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Ensemble Kalman filter versus ensemble smoother for assessing hydraulic conductivity via tracer test data assimilation

机译:集成卡尔曼滤波器与整体平滑器,通过示踪剂测试数据同化来评估水力传导率

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Estimating the spatial variability of hydraulic conductivity K in natural aquifers is important for predicting the transport of dissolved compounds. Especially in the nonreactive case, the plume evolution is mainly controlled by the heterogeneity of K. At the local scale, the spatial distribution of K can be inferred by combining the Lagrangian formulation of the transport with a Kalman-filter-based technique and assimilating a sequence of time-lapse concentration C measurements, which, for example, can be evaluated on site through the application of a geophysical method. The objective of this work is to compare the ensemble Kalman filter (EnKF) and the ensemble smoother (ES) capabilities to retrieve the hydraulic conductivity spatial distribution in a groundwater flow and transport modeling framework. The application refers to a two-dimensional synthetic aquifer in which a tracer test is simulated. Moreover, since Kalman-filter-based methods are optimal only if each of the involved variables fit to a Gaussian probability density function (pdf) and since this condition may not be met by some of the flow and transport state variables, issues related to the non-Gaussianity of the variables are analyzed and different transformation of the pdfs are considered in order to evaluate their influence on the performance of the methods. The results show that the EnKF reproduces with good accuracy the hydraulic conductivity field, outperforming the ES regardless of the pdf of the concentrations.
机译:估算天然含水层中水力传导率K的空间变异性对于预测溶解的化合物的运输非常重要。尤其是在非反应性情况下,羽状流的演化主要受K的异质性控制。在局部尺度上,可以通过将运输的拉格朗日公式与基于Kalman滤波的技术相结合并吸收K来推断K的空间分布。定时浓度C测量的序列,例如,可以通过应用地球物理方法在现场进行评估。这项工作的目的是比较集合卡尔曼滤波器(EnKF)和集合平滑器(ES)的功能,以检索地下水流和运输模型框架中的水力传导率空间分布。该申请涉及其中模拟了示踪剂测试的二维合成含水层。此外,由于基于卡尔曼滤波器的方法只有在每个涉及的变量都符合高斯概率密度函数(pdf)时才是最佳方法,并且由于某些流动和传输状态变量可能无法满足该条件,因此与分析变量的非高斯性,并考虑pdf的不同转换,以评估它们对方法性能的影响。结果表明,无论浓度的pdf大小如何,EnKF都能很好地再现水力传导率场,优于ES。

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