In order to improve reliability of wind turbines, it is important to detect and isolate faults as fast as possible, and handle them in an optimal way. An important component in modern wind turbines is the converter, which for a wind turbine control point–of–view normally provides the torque acting on the wind turbine generator, as well as measurement of this torque. In this work, a diagnosis strategy based on fuzzy prototypes is presented, in order to detect these faults in the converter, and isolate them either to be an actuator or a sensor fault. The fuzzy system is used since the model under investigation is nonlinear, whilst the wind speed measurement is highly noisy, due to the turbulence around the rotor plane. The fuzzy system consists of a set of piecewise affine Takagi–Sugeno models, which are identified from the noisy measurements acquired from the simulated wind turbine. The fault detection and isolation strategy is thus designed based on these fuzzy models. The wind turbine simulator is finally used to validate the achieved performances of the suggested fault detection and isolation scheme.

Data–Driven Approach for Wind Turbine Actuator and Sensor Fault Detection and Isolation / S. Simani; P. Castaldi; A. Tilli. - ELETTRONICO. - (2011), pp. 8301-8306. (Intervento presentato al convegno 18th International Federation of Automatic Control World Congress tenutosi a Milano (Italy) nel August 28 - September 2, 2011) [10.3182/20110828-6-IT-1002.00447].

Data–Driven Approach for Wind Turbine Actuator and Sensor Fault Detection and Isolation

CASTALDI, PAOLO;TILLI, ANDREA
2011

Abstract

In order to improve reliability of wind turbines, it is important to detect and isolate faults as fast as possible, and handle them in an optimal way. An important component in modern wind turbines is the converter, which for a wind turbine control point–of–view normally provides the torque acting on the wind turbine generator, as well as measurement of this torque. In this work, a diagnosis strategy based on fuzzy prototypes is presented, in order to detect these faults in the converter, and isolate them either to be an actuator or a sensor fault. The fuzzy system is used since the model under investigation is nonlinear, whilst the wind speed measurement is highly noisy, due to the turbulence around the rotor plane. The fuzzy system consists of a set of piecewise affine Takagi–Sugeno models, which are identified from the noisy measurements acquired from the simulated wind turbine. The fault detection and isolation strategy is thus designed based on these fuzzy models. The wind turbine simulator is finally used to validate the achieved performances of the suggested fault detection and isolation scheme.
2011
Proceedings of the 18th IFAC World Congress
8301
8306
Data–Driven Approach for Wind Turbine Actuator and Sensor Fault Detection and Isolation / S. Simani; P. Castaldi; A. Tilli. - ELETTRONICO. - (2011), pp. 8301-8306. (Intervento presentato al convegno 18th International Federation of Automatic Control World Congress tenutosi a Milano (Italy) nel August 28 - September 2, 2011) [10.3182/20110828-6-IT-1002.00447].
S. Simani; P. Castaldi; A. Tilli
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/106950
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