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UKF-based attitude determination method for gyroless satellite 被引量:7

UKF-based attitude determination method for gyroless satellite
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摘要 UKF (unscented Kalman filtering) is a new filtering method suitable to nonlinear systems. The method need not linearize nonlinear systems at the prediction stage of filtering, which is indispensable in EKF ( extended Kalman filtering) . As a result, the linearization error is avoided, and the filtering accuracy is greatly improved. UKF is applied to the attitude determination for gyroless satellite. Simulations are made to compare the new filter with the traditional EKF. The results indicate that under same conditions, compared with EKF, UKF has faster convergence speed, higher filtering accuracy and more stable estimation performance. UKF (unscented Kalman filtering) is a new filtering method suitable to nonlinear systems. The method need not linearize nonlinear systems at the prediction stage of filtering, which is indispensable in EKF ( extended Kalman filtering) . As a result, the linearization error is avoided, and the filtering accuracy is greatly improved. UKF is applied to the attitude determination for gyroless satellite. Simulations are made to compare the new filter with the traditional EKF. The results indicate that under same conditions, compared with EKF, UKF has faster convergence speed, higher filtering accuracy and more stable estimation performance.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2004年第2期105-109,共5页 系统工程与电子技术(英文版)
基金 This project was supported by the Innoviation Foundation of the Space Science and Technology Group.
关键词 unscented Kalman filtering attitude estimation gyroless nonlinear filtering. unscented Kalman filtering, attitude estimation, gyroless, nonlinear filtering.
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