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  • A Novel Observability Gramian-Based Fast Covariance Intersection Rule

    Author(s)
    Li, Wangyan
    Yang, Fuwen
    Wei, Guoliang
    Griffith University Author(s)
    Yang, Fuwen
    Li, Wangyan
    Year published
    2018
    Metadata
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    Abstract
    In this letter, a new type of fast covariance intersection (CI) rule to deal with unknown correlations is proposed. Different from the existing CI and its variants, our approach can obtain the optimized CI weights offline while preserving a guaranteed filtering accuracy and stability in the online implementation stage. To this end, the connection between the upper bound of the fused error covariances and the observability Gramian is first established. Next, the optimization of error covariances is converted into the optimization of observability Gramian, which is made of system matrices. Accordingly, the CI weights can be ...
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    In this letter, a new type of fast covariance intersection (CI) rule to deal with unknown correlations is proposed. Different from the existing CI and its variants, our approach can obtain the optimized CI weights offline while preserving a guaranteed filtering accuracy and stability in the online implementation stage. To this end, the connection between the upper bound of the fused error covariances and the observability Gramian is first established. Next, the optimization of error covariances is converted into the optimization of observability Gramian, which is made of system matrices. Accordingly, the CI weights can be calculated prior to the real implementation. Moreover, the stability result of the fusion is also established with the help of the proposed jointly uniform observability condition. At last, simulations are given to demonstrate the effectiveness of the proposed fast CI method.
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    Journal Title
    IEEE SIGNAL PROCESSING LETTERS
    Volume
    25
    Issue
    10
    DOI
    https://doi.org/10.1109/LSP.2018.2867741
    Subject
    Artificial intelligence
    Electrical engineering
    Communications engineering
    Publication URI
    http://hdl.handle.net/10072/382812
    Collection
    • Journal articles

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