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首页> 外文期刊>Journal of Computational Physics >Test models for improving filtering with model errors through stochastic parameter estimation
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Test models for improving filtering with model errors through stochastic parameter estimation

机译:通过随机参数估计提高模型误差过滤的测试模型

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摘要

The filtering skill for turbulent signals from nature is often limited by model errors created by utilizing an imperfect model for filtering. Updating the parameters in the imperfect model through stochastic parameter estimation is one way to increase filtering skill and model performance. Here a suite of stringent test models for filtering with stochastic parameter estimation is developed based on the Stochastic Parameterization Extended Kalman Filter (SPEKF). These new SPEKF-algorithms systematically correct both multiplicative and additive biases and involve exact formulas for propagating the mean and covariance including the parameters in the test model. A comprehensive study is presented of robust parameter regimes for increasing filtering skill through stochastic parameter estimation for turbulent signals as the observation time and observation noise are varied and even when the forcing is incorrectly specified. The results here provide useful guidelines for filtering turbulent signals in more complex systems with significant model errors.
机译:来自自然界的湍流信号的滤波技术通常受到模型误差的限制,该模型误差是通过利用不完美的模型进行滤波而产生的。通过随机参数估计更新不完美模型中的参数是提高滤波技巧和模型性能的一种方法。在此,基于随机参数化扩展卡尔曼滤波器(SPEKF),开发了一套用于随机参数估计滤波的严格测试模型。这些新的SPEKF算法系统地校正了乘法偏差和加法偏差,并涉及用于传播均值和协方差(包括测试模型中的参数)的精确公式。进行了全面的研究,研究了鲁棒的参数体系,通过改变湍流信号的随机参数估计来提高滤波技巧,因为观察时间和观察噪声会发生变化,甚至在错误指定强制时也是如此。此处的结果提供了有用的指导,用于在模型误差较大的更复杂系统中过滤湍流信号。

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