Habib Ghanbarpour AslSeid H. Pourtakdoust
Extended Kalman Filter (EKF) is probably the most widely used estimation algorithm for nonlinear systems. However, not only it has difficulties arising from linearization but also many times it becomes numerically unstable because of computer round off errors that occur in the process of its implementation. To overcome linearization limitations, the unscented transformation (UT) was developed as a method to propagate mean and covariance information through nonlinear transformations. Kalman filter that uses UT for calculation of the first two statistical moments is called Unscented Kalman Filter (UKF). Square-root form of UKF (SRUKF) developed by Rudolph van der Merwe and Eric Wan to achieve numerical stability and guarantee positive semi-definiteness of the Kalman filter covariances. This paper develops another implementation of SR-UKF for sequential update measurement equation, and also derives a new UD covariance factorization filter for the implementation of UKF. This filter is equivalent to UKF but is computationally more efficient.
Chalukya BhatAniruddh HerleJanamejaya ChannegowdaKali Naraharisetti
Zili DengPeng ZhangWenjuan QiJinfang LiuYuan Gao
Zhansheng DuanX.R. LiChongzhao HanHongyan Zhu
Aiping WangHongliang HuangHai Zhang