Improved Kalman filtering through moment-based innovation gain strategies

This paper presents the moment-based Kalman filter (MKF), a novel sub-optimal estimation strategy designed to enhance robustness in systems subject to modeling uncertainties or external disturbances. Unlike the conventional Kalman filter, the MKF incorporates higher-order statistical moments of the...

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Published inProceedings of SPIE, the international society for optical engineering Vol. 13483; pp. 134830E - 134830E-8
Main Authors Hilal, Waleed, McCafferty-Leroux, Alex, Gadsden, Stephen A., Yawney, John
Format Conference Proceeding
LanguageEnglish
Published SPIE 21.05.2025
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ISBN9781510687554
1510687556
ISSN0277-786X
DOI10.1117/12.3053779

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Summary:This paper presents the moment-based Kalman filter (MKF), a novel sub-optimal estimation strategy designed to enhance robustness in systems subject to modeling uncertainties or external disturbances. Unlike the conventional Kalman filter, the MKF incorporates higher-order statistical moments of the innovation to inform its gain calculation, allowing for a more nuanced representation of the underlying noise and measurement error characteristics. The filter is structured as a predictor-corrector algorithm and maintains computational efficiency while offering improved adaptability in uncertain environments. A mathematical formulation of the MKF is provided, along with a proof of stability. Performance is evaluated using a simulated electrohydrostatic actuator (EHA) model undergoing a leakage fault. Results from the computational study demonstrate that the MKF provides more accurate state estimates than the standard Kalman filter, particularly under faulty or uncertain operating conditions.
Bibliography:Conference Location: Orlando, Florida, United States
Conference Date: 2025-04-13|2025-04-17
ISBN:9781510687554
1510687556
ISSN:0277-786X
DOI:10.1117/12.3053779