Dynamic Modeling and Control of Wind Turbine Scheme Based on Cage Generator for Power System Stability Studies

Mazhar Hussain Baloch, Jie Wang, Ghulam Sarwar Kaloi

Abstract


Among renewable sources, wind source is the more sympathetic and favorable source because it is free from pollution and no carbon die emissions as it appraised in conventional energy sources. Based on existing literature, the development of wind-generator dynamic model is of great interest nowadays. In this paper, a complete dynamic wind-generator mathematically modeling approaches for wind energy system is carried out. Moreover, due to uncertain wind speed circumstances, it is desirable to evaluate the state of the art stability and controller performance analysis for wind-generator unit through feedback control techniques based on field oriented control concept, which plays a significant role in power system stability and control. The proposed dynamic wind-generator system model consists of three phase cage rotor induction machine unit, and it is intended in Matlab software tool for the simulation purpose. The dynamic wind-generator system stability and control design has broadened prospectus for the applications and developments. 

Among renewable sources, wind source is the more sympathetic and favorable source because it is free from pollution and no carbon die emissions as it appraised in conventional energy sources. Based on existing literature, the development of wind-generator dynamic model is of great interest nowadays. In this paper, a complete dynamic wind-generator mathematically modeling approaches for wind energy system is carried out. Moreover, due to uncertain wind speed circumstances, it is desirable to evaluate the state of the art stability and controller performance analysis for wind-generator unit through feedback control techniques based on field oriented control concept, which plays a significant role in power system stability and control. The proposed dynamic wind-generator system model consists of three phase cage rotor induction machine unit, and it is intended in Matlab software tool for the simulation purpose. The dynamic wind-generator system stability and control design has broadened prospectus for the applications and developments.


Keywords


Nonlinear control systems, wind speed disturbances, wind-generator scheme modeling, and stability.

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References


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DOI (PDF): https://doi.org/10.20508/ijrer.v6i2.3877.g6824

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