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首页> 外文期刊>Journal of Hydrology >Assimilating multi-source uncertainties of a parsimonious conceptual hydrological model using hierarchical Bayesian modeling
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Assimilating multi-source uncertainties of a parsimonious conceptual hydrological model using hierarchical Bayesian modeling

机译:使用分层贝叶斯模型吸收简约概念水文模型的多源不确定性

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Hierarchical Bayesian (HB) modeling allows for multiple sources of uncertainty by factoring complex relationships into conditional distributions that can be used to draw inference and make predictions. We applied an HB model to estimate the parameters and state variables of a parsimonious hydrological model - GR4J - by coherently assimilating the uncertainties from the model, observations, and parameters at Coweeta Basin in western North Carolina. A state-space model was within the Bayesian hierarchical framework to estimate the daily soil moisture levels and their uncertainties.Results show that the posteriors of the parameters were updated from and relatively insensitive to priors, an indication that they were dominated by the data. The uncertainties of the simulated streamflow increased with streamflow increase. By assimilating soil moisture data, the model could estimate the maximum capacity of soil moisture accounting storage and predict storm events with higher precision compared to not assimilating soil moisture data. This study has shown that hierarchical Bayesian model is a useful tool in water resource planning and management by acknowledging stochasticity.
机译:多层贝叶斯(HB)建模通过将复杂的关系分解为条件分布来允许多种不确定性来源,这些条件关系可用于进行推断和进行预测。我们通过统一吸收北卡罗来纳州西部Coweeta盆地的模型,观测值和参数的不确定性,应用HB模型估算了简约水文模型GR4J的参数和状态变量。在贝叶斯层次结构框架内建立了一个状态空间模型来估计土壤的每日水分含量及其不确定性。随着流量的增加,模拟流量的不确定性也随之增加。通过同化土壤水分数据,与不吸收土壤水分数据相比,该模型可以估算土壤水分会计存储的最大容量并以更高的精度预测风暴事件。这项研究表明,通过认识随机性,分层贝叶斯模型是水资源规划和管理中的有用工具。

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