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Two-Stage Extended Kalman Filters with Derivative-Free Local Linearizations
Published in
2011
Volume: 137
   
Issue: 8
Pages: 537 - 546
Abstract
This paper proposes a derivative-free two-stage extended Kalman filter (2-EKF) especially suited for state and parameter identification of mechanical oscillators under Gaussian white noise. Two sources of modeling uncertainties are considered: (1) errors in linearization, and (2) an inadequate system model. The state vector is presently composed of the original dynamical/parameter states plus the so-called bias states accounting for the unmodeled dynamics. An extended Kalman estimation concept is applied within a framework predicated on explicit and derivative-free local linearizations (DLL) of nonlinear drift terms in the governing stochastic differential equations (SDEs). The original and bias states are estimated by two separate filters; the bias filter improves the estimates of the original states. Measurements are artificially generated by corrupting the numerical solutions of the SDEs with noise through an implicit form of a higher-order linearization. Numerical illustrations are provided for a few single- and multidegree-of-freedom nonlinear oscillators, demonstrating the remarkable promise that 2-EKF holds over its more conventional EKF-based counterparts. © 2011 American Society of Civil Engineers.
About the journal
JournalJournal of Engineering Mechanics
ISSN07339399
Open AccessNo
Concepts (34)
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    DERIVATIVE-FREE
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    Gaussian white noise
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    Higher order
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    IMPLICIT FORM
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    KALMAN ESTIMATION
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    LOCAL LINEARIZATION
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    Mechanical oscillators
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    MODELING UNCERTAINTIES
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    MULTI DEGREE-OF-FREEDOM
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    Non-linear oscillators
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    NONLINEAR DRIFTS
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    Numerical solution
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    Parameters
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    State vector
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    STOCHASTIC DIFFERENTIAL EQUATIONS
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    System models
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    Two sources
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    Two stage
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    Uncertainty principles
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    Unmodeled dynamics
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    Differential equations
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    Extended kalman filters
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    Identification (control systems)
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    Nonlinear equations
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    Oscillators (mechanical)
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    Position control
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    White noise
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    Linearization
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    Estimation method
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    Kalman filter
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    Numerical method
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    Numerical model
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    Stochasticity
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    Uncertainty analysis