Dynamic sliding mode control of pitch blade wind turbine using sliding mode observer

Author:

Karami-Mollaee Ali1ORCID,Shojaei Ali Asghar2,Barambones Oscar3,Fauzi Othman Mohd4

Affiliation:

1. Electrical and Computer Engineering Faculty, Hakim Sabzevari University, Iran

2. Department of Electrical Engineering, Islamic Azad University - Neyshabur Branch, Iran

3. Automatic Control and System Engineering Department, University of the Basque Country (UPV/EHU), Spain

4. Center of Artificial Intelligence and Robotic, University Technology Malaysia, Malaysia

Abstract

In a wind turbine (WT), the maximum power can be achieved using a suitable and smooth signal, which should be applied to the pitch angle of the blades (PABLE). On the contrary, the uncertainties of the WT models cause the fatigue due to the mechanical stresses. To overcome these two problems, dynamic sliding mode control (D-SMC) is used because it is robust against uncertainties and can suppress the chattering by providing smooth signals. In D-SMC, an integrator is located before the actuator, as a low-pass filter, to suppress the high-frequency chattering. Then, the states number of the overall augmented system is one more than the states number of the actual system. To control such an augmented system, the added state variable needs to be estimated and hence, a novel sliding mode observer (SMO) is proposed. A trusty comparison is also presented using the conventional sliding mode control (C-SMC) with the proposed SMO. To implement D-SMC and C-SMC, a new state feedback is applied to the turbine at first. Therefore, a linear model with uncertainty is obtained, where its input is the PABLE. Lyapunov theory is used to proof the stability of the proposed SMO, D-SMC, and also the C-SMC. The presented comparison demonstrates the advantages of the D-SMC with respect to the C-SMC in removing the chattering and simplicity in concept and in implementation.

Publisher

SAGE Publications

Subject

Instrumentation

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