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首页> 外文期刊>Hydrology and Earth System Sciences >Joint inference of groundwater-recharge and hydraulic-conductivity fields from head data using the ensemble Kalman filter
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Joint inference of groundwater-recharge and hydraulic-conductivity fields from head data using the ensemble Kalman filter

机译:使用集合卡尔曼滤波器从水头数据联合推断地下水补给和水力传导率场

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Regional groundwater flow strongly depends on groundwater recharge and hydraulic conductivity. Both are spatially variable fields, and their estimation is an ongoing topic in groundwater research and practice. In this study, we use the ensemble Kalman filter as an inversion method to jointly estimate spatially variable recharge and conductivity fields from head observations. The success of the approach strongly depends on the assumed prior knowledge. If the structural assumptions underlying the initial ensemble of the parameter fields are correct, both estimated fields resemble the true ones. However, erroneous prior knowledge may not be corrected by the head data. In the worst case, the estimated recharge field resembles the true conductivity field, resulting in a model that meets the observations but has very poor predictive power. The study exemplifies the importance of prior knowledge in the joint estimation of parameters from ambiguous measurements.
机译:区域地下水流量在很大程度上取决于地下水的补给和水力传导率。两者都是空间可变的领域,它们的估计是地下水研究和实践中的一个持续话题。在这项研究中,我们使用集合卡尔曼滤波器作为一种反演方法,以便根据头部观测值共同估算空间可变的补给和电导率场。该方法的成功很大程度上取决于假定的先验知识。如果基于参数字段初始集合的结构假设是正确的,则两个估计字段都类似于真实字段。但是,头部数据可能无法纠正错误的先验知识。在最坏的情况下,估计的充电场类似于真实的电导率场,从而导致模型可以满足观测条件,但预测能力很差。该研究例证了先验知识在从模糊测量中联合估计参数的重要性。

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