JOURNAL ARTICLE

Adaptive high‐degree cubature Kalman filter in the presence of unknown measurement noise covariance matrix

Hong XuHuadong YuanKeqing DuanWenchong XieYongliang Wang

Year: 2019 Journal:   The Journal of Engineering Vol: 2019 (19)Pages: 5697-5701   Publisher: Institution of Engineering and Technology

Abstract

Here, the authors address the state estimation problem of non‐linear systems in the presence of unknown measurement noise (MN) covariance matrix. Recently, a high‐degree cubature Kalman filter (HCKF) has been successfully used in the non‐linear‐state estimation problem with arbitrary degrees of accuracy in computing the spherical and radial integrals. However, the efficiency of the HCKF depends on a priori knowledge of the MN. To improve the performance of HCKF for non‐linear systems with unknown MN covariance matrix, the authors proposed an adaptive HCKF, which combines the high‐degree cubature rule with the variational Bayesian (VB) method to jointly estimate the system state and the unknown covariance matrix online. Experimental results demonstrate the effectiveness of the proposed filter.

Keywords:
Covariance matrix Kalman filter Covariance A priori and a posteriori Noise (video) Ensemble Kalman filter Fast Kalman filter Matrix (chemical analysis) Filter (signal processing) Covariance intersection Degree (music) Extended Kalman filter Invariant extended Kalman filter Mathematics Computer science Algorithm Estimation of covariance matrices Control theory (sociology) Applied mathematics Statistics Artificial intelligence Physics Computer vision

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5
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0.77
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14
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0.78
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