随机非线性和缺失测量时变系统的事件触发弹性滤波

Ming Gao, Jun Hu, Hongxu Zhang
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引用次数: 0

摘要

研究了一类具有随机非线性和测量缺失的非线性系统的事件触发弹性滤波问题。随机发生的非线性现象和缺失的测量都是用伯努利分布随机变量来描述的,而伯努利分布随机变量的发生概率是不确定的。在数据传输过程中引入事件触发通信机制,节省网络带宽。此外,滤波器增益扰动采用范数有界不确定性来表征。本文的目的是开发一种针对随机非线性和缺失测量的鲁棒事件触发弹性滤波算法。注意,滤波误差协方差的解析表达式不能直接计算。因此,我们推导出它的上界作为一种替代方法,并随后通过适当设计每个时间步长的滤波器增益来最小化这样的上界。最后,通过实例验证了所提滤波算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event-triggered Resilient Filtering for Time-varying Systems with Randomly Occurring Nonlinearity and Missing Measurements
This paper studies the event-triggered resilient filtering problem for a class of nonlinear systems with randomly occurring nonlinearity and missing measurements. Both the phenomena of the randomly occurring nonlinearity and the missing measurements are described by Bernoulli distributed random variables, where the occurrence probabilities could be uncertain. The event-triggered communication mechanism is introduced to save the network bandwidth during the data transmissions through the network. Additionally, the filter gain perturbations are characterized by employing the norm bounded uncertainties. The aim of the paper is to develop a robust event-triggered resilient filtering algorithm against the randomly occurring nonlinearity and missing measurements. Note that the analytical expressions of the filtering error covariance cannot be computed directly. Consequently, we derive its upper bound as an alternative way and subsequently minimize such an upper bound by properly designing the filter gain at each time step. Finally, an illustrative example is presented to show the effectiveness of the provided filtering algorithm.
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