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Identification of hydrological model parameter variation using ensemble Kalman filter

机译:集成卡尔曼滤波在水文模型参数变化识别中的应用

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Hydrological model parameters play an important role in the ability of model prediction. In a stationary context, parameters of hydrological models are treated as constants; however, model parameters may vary with time under climate change and anthropogenic activities. The technique of ensemble Kalman filter (EnKF) is proposed to identify the temporal variation of parameters for a two-parameter monthly water balance model (TWBM) by assimilating the runoff observations. Through a synthetic experiment, the proposed method is evaluated with time-invariant (i.e., constant) parameters and different types of parameter variations, including trend, abrupt change and periodicity. Various levels of observation uncertainty are designed to examine the performance of the EnKF. The results show that the EnKF can successfully capture the temporal variations of the model parameters. The application to the Wudinghe basin shows that the water storage capacity (SC) of the TWBM model has an apparent increasing trend during the period from 1958 to 2000. The identified temporal variation of SC is explained by land use and land cover changes due to soil and water conservation measures. In contrast, the application to the Tongtianhe basin shows that the estimated SC has no significant variation during the simulation period of 1982-2013, corresponding to the relatively stationary catchment properties. The evapotranspiration parameter (C) has temporal variations while no obvious change patterns exist. The proposed method provides an effective tool for quantifying the temporal variations of the model parameters, thereby improving the accuracy and reliability of model simulations and forecasts.
机译:水文模型参数在模型预测能力中起着重要作用。在平稳的情况下,水文模型的参数被视为常数。但是,在气候变化和人为活动的影响下,模型参数可能会随时间变化。提出了集成卡尔曼滤波(EnKF)技术,通过吸收径流观测值来确定两参数月水平衡模型(TWBM)参数的时间变化。通过综合实验,用时不变(即恒定)参数和不同类型的参数变化(包括趋势,突变和周期性)对所提出的方法进行评估。设计了各种级别的观测不确定性来检查EnKF的性能。结果表明,EnKF可以成功捕获模型参数的时间变化。在武定河流域的应用表明,TWBM模型的储水量在1958年至2000年期间有明显的增加趋势。SC的确定的时空变化可以用土地利用和土壤引起的土地覆盖变化来解释。和节水措施。相比之下,在通天河流域的应用表明,在1982-2013年的模拟期间,估计的SC值没有显着变化,这与流域的相对静止特性相对应。蒸散参数(C)具有时间变化,而没有明显的变化模式。所提出的方法为量化模型参数的时间变化提供了有效的工具,从而提高了模型仿真和预测的准确性和可靠性。

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