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Robust filtering for linear discrete-time systems with parametric uncertainties: a Krein space estimation approach

机译:具有参数不确定性的线性离散时间系统的鲁棒滤波:Kerin空间估计方法

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A new unified robust filtering algorithm is proposed for discrete-time linear systems with uncertainties described by sum quadratic constraints. The proposed method extends the existing Krein space estimation theory to robust filtering problem. It is shown that the robust filtering problem can be cast into the minimization problem of an indefinite quadratic form. By interpreting the uncertainties as another noise sources, the Krein space approach converts the minimization problem into the generalization of the Krein space Kalman filtering problem with an additional condition. This approach can be applied to H/sub 2/ (Kalman) filtering problem and to H/sub /spl infin// filtering problem as well. Moreover, the resulting robust filters have the similar recursive structures to various forms of the conventional Kalman filter, which makes the filters easy to design. Numerical examples verify the performances and the robustness of the proposed filters.
机译:针对具有不确定性的离散时间线性系统,提出了一种新的统一鲁棒滤波算法。该方法将现有的Kerin空间估计理论扩展到鲁棒滤波问题。结果表明,鲁棒滤波问题可以转化为不定二次型的最小化问题。通过将不确定性解释为另一种噪声源,Kerin空间方法将最小化问题转换为Kerin空间卡尔曼滤波问题的推广,并附带了附加条件。此方法可以应用于H / sub 2 /(Kalman)过滤问题,也可以应用于H / sub 2 / spl infin //过滤问题。而且,所得的鲁棒滤波器具有与传统形式的卡尔曼滤波器的各种形式相似的递归结构,这使得滤波器易于设计。数值算例验证了所提出滤波器的性能和鲁棒性。

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