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Improving Soil Salinity Simulation by Assimilating Electromagnetic Induction Data into HYDRUS Model Using Ensemble Kalman Filter

机译:使用集成卡尔曼滤波将电磁感应数据同化到HYDRUS模型中,从而改善土壤盐度模拟

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Assimilation of proximally and remotely sensed information on soil salinization-related attributes into a hydrological model is essential to improve the forecast performance of the profiled soil salinity dynamics for developing appropriate soil amendment practices. Although the family of ensemble Kalman filters (EnKF) is widely used in data assimilation, their applicability and reliability for soil salinization estimation requires further experimental validation. Here, we evaluated the assimilation performance of apparent electrical conductivity (ECa) data obtained from an electromagnetic induction meter (EM38) into the HYDRUS hydrological model. Re-sults showed that the EnKF method improved the simulation accuracy of soil salinity at 0 similar to 100 cm soil depths, as indicated by the de-creased root-mean-square error of 32.6 similar to 76.7 and increased Nash-Sutcliffe efficiency of 9.6 similar to 71.2. The HYDRUS-simulated values with EnKF were closer to the measured values than the values simulated by the HYDRUS model, and this benefitted from updating the running trajectory of the HYDRUS model. The EnKF values derived from measured ECa data were better than HYDRUS-simulated val-ues with EnKF. Soil salinity simulation was sensitive to ensemble size, error level, and ECa data depth. Considering the ensemble repre-sentativeness and computational efficiency, the optimal ensemble size was judged to be 50. The maximum acceptable observation error was 10, and observation data to a depth of 100 cm was suggested in EnKF assimilation to minimize the root-mean-square error. It was concluded that proximally sensed EM38 data coupled with the EnKF algorithm is promising for improving the simulation performance and providing a prospective method for simulating large-scale ecological and hydrological processes by coupling multi-source data and hydrological models.
机译:将土壤盐渍化相关属性的近端和遥感信息同化到水文模型中,对于提高剖面土壤盐分动态的预测性能以制定适当的土壤改良实践至关重要。尽管集成卡尔曼滤波器(EnKF)系列在数据同化中得到了广泛的应用,但其对土壤盐渍化估计的适用性和可靠性需要进一步的实验验证。在这里,我们评估了从电磁感应仪(EM38)获得的表观电导率(ECa)数据对HYDRUS水文模型的同化性能。研究结果表明,EnKF方法提高了0时与100 cm土层深度相似的土壤盐度模拟精度,去皱均方根误差为32.6,接近76.7%,Nash-Sutcliffe效率提高9.6,接近71.2%。与HYDRUS模型模拟值相比,EnKF的HYDRUS模拟值更接近测量值,这得益于HYDRUS模型运行轨迹的更新。从测量的ECa数据中得出的EnKF值优于使用EnKF的HYDRUS模拟值。土壤盐度模拟对集合大小、误差水平和ECa数据深度敏感。考虑到集成响应性和计算效率,判断最佳集成大小为50。最大可接受观测误差为10%,EnKF同化建议观测数据深度为100 cm,以最小化均方根误差。结果表明,近端感知EM38数据与EnKF算法相结合,有望提高模拟性能,为多源数据与水文模型耦合模拟大规模生态水文过程提供一种前瞻性方法。

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