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Improving soil moisture profile reconstruction from ground-penetrating radar data: a maximum likelihood ensemble filter approach

机译:从地面穿透雷达数据改善土壤湿度曲线重建:最大似然集合滤波器方法

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The vertical profile of shallow unsaturated zone soil moisture plays a key role in many hydro-meteorological and agricultural applications. We propose a closed-loop data assimilation procedure based on the maximum likelihood ensemble filter algorithm to update the vertical soil moisture profile from time-lapse ground-penetrating radar (GPR) data. A hydrodynamic model is used to propagate the system state in time and a radar electromagnetic model and petrophysical relationships to link the state variable with the observation data, which enables us to directly assimilate the GPR data. Instead of using the surface soil moisture only, the approach allows to use the information of the whole soil moisture profile for the assimilation. We validated our approach through a synthetic study. We constructed a synthetic soil column with a depth of 80 cm and analyzed the effects of the soil type on the data assimilation by considering 3 soil types, namely, loamy sand, silt and clay. The assimilation of GPR data was performed to solve the problem of unknown initial conditions. The numerical soil moisture profiles generated by the Hydrus-1D model were used by the GPR model to produce the "observed" GPR data. The results show that the soil moisture profile obtained by assimilating the GPR data is much better than that of an open-loop forecast. Compared to the loamy sand and silt, the updated soil moisture profile of the clay soil converges to the true state much more slowly. Decreasing the update interval from 60 down to 10 h only slightly improves the effectiveness of the GPR data assimilation for the loamy sand but significantly for the clay soil. The proposed approach appears to be promising to improve real-time prediction of the soil moisture profiles as well as to provide effective estimates of the unsaturated hydraulic properties at the field scale from time-lapse GPR measurements.
机译:浅不饱和区土壤水分的垂直型材在许多水流气象和农业应用中起着关键作用。我们提出了一种基于最大似然集合滤波器算法的闭环数据同化过程,以从延时接地雷达(GPR)数据中更新垂直土壤湿度曲线。流体动力学模型用于在时间和雷达电磁模型和岩石物理关系中传播系统状态,以将状态变量与观察数据链接,这使我们能够直接吸收GPR数据。该方法仅使用仅使用表面土壤水分,而不是使用整个土壤湿度曲线的信息以进行同化。我们通过合成研究验证了我们的方法。我们构建了一种深度为80厘米的合成土柱,并通过考虑3种土壤类型,即植渣,淤泥和粘土分析了土壤类型对数据同化的影响。进行GPR数据的同化以解决未知初始条件的问题。 GPR模型使用氢气-1D模型产生的数值土壤水分谱,以产生“观察到的”GPR数据。结果表明,通过同化GPR数据获得的土壤湿度曲线远优于开环预测。与壤土砂和淤泥相比,粘土土壤的更新的土壤水分曲线会聚到真正的状态速度得多。将更新间隔从60降至10小时,仅略微提高了GPR数据同化对壤土的有效性,而是显着用于粘土土壤。所提出的方法似乎有望改善土壤湿度型材的实时预测,以及在延时GPR测量中提供现场规模处的不饱和液压性能的有效估计。

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