Distributed Invariant Unscented Kalman Filter based on Inverse Covariance Intersection with Intermittent Measurements
This paper studies the problem of distributed state estimation (DSE) over sensor networks on matrix Lie groups, which is crucial for applications where system states evolve on Lie groups rather than vector spaces. We propose a diffusion-based distributed invariant Unscented Kalman Filter using the i...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
26.09.2024
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Subjects | |
Online Access | Get full text |
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Summary: | This paper studies the problem of distributed state estimation (DSE) over
sensor networks on matrix Lie groups, which is crucial for applications where
system states evolve on Lie groups rather than vector spaces. We propose a
diffusion-based distributed invariant Unscented Kalman Filter using the inverse
covariance intersection (DIUKF-ICI) method to address target tracking in 3D
environments. Unlike existing distributed UKFs confined to vector spaces, our
approach extends the distributed UKF framework to Lie groups, enabling local
estimates to be fused with intermediate information from neighboring agents on
Lie groups. To handle the unknown correlations across local estimates, we
extend the ICI fusion strategy to matrix Lie groups for the first time and
integrate it into the diffusion algorithm. We demonstrate that the estimation
error of the proposed method is bounded. Additionally, the algorithm is fully
distributed, robust against intermittent measurements, and adaptable to
time-varying communication topologies. The effectiveness of the proposed method
is validated through extensive Monte-Carlo simulations. |
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DOI: | 10.48550/arxiv.2409.17997 |