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Multiscale fuzzy Kalman filtering

机译:多尺度模糊卡尔曼滤波

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摘要

Measured data are usually contaminated with errors which sometimes mask their important features. Therefore, data filtering is needed for effective utilization of such measurements. For nonlinear systems which can be described by a Takagi-Sugeno (TS) fuzzy model, several fuzzy Kalman (FK) filtering algorithms have been developed to extend Kalman filtering to such systems. Also, multiscale representation of data is a powerful data analysis tool, which has been successfully used to solve several data filtering problems. In this paper, a multiscale fuzzy Kalman (MSFK) filtering algorithm, in which multiscale representation is utilized to improve the performance of fuzzy Kalman filtering, is developed. The idea is to apply FK filtering at multiple scales to combine the advantages of the FK filter with those of the low pass filters used in multiscale data representation. Starting with a fuzzy model in the time domain, a similar fuzzy model is derived at each scale using the scaled signal approximation of the data obtained by stationary wavelet transform (SWT). These multiscale fuzzy models are then used in FK filtering, and the FK filter with the least cross validation mean square error among all scales is selected as the optimum filter. Also, theoretically, it has been shown that applying FK filtering at a coarser scale than the time domain is equivalent to using a time-averaged FK filter. Finally, the performance of the developed MSFK filtering algorithm is illustrated through a simulated example.
机译:测得的数据通常被错误所污染,这些错误有时会掩盖其重要特征。因此,需要数据过滤来有效利用这种测量。对于可以由Takagi-Sugeno(TS)模糊模型描述的非线性系统,已经开发了几种模糊Kalman(FK)滤波算法,以将Kalman滤波扩展到此类系统。同样,数据的多尺度表示是一种功能强大的数据分析工具,已成功用于解决若干数据过滤问题。本文提出了一种多尺度模糊卡尔曼滤波算法,该算法利用多尺度表示来提高模糊卡尔曼滤波的性能。想法是在多个尺度上应用FK滤波,以将FK滤波器的优势与多尺度数据表示中使用的低通滤波器的优势相结合。从时域中的模糊模型开始,使用通过平稳小波变换(SWT)获得的数据的缩放信号近似值,在每个尺度上导出相似的模糊模型。然后将这些多尺度模糊模型用于FK滤波,并选择所有尺度中交叉验证均方误差最小的FK滤波器作为最佳滤波器。同样,从理论上讲,已经显示出以比时域更粗的比例应用FK滤波等效于使用时间平均FK滤波器。最后,通过仿真示例说明了开发的MSFK过滤算法的性能。

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