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State estimation for linear systems with state equality constraints

机译:具有状态等式约束的线性系统的状态估计

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This paper deals with the state estimation problem for linear systems with linear state equality constraints. Using noisy measurements which are available from the observable system, we construct the optimal estimate which also satisfies linear equality constraints. For this purpose, after reviewing modeling problems in linear stochastic systems with state equality constraints, we formulate a projected system representation. By using the constrained Kalman filter for the projected system and comparing its filter Riccati equation with those of the unconstrained and the projected Kalman filters, we clearly show, without using optimality, that the constrained estimator outperforms the other filters for estimating the constrained system state. Finally, a numerical example is presented, which demonstrates performance differences among those filters.
机译:本文讨论了具有线性状态相等约束的线性系统的状态估计问题。使用可观测系统中可用的噪声测量值,我们构建了同时满足线性等式约束的最优估计。为此,在回顾了具有状态等式约束的线性随机系统中的建模问题之后,我们制定了一个投影系统表示形式。通过将约束卡尔曼滤波器用于投影系统,并将其滤波器Riccati方程与无约束和投影卡尔曼滤波器的滤波器Riccati方程进行比较,我们清楚地表明,在不使用最优性的情况下,约束估计器在估计约束系统状态方面优于其他滤波器。最后,给出了一个数值示例,演示了这些滤波器之间的性能差异。

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