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首页> 外文期刊>Journal of Hydrology >Improving numerical forecast accuracy with ensemble Kalman filter and chaos theory: Case study on Ciliwung river model
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Improving numerical forecast accuracy with ensemble Kalman filter and chaos theory: Case study on Ciliwung river model

机译:集成卡尔曼滤波和混沌理论提高数值预报精度:以慈利旺河模型为例

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摘要

The classic Kalman filter implementation uses the measurements up to the time of forecast to update the initial conditions of the numerical model, with the updating effect limited to a prediction horizon when the improved initial conditions are washed out. To further enhance the prediction capability, this study proposes a new hybrid data assimilation scheme, which adopts chaos theory to predict the measurements into the forecast phase, and then assimilates the predicted measurements into the numerical model using the ensemble Kalman filter. The hybrid data assimilation scheme is applied in a simulated real-time forecast of the Ciliwung river model. It is revealed that the hybrid scheme can further improve the modelling accuracy up to a prediction horizon of 4 days as compared to the update based solely on the ensemble Kalman filter.
机译:经典的卡尔曼滤波器实现使用直到预测时的测量值来更新数值模型的初始条件,而当改善的初始条件被淘汰时,更新效果仅限于预测范围。为了进一步增强预测能力,本研究提出了一种新的混合数据同化方案,该方案采用混沌理论将测量值预测到预测阶段,然后使用集成卡尔曼滤波器将预测的测量值同化为数值模型。混合数据同化方案应用于Ciliwung河模型的模拟实时预测中。结果表明,与仅基于集成卡尔曼滤波器的更新相比,该混合方案可以进一步提高建模精度,达到4天的预测范围。

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