Fault Tolerant Indoor Positioning Based on Federated Kalman Filter

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Date

2024

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Volume Title

Publisher

Springer

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Green Open Access

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Abstract

In this article, multi-sensor indoor positioning, which is based on fusing tri-laterated position data of the target, is considered. A novel method, which is based on federated Kalman filtering and makes use of the fingerprint data, namely, federated Kalman filter with skipped covariance updating (FKF-SCU) is proposed. The data collected on two test beds are used in comparing the performances of the proposed algorithm and that of the regular federated filter. It is shown that the proposed algorithm provides fault tolerance and quick recovery, whenever signal reception from an access point is interrupted, as well as an improvement of 12.57% on the position accuracy.

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Keywords

Indoor positioning, Federated Kalman filter, Sensor fusion, Fault tolerance

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Q3

Scopus Q

Q2
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Source

Journal of Signal Processing Systems

Volume

96

Issue

Start Page

273

End Page

285
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Scopus : 3

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3

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