Particle-filtering-based failure prognosis via sigma-points: Application to Lithium-Ion battery State-of-Charge monitoring
This paper presents a novel prognostic method that allows a proper characterization of the uncertainty associated with the evolution in time of nonlinear dynamical systems. The method assumes a state-space representation of the system, as well as the availability of particle-filtering-based estimate...
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Veröffentlicht in: | Mechanical systems and signal processing 2017-02, Vol.85, p.827-848 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | This paper presents a novel prognostic method that allows a proper characterization of the uncertainty associated with the evolution in time of nonlinear dynamical systems. The method assumes a state-space representation of the system, as well as the availability of particle-filtering-based estimates of the state posterior density at the moment in which the prognostic algorithm is executed. Our proposal significantly improves all particle-filtering-based prognosis frameworks currently available in two main aspects. First, it provides a correction for the expression that is used for the computation of the Time-of-Failure (ToF) probability mass function in the context of online monitoring schemes. Secondly, it presents a method for improved characterization of the tails of the ToF probability mass function via sequential propagation of sigma-points and the computation of Gaussian Mixture Models (GMMs). The proposed algorithm is tested and validated using experimental data related to the problem of Lithium-Ion battery State-of-Charge prognosis.
•Novel definition for Time-of-Failure (ToF) probability applied to online prognosis.•Novel prognosis algorithm based on Gaussian Mixture Models and sigma-points.•Improves the characterization of the tails of the ToF probability mass function.•Algorithm tested and validated for battery State-of-Charge prognosis. |
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ISSN: | 0888-3270 1096-1216 |
DOI: | 10.1016/j.ymssp.2016.08.029 |