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Reduced-Order Quadratic Kalman-Like Filtering of Non-Gaussian Systems

机译:非高斯系统的降阶二次卡尔曼样滤波

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摘要

The state estimation for linear discrete-time systems with non-Gaussian state and output noise is a challenging problem. In this paper, we derive the suboptimal quadratic estimate of the state by means of a recursive algorithm. The solution is obtained by applying the Kalman filter to a suitably augmented system, which is fully observable. The augmented system is constructed as the aggregate of the actual system, and the observable part of a system having as state the second Kronecker power of the original state, namely the quadratic system. To extract the observable part of the quadratic system, the rank of the corresponding observability matrix is needed, which is a difficult task. We provide a closed form expression for such a rank, as a function of the spectrum of the dynamical matrix of the original system. This approach guarantees the internal stability of the estimation filter, and moreover, permits a reduction in the computational burden.
机译:具有非高斯状态和输出噪声的线性离散时间系统的状态估计是一个具有挑战性的问题。在本文中,我们通过递归算法得出状态的次优二次估计。通过将卡尔曼滤波器应用到完全可观察到的适当增强的系统中,可以获得解决方案。增强系统被构造为实际系统的集合,并且该系统的可观察部分具有原始状态的第二克朗内克幂为状态,即二次系统。为了提取二次系统的可观察部分,需要相应的可观察性矩阵的秩,这是一项艰巨的任务。我们根据原始系统动力学矩阵的频谱,为这种排名提供了一个封闭形式的表达式。该方法保证了估计滤波器的内部稳定性,并且还允许减少计算负担。

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