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首页> 外文期刊>Advances in Water Resources >Investigation of flow and transport processes at the MADE site using ensemble Kalman filter
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Investigation of flow and transport processes at the MADE site using ensemble Kalman filter

机译:使用集成卡尔曼滤波器研究MADE站点的流动和运输过程

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摘要

In this work the ensemble Kalman filter (EnKF) is applied to investigate the flow and transport processes at the macro-dispersion experiment (MADE) site in Columbus, MS. The EnKF is a sequential data assimilation approach that adjusts the unknown model parameter values based on the observed data with time. The classic advection-dispersion (AD) and the dual-domain mass transfer (DDMT) models are employed to analyze the tritium plume during the second MADE tracer experiment. The hydraulic conductivity (K), longitudinal dispersivity in the AD model, and mass transfer rate coefficient and mobile porosity ratio in the DDMT model, are estimated in this investigation. Because of its sequential feature, the EnKF allows for the temporal scaling of transport parameters during the tritium concentration analysis. Inverse simulation results indicate that for the AD model to reproduce the extensive spatial spreading of the tritium observed in the field, the K in the downgradient area needs to be increased significantly. The estimated K in the AD model becomes an order of magnitude higher than the in situ flowmeter measurements over a large portion of media. On the other hand, the DDMT model gives an estimation of K that is much more comparable with the flowmeter values. In addition, the simulated concentrations by the DDMT model show a better agreement with the observed values. The root mean square (RMS) between the observed and simulated tritium plumes is 0.77 for the AD model and 0.45 for the DDMT model at 328 days. Unlike the AD model, which gives inconsistent K estimates at different times, the DDMT model is able to invert the K values that consistently reproduce the observed tritium concentrations through all times.
机译:在这项工作中,采用集合卡尔曼滤波器(EnKF)来研究位于密苏里州哥伦布市的宏观分散实验(MADE)现场的流动和传输过程。 EnKF是一种顺序数据同化方法,可根据观察到的数据随时间调整未知模型参数值。在第二次MADE示踪剂实验期间,采用经典的对流扩散(AD)和双域传质(DDMT)模型来分析the羽。在这项研究中,估算了AD模型中的水力传导率(K),纵向分散性以及DDMT模型中的传质速率系数和流动孔隙率。由于其顺序特征,EnKF允许在concentration浓度分析过程中对运输参数进行时间缩放。逆模拟结果表明,要使AD模型重现野外观察到的extensive的广泛空间扩展,则需要显着增加降梯度区域中的K。 AD模型中估计的K值比大部分介质上的现场流量计测量值高一个数量级。另一方面,DDMT模型给出的K估算值与流量计值具有更大的可比性。此外,通过DDMT模型模拟的浓度与观测值显示出更好的一致性。在328天时,AD模型的观察到的和模拟的between羽之间的均方根(RMS)为0.77,而DDMT模型为0.45。与AD模型不同,AD模型在不同时间给出不一致的K估计值,而DDMT模型则可以将K值取反,从而始终一致地再现观察到的tri浓度。

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