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首页> 外文期刊>Journal of Hydrology >Propagation of parameter uncertainty in SWAT: A probabilistic forecasting method based on polynomial chaos expansion and machine learning
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Propagation of parameter uncertainty in SWAT: A probabilistic forecasting method based on polynomial chaos expansion and machine learning

机译:参数不确定性在SWAT中的传播:基于多项式混沌扩展和机器学习的概率预测方法

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Soil and Water Assessment Tool (SWAT) is one of the most widely used semi-distributed hydrological models. Assessment of the uncertainties in SWAT outputs is a popular but challenging topic due to the significant number of parameters. The purpose of this study is to investigate the use of Polynomial Chaos Expansion (PCE) in assessing uncertainty propagation in SWAT under the impact of significant parameter sensitivity. Furthermore, for the first time, a machine learning technique (i.e., artificial neural network, ANN) is integrated with PCE to expand its capability in generating probabilistic forecasts of daily flow. The traditional PCE and the proposed PCE-ANN methods are applied to a case study in the Guadalupe watershed in Texas, USA to assess the uncertainty propagation in SWAT for flow prediction during the historical and forecasting periods. The results show that PCE provides similar results as the traditional Monte-Carlo (MC) method, with a coefficient of determination (R-2) value of 0.99 for the mean flow, during the historical period; while the proposed PCE-ANN method reproduces MC output with a R-2 value of 0.84 for mean flow during the forecasting period. It is also indicated that PCE and PCE-ANN are as reliable as but much more efficient than MC. PCE takes about 1% of the computational time required by MC; PCE-ANN only takes a few minutes to produce probabilistic forecasting, while MC requires running the model for dozens or hundreds, even thousands, of times. Notably, the development of the PCE-ANN framework is the first attempt to explore PCE's probabilistic forecasting capability using machine learning. PCE-ANN is a promising uncertainty assessment and probabilistic forecasting technique, as it is more efficient in terms of computation time, and it does not cause loss of essential uncertainty information.
机译:土壤和水评估工具(SWAT)是使用最广泛的半分布式水文模型之一。在SWAT产出的不确定性的评估是一个受欢迎,但具有挑战性的话题,由于参数的显著数量。这项研究的目的是在显著参数灵敏度的影响评估SWAT不确定性传播研究使用多项式混沌扩张(PCE)的。此外,对于第一次,机器学习技术(即,人工神经网络,人工神经网络)被集成与PCE扩大在生成日流量的概率预报其能力。传统的PCE和所提出的PCE-ANN的方法被应用到在瓜为例在美国德克萨斯州分水岭期间的历史和预测周期来评估流预测在SWAT的不确定性传播。结果表明,PCE提供类似的结果作为传统蒙特卡洛(MC)方法,以确定的0.99的平均流量,在历史时期(R-2)的值的系数;而所提出的PCE-ANN方法再现与0.84用于在预测期间平均流量一个R-2值MC输出。它也表明,PCE和PCE-ANN是可靠的,但比MC高效得多。 PCE大约需要的由MC所需要的计算时间的1%; PCE-ANN只需要几分钟的时间,以产生概率预报,而MC需要运行数十或数百,甚至数千次的模型。值得注意的是,PCE-ANN框架的发展是使用机器学习探索PCE的概率预报能力的第一次尝试。 PCE-ANN是一种很有前途的不确定性评估和概率预报技术,因为它是在计算时间方面更加有效,而且不会引起必要的不确定性信息的丢失。

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