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Application of a Fuzzy Model to the Task of Filtering in Nonlinear Dynamic Systems

Authors: Demenkov N.P., Tran D.M. Published: 19.03.2020
Published in issue: #1(130)/2020  
DOI: 10.18698/0236-3933-2020-1-85-100

 
Category: Informatics, Computer Engineering and Control | Chapter: System Analysis, Control, and Information Processing  
Keywords: unscented Kalman Filter, Strong Tracking Unscented Kalman filter, suboptimal scaling factor, softening coefficient, fuzzy filter, T-S model

In this paper, we consider various approaches to the problem of filtering in nonlinear dynamic systems and their algorithms. The Strong Tracking Unscented Kalman Filter, based on the combination of Unscented Kalman Filter and Strong Tracking Kalman Filter, provides stability to the uncertainty of the process model directly using a suboptimal scaling factor (SSF). The softening coefficient is part of the SSF and it improves the smoothness of the system state assessment. The coefficient is determined empirically and is included in the entire filtering process, which leads to a loss of accuracy in the time segments in which the process model is defined. The paper explores the use of Takagi --- Sugeno fuzzy model (T-S model) to adjust in real time the softening coefficient when the object's dynamics changes. As a result of a comparative analysis of the accuracy of the studied filters for the nonlinear model, it was found that the new filter using a fuzzy logical adaptive system possesses good smoothness of assessment and the greatest accuracy

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