Robust Estimators for Missing Observations in Linear Discrete-Time Stochastic Systems with Uncertainties

S. Nakamori
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Abstract

As a first approach to estimating the signal and the state, Theorem 1 proposes recursive least-squares (RLS) Wiener fixed-point smoothing and filtering algorithms that are robust to missing measurements in linear discrete-time stochastic systems with uncertainties. The degraded quantity is given by multiplying the Bernoulli random variable by the degraded signal caused by the uncertainties in the system and observation matrices. The degraded quantity is observed with additional white observation noise. The probability that the degraded signal is present in the observation equation is assumed to be known. The design feature of the proposed robust estimators is the fitting of the degraded signal to a finite-order autoregressive (AR) model. Theorem 1 is transformed into Corollary 1, which expresses the covariance information in a semi-degenerate kernel form. The autocovariance function of the degraded state and the cross-covariance function between the nominal state and the degraded state is expressed in semi-degenerate kernel forms. Theorem 2 shows the robust RLS Wiener fixed-point and filtering algorithms for estimating the signal and state from degraded observations in the second method. The robust estimation algorithm of Theorem 2 has the advantage that, unlike Theorem 1 and the usual studies, it does not use information on the existence probability of the degraded signal. This is a unique feature of Theorem 2.
具有不确定性的线性离散时间随机系统中缺失观测值的稳健估计器
作为估计信号和状态的第一种方法,定理 1 提出了递归最小二乘(RLS)维纳定点平滑和滤波算法,该算法对具有不确定性的线性离散时间随机系统中的缺失测量具有鲁棒性。劣化量由伯努利随机变量乘以由系统和观测矩阵中的不确定性引起的劣化信号给出。降级后的量是通过额外的白观测噪声观测到的。观测方程中出现劣化信号的概率假定为已知。所提出的鲁棒估计器的设计特点是将退化信号拟合到有限阶自回归(AR)模型中。定理 1 转化为推论 1,以半退化核形式表达协方差信息。退化状态的自协方差函数以及名义状态和退化状态之间的交叉协方差函数都以半退化核形式表示。定理 2 显示了第二种方法中从退化观测值估计信号和状态的鲁棒 RLS 维纳定点和滤波算法。定理 2 的稳健估计算法的优点在于,与定理 1 和通常的研究不同,它不使用退化信号的存在概率信息。这是定理 2 的独特之处。
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