ANZCC 2017 Paper Abstract

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Habibi, Hamed (Faculty of Science and Engineering, School of Civil and Mechanic), Rahimi Nohooji, Hamed (Curtin University, Perth, Australia), howard, Ian (Faculty of Science and Engineering, School of Civil and Mechanic)

A Neuro-Adaptive Maximum Power Tracking Control of Variable Speed Wind Turbines with Actuator Faults

Scheduled for presentation during the Regular Session "Power Control Systems" (MoDOr), Monday, December 18, 2017, 14:00−14:15, Room 7

2017 Australian and New Zealand Control Conference, December 17-20, 2017, Gold Coast Convention Centre, Australia

This information is tentative and subject to change. Compiled on April 24, 2024

Keywords Control Applications, Nonlinear Systems and Control, Fault Detection

Abstract

This paper presents a neural adaptive fault tolerant control design of wind turbines in partial load operation. The controller is designed to be robust against actuator faults as well as noise, while keeping the wind turbine generating as much power as possible. The wind speed variation is considered as an external disturbance, and an adaptive radial basis function neural network is utilized to estimate aerodynamic torque. Estimation of a fault size and establishment of a desired trajectory are adopted in the design. Using the proposed method, the reliability of wind power generation is increased so as to track the optimum power point under faulty conditions, close to the fault free case. Uniformly ultimately boundedness of the closed-loop system is achieved using Lyapunov synthesis. The designed controller is verified via numerical simulations, showing comparison with an industrial reference controller, using predefined criteria.

 

 

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