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Use of multiple data assimilation techniques in groundwater contaminant transport modeling

机译:在地下水污染物迁移模型中使用多种数据同化技术

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摘要

Groundwater contamination assessment can be useful in taking proper actions during environmental emergency. A three-dimensional deterministic model was taken into consideration to simulate the advective-diffusive transport of non-conservative contaminant in groundwater. Multiple stochastic data assimilation techniques, such as, ensemble Kalman filter (EnKF), local ensemble transform Kalman filter (LETKF), and the global form of the LETKF, denoted as GETKF were applied to the model. The results show that data assimilation improved contaminant concentration prediction. The EnKF method reduced the root-mean-square-error (RMSE) of the contaminant prediction from 12.5 mg/L to 1.31 mg/L, whereas the LETKF reduced that to 0.46 mg/L and GETKF reduced that to 0.38 mg/L. Approximately 89.48%, 96.30% and 96.82% improvement were made by EnKF, LETKF, and GETKF, respectively. The sensitivity analysis suggest that these data assimilation techniques are very sensitive to the observation noise, process noise, and ensemble size. Water Environ. Res., 89, 1952 (2017).
机译:地下水污染评估对于在环境紧急情况下采取适当措施很有帮助。考虑了三维确定性模型来模拟非保守污染物在地下水中的对流扩散传播。将诸如集合卡尔曼滤波器(EnKF),局部集合变换卡尔曼滤波器(LETKF)和LETKF的整体形式(称为GETKF)等多种随机数据同化技术应用于模型。结果表明,数据同化改善了污染物浓度的预测。 EnKF方法将污染物预测的均方根误差(RMSE)从12.5 mg / L降低到1.31 mg / L,而LETKF将其降低到0.46 mg / L,而GETKF将其降低到0.38 mg / L。 EnKF,LETKF和GETKF分别改善了约89.48%,96.30%和96.82%。敏感性分析表明,这些数据同化技术对观察噪声,过程噪声和集合大小非常敏感。水环境。 Res.89,1952(2017)。

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