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http://dx.doi.org/10.11003/JPNT.2020.9.3.221

Bearing-only Localization of GNSS Interference using Iterated Consider Extended Kalman Filter  

Park, Youngbum (Agency for Defense Development)
Song, Kiwon (Agency for Defense Development)
Publication Information
Journal of Positioning, Navigation, and Timing / v.9, no.3, 2020 , pp. 221-227 More about this Journal
Abstract
In this paper, the Iterated Consider Extended Kalman Filter (ICEKF) is proposed for bearing-only localization of GNSS interference to improve the estimation performance and filter consistency. The ICEKF is an extended version of Consider KF (CKF) for Iterated EKF (IEKF) to consider an effect of bearing measurement bias error to filter covariance. The ICEKF can mitigate the EKF divergence problem which can occur when linearizing the nonlinear bearing measurement by a large initial state error. Also, it can mitigate filter inconsistency problem of EKF and IEKF which can occur when a weakly observable bearing measurement bias error state is not included in filter state vector. The simulation result shows that the localization error of the ICEKF is smaller than the EKF and IEKF, and the Root Mean Square (RMS) estimation error of ICEKF matches the covariance of filter.
Keywords
GNSS; interference; bearing; EKF; ICEKFGNSS; interference; bearing; EKF; ICEKF;
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