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http://dx.doi.org/10.5916/jkosme.2012.36.7.919

A Suggestion of Fuzzy Estimation Technique for Uncertainty Estimation of Linear Time Invariant System Based on Kalman Filter  

Kim, Jong Hwa (Korea Maritime University, Division of IT Engineering)
Ha, Yun Su (Korea Maritime University, Division of IT Engineering)
Lim, Jae Kwon (Korea Maritime University, Graduate School)
Seo, Soo Kyung (Korea Maritime University, Graduate School)
Abstract
In order to control a LTI(Linear Time Invariant) system subjected to system noise and measurement noise, first of all, it is necessary to estimate the state of system with reliability. Kalman filtering technique has been widely used to estimate the state of the stochastic LTI system with stationary noise characteristics because of its estimation ability versus algorithm simplicity. However, it often fails to estimate the state of the LTI system of which system parameter uncertainty exists partly and/or input uncertainty exists. In this paper, a new estimation technique based on Kalman filter is suggested for stochastic LTI system under parameter uncertainty and/or input uncertainty. A fuzzy estimation algorithm against uncertainties is introduced so as to compensate the state estimate filtered by Kalman filter. In order to verify the state estimation performance of the suggested technique, several simulations are accomplished.
Keywords
Kalman filter; Stochastic LTI system; Uncertainty; Fuzzy estimation; Innovation process;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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