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Recursive filtering with stochastic uncertainties and incomplete measurements

机译:具有随机不确定性和不完全测量的递归滤波

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In this paper, the recursive filter is designed for a class of discrete time-varying nonlinear systems with stochastic uncertainties and incomplete measurements. By employing a stochastic Kronecker delta function, the phenomena of the incomplete measurements are characterized which contain the signal quantization and missing measurements in a unified framework. We design a new recursive filter such that, for both stochastic uncertainties and incomplete measurements, we obtain an upper bound of the filtering error covariance and then minimize such an upper bound by properly designing the filter gains. It is shown that the desired filter gain can be obtained in terms of the solutions to two Riccati-like difference equations, and therefore the proposed filtering algorithm is recursive suitable for online computations. Finally, an illustrative example is provided to demonstrate the feasibility and usefulness of the developed filtering scheme.
机译:在本文中,递归滤波器是为一类具有不确定不确定性和不完全测量的离散时变非线性系统而设计的。通过使用随机的Kronecker德尔塔函数,可以对不完整测量的现象进行表征,该现象在统一的框架中包含信号量化和丢失的测量。我们设计了一个新的递归滤波器,这样,对于随机不确定性和不完全测量,我们都会获得滤波误差协方差的上限,然后通过适当设计滤波器增益来最小化此类上限。结果表明,根据两个类似Riccati的差分方程的解,可以获得期望的滤波器增益,因此,所提出的滤波算法是递归的,适合于在线计算。最后,提供了一个说明性示例,以证明所开发的过滤方案的可行性和实用性。

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