Design And Comparison Of Performance Of Dfig Based Wind Turbine With Pid Controller, Fuzzy Controller, Artificial Neural Network And Model Predictive Controller

被引:0
|
作者
Naresh K. [1 ]
Reddy P.U. [2 ]
Sujatha P. [1 ]
机构
[1] EEE Department, JNTUA Ananthapuramu, Ananthapuramu, 515002, Andhra Pradesh
[2] EEE Department, SVEC, Thirupati, 517102, Andhra Pradesh
来源
EAI Endorsed Trans. Energy Web | / 37卷 / 1-14期
关键词
Artificial Neural Network; Fuzzy Controller; Model Predictive Controller; Multimode Control Strategy; Pi Controller;
D O I
10.4108/eai.29-6-2021.170251
中图分类号
学科分类号
摘要
The Everyday Benefits Of Environmentally Friendly Power Sources Urges To Build Their Use To The Bigger Degree Of Which Wind Energy Is The Most Accessible Asset. This Paper Presents The Plan Of Multimode Hang Control Methodology Based Variable Speed Wind Power Age Framework. The Multimode Hang Control Procedure Improves The Framework To Work Regarding The Network Framework And Furthermore In The Independent Method Of Activity. The Multimode Control Methodology Utilizes The Dc Connect Voltage Regulator To Control The Dc Interface Capacitor Voltage For Working The Framework Side Converter And Current Regulator To Control Current And Force Of The Rotor Side Converter. The Control Methodology Is Investigated With The Customary Regulator Like Pi Regulator, Astute Regulators Like Fuzzy Regulator, Fake Neural Organization (Ann) And Model Prescient Regulator (Mpc) Which Predicts The Future Factors. A Correlation Has Been Performed With The Previously Mentioned Various Sorts Of Regulators Based Breeze Power Age Framework Regarding Various Boundaries. This Paper Likewise Includes Examination Of Various Experiments With The Previously Mentioned Regulators. The Examination Of Various Experiments With Various Regulators Has Been Performed Utilizing Matlab 2013a And Every One Of The Outcomes Are Checked © 2021 K. Naresh et al., licensed to EAI
引用
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页码:1 / 14
页数:13
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