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Linearly Constrained Wiener Filter Estimates For Linear Discrete State-Space Models

机译:线性离散状态空间模型的线性约束维纳滤波器估计

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For linear discrete state-space (LDSS) models, under certain conditions, the Wiener filter (WF) has a convenient recursive predictor/corrector format, aka the Kalman filter (KF). As a contribution to Wiener filtering and Kalman filtering in the context of LDSS models, the paper derives the family of linear constraints for which the linearly constrained WF (LCWF) can be computed recursively in the form of a KF, leading to a linearly constrained KF (LCKF). Among other things, as exemplified by an array processing example, the LCKF may provide alternative solutions to H∞ filter and unbiased finite impulse response filter to robustify the KF, which performance are sensible to misspecified noise or uncertainties in the system matrices.
机译:对于线性离散状态空间(LDSS)模型,在某些条件下,维纳滤波器(WF)具有便捷的递归预测器/校正器格式,也称为卡尔曼滤波器(KF)。为了在LDSS模型的上下文中对Wiener滤波和Kalman滤波做出贡献,本文推导出了一系列线性约束,可以以KF的形式递归计算线性约束WF(LCWF),从而得出线性约束KF (LCKF)。除其他事项外,如阵列处理示例所示,LCKF可以为H∞滤波器和无偏有限脉冲响应滤波器提供替代解决方案,以使KF稳健,这些性能对系统矩阵中错误指定的噪声或不确定性很敏感。

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