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Multi-sensor optimal data fusion based on the adaptive fading unscented Kalman filter

journal contribution
posted on 2024-11-02, 06:42 authored by Bingbing Gao, Gaoge Hu, Shesheng Gao, Yongmin ZhongYongmin Zhong, Chengfan Gu
This paper presents a new optimal data fusion methodology based on the adaptive fading unscented Kalman filter for multi-sensor nonlinear stochastic systems. This methodology has a two-level fusion structure: at the bottom level, an adaptive fading unscented Kalman filter based on the Mahalanobis distance is developed and serves as local filters to improve the adaptability and robustness of local state estimations against process-modeling error; at the top level, an unscented transformation-based multi-sensor optimal data fusion for the case of N local filters is established according to the principle of linear minimum variance to calculate globally optimal state estimation by fusion of local estimations. The proposed methodology effectively refrains from the influence of process-modeling error on the fusion solution, leading to improved adaptability and robustness of data fusion for multi-sensor nonlinear stochastic systems. It also achieves globally optimal fusion results based on the principle of linear minimum variance. Simulation and experimental results demonstrate the efficacy of the proposed methodology for INS/GNSS/CNS (inertial navigation system/global navigation satellite system/celestial navigation system) integrated navigation.

History

Journal

Sensors

Volume

18

Number

488

Issue

2

Start page

1

End page

22

Total pages

22

Publisher

M D P I AG

Place published

Switzerland

Language

English

Copyright

© 2018 by the authors. Licensee MDPI, Basel, Switzerland.

Former Identifier

2006082237

Esploro creation date

2020-06-22

Fedora creation date

2018-09-20

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