Operations of the doubly-fed induction generators (DFIGs) without mechanical sensors
are highly desirable in order to enhance the reliability of the wind generation systems. This article
proposes a limited-position set model-reference adaptive observer (LPS-MRAO) for control of DFIGs
in wind turbine systems (WTSs) without mechanical sensors, i.e., without incremental encoders or
speed transducers. The concept of of the developed LPS-MRAO is obtained from the finite-set model
predictive control (FS-MPC). In the proposed LPS-MRAO, an algorithm is presented in order to give a
constant number of angles for the rotor position of the DFIG. By using these angles, a certain number
of rotor currents can be predicted. Then, a new quality function is defined to find the best angle
of the rotor. In the proposed LPS-MRAO, there are not any gains to tune like the classical MRAO,
where a proportional-integral is used and must be tuned. Finally, the proposed LPS-MRAO and
classical one are experimentally implemented in the laboratory and compared at various operation
scenarios and under mismatches in the parameters of the DFIG. The experimental results illustrated
that the estimation performance and robustness of the proposed LPS-MRAO are better than those of
the classical one.
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Operations of the doubly-fed induction generators (DFIGs) without mechanical sensors
are highly desirable in order to enhance the reliability of the wind generation systems. This article
proposes a limited-position set model-reference adaptive observer (LPS-MRAO) for control of DFIGs
in wind turbine systems (WTSs) without mechanical sensors, i.e., without incremental encoders or
speed transducers. The concept of of the developed LPS-MRAO is obtained from the finite-set model
predictive cont...
»