Zhang Huiyan, Sun Hao, Qiu Xuan, Yang Rongni, Wang Shuoyu, Agarwal Ramesh K
IEEE Trans Cybern. 2024 Oct;54(10):6145-6157. doi: 10.1109/TCYB.2024.3432764. Epub 2024 Oct 9.
This article conducts the issue of event-triggered reduced-order filtering for continuous-time semi-Markov jump systems with imperfect measurements as well as randomly occurring uncertainties (ROUs). Specifically, the sojourn-time-dependent transition probability matrix (TPM) is presumed to be polytopic and a quantizer is introduced to quantize output signals aiming to reflect the reality. Both ROUs and sensor failures are generated by individual random variables belonging to be mutually independent Bernoulli-distributed white sequences. First, sufficient conditions for the existence of the event-triggered reduced-order filter are obtained by utilizing the dissipativity-based technique to ensure the asymptotical stability with a strictly dissipative performance of the filtering error system. The time-varying TPM is then fractionalized, which enhances the results as stated. Furthermore, the required reduced-order filter parameters are obtained by introducing slack symmetric matrix as well as cone complementarity linearization algorithm. The effectiveness of the suggested event-triggered reduced-order filter design method is shown through simulation results.
本文研究了具有不完美测量以及随机出现不确定性(ROUs)的连续时间半马尔可夫跳跃系统的事件触发降阶滤波问题。具体而言,假定逗留时间相关的转移概率矩阵(TPM)为多面体,并引入一个量化器对输出信号进行量化以反映实际情况。ROUs和传感器故障均由属于相互独立伯努利分布白序列的个体随机变量产生。首先,利用基于耗散性的技术获得事件触发降阶滤波器存在的充分条件,以确保滤波误差系统具有严格耗散性能的渐近稳定性。然后对时变TPM进行分数化处理,从而增强了所述结果。此外,通过引入松弛对称矩阵以及锥互补线性化算法来获得所需的降阶滤波器参数。仿真结果表明了所提出的事件触发降阶滤波器设计方法的有效性。