IEEE Trans Cybern. 2014 Jul;44(7):1100-10. doi: 10.1109/TCYB.2013.2279393. Epub 2013 Sep 5.
This paper investigates the robust filtering problem for a class of nonlinear systems described by affine fuzzy parts with norm-bounded uncertainties. The system outputs are chosen as the premise variables of fuzzy models, and their measured values are chosen as the premise variables and inputs of fuzzy filters. The measurement errors between the outputs of the plant and the inputs of the filter are considered, and as a result, the plant and the estimator cannot always evolve in the same region at the same time, especially in the neighborhoods of region boundaries. By using a piecewise Lyapunov function combined with S-procedure and adding slack matrix variables, a fuzzy-basis-dependent mixed l1/H∞ filter design method is obtained in the formulation of linear matrix inequalities, which allows for reducing the worst case peak output due to the measurement errors, and satisfying an H∞ -norm constraint. In contrast to existing work, the proposed fuzzy-basis-dependent filter can guarantee a better H∞ performance and less computational burden. Finally, a numerical example illustrates the effectiveness of the proposed method.
本文研究了一类具有范数有界不确定性的仿射模糊部分描述的非线性系统的鲁棒滤波问题。系统输出被选为模糊模型的前提变量,其测量值被选为模糊滤波器的前提变量和输入。考虑到了 plant 输出与滤波器输入之间的测量误差,因此,plant 和估计器不能总是在同一时间在同一区域中演变,特别是在区域边界的附近。通过使用分段 Lyapunov 函数结合 S-过程并添加松弛矩阵变量,在线性矩阵不等式的形式中获得了基于模糊基的混合 l1/H∞滤波器设计方法,这允许减少由于测量误差引起的最坏情况峰值输出,并满足 H∞范数约束。与现有工作相比,所提出的基于模糊基的滤波器可以保证更好的 H∞性能和更少的计算负担。最后,通过一个数值例子说明了所提出方法的有效性。