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Recursive filtering for two-dimensional systems with missing measurements subject to uncertain probabilities

机译:具有不确定概率的缺少度量的二维系统的递归滤波

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This paper addresses the recursive filtering problem for a class of two-dimensional systems suffering from missing measurements. The phenomenon of missing measurements occurs randomly and is depicted by a series of uncorrelated stochastic variables obeying individual Bernoulli distributions with uncertain probabilities. The main purpose is to design a recursive filter such that, in the presence of uncertain rates of the missing measurements, an upper bound is guaranteed and then minimized for the actual filtering error variance. The dynamics of the error variances are presented firstly. Then, by utilizing the stochastic analysis and inductive method, we establish an upper bound for the filtering error variance and subsequently achieve the minimal one at each time step by choosing a suitable filter gain. The desired upper bound can be obtained recursively by solving two sets of Riccati-like equations. Finally, a simulation example shows the effectiveness of the designed filter scheme.
机译:本文针对一类缺少度量的二维系统的递归滤波问题。缺少测量的现象是随机发生的,并由一系列不相关的随机变量表示,这些随机变量服从具有不确定概率的单个伯努利分布。主要目的是设计一种递归滤波器,以便在丢失测量值不确定的情况下,可以保证上限,然后针对实际的滤波误差方差将其最小化。首先介绍了误差方差的动态变化。然后,通过使用随机分析和归纳法,我们为滤波误差方差建立了一个上限,然后通过选择合适的滤波器增益在每个时间步上达到最小。可以通过求解两组类似Riccati的方程来递归获得所需的上限。最后,一个仿真示例说明了所设计滤波器方案的有效性。

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