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Nonlinear filters for linear models (a robust approach)

机译:用于线性模型的非线性滤波器(一种可靠的方法)

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摘要

We consider the altering problem for linear models where the driving noises may be quite general, nonwhite and non-Gaussian, and where the observation noise may only be known to belong to a finite family of possible disturbances. Using diffusion approximation methods, we show that a certain nonlinear filter minimizes the asymptotic filter variance. This nonlinear filter is obtained by choosing at each moment, on the basis of the observations, one of a finite number of Kalman-type filters driven by a suitable nonlinear transformation of the "innovations". As a byproduct we obtain also the asymptotic identification of the a priori unknown observation noise disturbance. By yielding an asymptotically efficient filter in face of an unknown observation noise, our approach may also be viewed as a robust approach to filtering for linear models.
机译:我们考虑了线性模型的变化问题,在该模型中,驱动噪声可能非常普遍,非白噪声和非高斯噪声,并且观测噪声仅可能属于有限的可能扰动族。使用扩散近似方法,我们表明某个非线性滤波器可以使渐近滤波器方差最小。通过在观察的基础上在每个时刻选择由“创新”的适当非线性变换驱动的有限数量的卡尔曼型滤波器之一来获得该非线性滤波器。作为副产品,我们还获得了先验未知观测噪声干扰的渐近识别。通过在面对未知观察噪声的情况下产生渐近有效滤波器,我们的方法也可以看作是一种用于线性模型滤波的鲁棒方法。

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