widely used data-driven and process-based modelling approaches. The major uncertainties resulting from inputs, model structures, parameters and outputs are then briefly illustrated. The major review is then conducted for various uncertainty quantification approaches. In detail, the approaches for quantifying uncertainties in model parameters, structures and states are mainly reviewed, such as the Markov chain Monte Carlo, sequential data assimilation and model average approaches. Potential issues to be addressed in future are then concluded, summarizing some unclear issues which may be further investigated in further studies.
水文预测中的不确定性量化:综述
本文综述了水文预测中不确定性量化的研究进展。首先介绍了水文预测的主要方法,包括广泛使用的数据驱动和基于过程的建模方法。然后简要说明了由输入、模型结构、参数和输出引起的主要不确定性。然后对各种不确定度量化方法进行了主要综述。详细介绍了量化模型参数、结构和状态不确定性的方法,如马尔可夫链蒙特卡罗法、序列数据同化法和模型平均法。然后总结了未来可能需要解决的问题,总结了一些不明确的问题,可以在进一步的研究中进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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