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Unbiased minimum-variance estimation for systems with measurement-delay and unknown inputs

机译:具有测量延迟和未知输入的系统的无偏最小方差估计

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摘要

This paper considers the problem of simultaneously estimating the state and the unknown input for linear discrete-time systems with measurement delay. Firstly, the reorganized innovation analysis approach is applied to deal with measurement delay and the measurement delay model is converted into a measurement delay free model. A recursive filter where the estimation of the state and the input are interconnected is proposed. Then we utilize the innovation to obtain the unknown input estimator by least-squares estimation and the optimal state estimator is constructed by transforming into a standard Kalman filtering in terms of two Riccati equations with the same dimension as the state model. Finally we give a numerical example to show that our estimation approach is effective.
机译:本文考虑了同时估计具有测量延迟的线性离散时间系统的状态和未知输入的问题。首先,采用重组创新分析方法处理测量延迟,将测量延迟模型转换为无测量延迟模型。提出了一种状态估计和输入互连的递归滤波器。然后,我们利用该创新方法通过最小二乘估计获得未知的输入估计量,并通过将两个Riccati方程转换为与状态模型相同维的两个Riccati方程,将最优状态估计量构造为标准卡尔曼滤波。最后,我们给出一个数值例子来说明我们的估计方法是有效的。

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