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首页> 外文期刊>International Journal of Adaptive Control and Signal Processing >Optimal state filter from sequential unknown input reconstruction: Application to distributed state filtering
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Optimal state filter from sequential unknown input reconstruction: Application to distributed state filtering

机译:来自顺序未知输入重构的最佳状态滤波器:在分布式状态滤波中的应用

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This paper generalizes Kalman filtering with an intermittent unknown input problem to be left invertible discrete-time stochastic linear systems with zero, one, or more structural delays. Contrary to the state filtering-based system inversion where the unknown input vector is reconstructed with a time delay that is equal to the structural delay of the plant, we propose an optimal state filtering by reconstructing some linear combinations of the unknown input vector with a time delay less than the structural delay. Designed under a sequential unknown input decoupling constraint, which has never been previously studied in the literature, all presented filters are very computationally efficient. The proposed state filtering is used to solve the autonomous distributed state filtering problem in large-scale networked control systems when the unknown input vector represents interactions between subsystems and when each subsystem receives intermittent information about the interaction from unreliable networks. The stochastic stability conditions of the extended intermittent unknown input Kalman filter are established when the arrival binary sequence of packet dropouts follows a random Bernoulli process.
机译:本文将具有间歇性未知输入问题的卡尔曼滤波广义化为具有零个,一个或多个结构延迟的可逆离散时间随机线性系统。与基于状态过滤的系统反演相反,在该系统反演中,未知输入向量的重建时间等于植物的结构延迟,我们建议通过重构未知输入向量和时间的一些线性组合来优化状态滤波延迟小于结构延迟。在连续的未知输入去耦约束条件下进行设计,这在文献中以前从未研究过,所有提出的滤波器在计算上都非常有效。当未知输入向量表示子系统之间的交互作用并且每个子系统从不可靠的网络接收有关交互作用的间歇信息时,所提出的状态过滤用于解决大规模网络控制系统中的自治分布式状态过滤问题。当数据包丢失的到达二进制序列遵循随机伯努利过程时,便建立了扩展的间歇性未知输入卡尔曼滤波器的随机稳定性条件。

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