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Modelling of Wind Turbine Generator Using Simulink

Madhu B. R., Shahbaaz Ahmed, Vaishnavi .

Abstract


The need forof wind energy for the generation of power has gained significant interest in the field of electrical power production due to, the abundant and easily accessible nature of wind as an unpolluted and sustainable energy source that is not impacted by environmental factors. This study examined the consequences of energy generated by wind turbines using modelling and simulation. The two most significant factors effecting affecting strength conversion are the swept area and wind speed. The air pressure, temperature, air density, wind speed, and blade length all affect a wind turbine's performance.. Analysis of a wind turbine’s total performance, including its power production, reactive power, wind speed, and torque, is done through modelling and simulation. The software provides an intuitive graphical user interface that facilitates the creation, construction, and verification of mathematical models


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