Sensor Fault Estimation Using LPV Sliding Mode Observers with Erroneous Scheduling Parameters
Chen, L; Edwards, C; Alwi, H
Date: 12 December 2018
Journal
Automatica
Publisher
Elsevier
Publisher DOI
Abstract
This paper proposes a linear parameter-varying sliding mode observer for the purpose of simultaneously estimating the system
states and reconstructing sensor faults. Furthermore, some of the measured scheduling parameters are also assumed to be
unreliable, and the corresponding values used in the observer are adapted to maintain the ...
This paper proposes a linear parameter-varying sliding mode observer for the purpose of simultaneously estimating the system
states and reconstructing sensor faults. Furthermore, some of the measured scheduling parameters are also assumed to be
unreliable, and the corresponding values used in the observer are adapted to maintain the performance level of the observer.
The adaptive algorithm is driven by the ‘equivalent output error injection’ signal associated with the reduced-order sliding
motion. Sufficient conditions are given to ensure asymptotic stability of the state estimation error system, ensuring both the
state estimation errors and the estimation errors associated with the scheduling parameters converge to zero. The efficacy of
the scheme has been evaluated based upon an industrial high-fidelity aircraft benchmark scenario involving a simultaneous
total loss of airspeed and angle of attack measurements.
Engineering
Faculty of Environment, Science and Economy
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