EN
An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network
Abstract
In this research, an optimization of a wind turbine airfoil is performed by Genetic Algorithm (GA) as optimization method, coupled with CFD (Computational Fluid Dynamics) and Artificial Neural Network (ANN). A pressure-based implicit procedure is applied to solve the Navier-Stokes equations on a nonorthogonal mesh with collocated finite volume formulation to calculate the aerodynamic coefficients. The boundedness criteria for the numerical procedure are determined by Normalized Variable Diagram (NVD) scheme and the k-ε eddy-viscosity turbulence model is utilized. ANN has been used as surrogate model to reduce computational cost and time. Single objective and multi objective optimization of wind turbine airfoil have been performed and the results of optimization are presented. To decrease the number of design variables and producing a smooth shaped airfoil, modified Hicks-Henne functions are applied. In this process, the Eppler E387 airfoil has been applied as the base airfoil. The angle of attack varies from 0 to 20 degrees and Reynolds number of the flow is 460000. The presented technique decreases the time of optimization by 99.5%. Moreover, the results manifest the good agreement of trained ANN outputs and CFD simulation. In addition, the Multi-objective optimization can attain the better solutions than single objective to design a wind turbine airfoil with good stall characteristics.
Keywords
References
- W. Li, L. Huyse, and S. Padula, "Robust airfoil optimization to achieve drag reduction over a range of Mach numbers," Structural and Multidisciplinary Optimization, vol. 24, pp. 38-50, 2002/08/01 2002.
- B. Howard, Z. Beckett, and Z. David, "Airfoil Optimization Using Practical Aerodynamic Design Requirements," in 27th AIAA Applied Aerodynamics Conference, ed: American Institute of Aeronautics and Astronautics, 2009.
- U. K. Wickramasinghe, R. Carrese, and L. Xiaodong, "Designing airfoils using a reference point based evolutionary many-objective particle swarm optimization algorithm," in Evolutionary Computation (CEC), 2010 IEEE Congress on, 2010, pp. 1-8.
- E. S. Tashnizi, A. A. Taheri, and M. H. Hekmat, "Investigation of the adjoint method in aerodynamic optimization using various shape parameterization techniques," Journal of the Brazilian Society of Mechanical Sciences and Engineering, vol. 32, pp. 176- , 2010.
- H. Rui, J. Antony, and W. Qiqi, "Adjoint based aerodynamic optimization of supersonic biplane airfoils," in 49th AIAA Aerospace Sciences Meeting including the New Horizons Forum and Aerospace Exposition, ed: American Institute of Aeronautics and Astronautics, M. H. Mohamed, G. Janiga, E. Pap, and D. Thévenin, "Multi-objective optimization of the airfoil shape of Wells turbine used for wave energy conversion," Energy, vol. 36, pp. 438-446, 2011.
- S. Paul and B. Ruxandra, "Two-dimensional airfoil shape optimization for airfoils at low speeds," in AIAA Modeling and Simulation Technologies Conference, ed: American Institute of Aeronautics and Astronautics, T. Winnemöller and C. P. Van Dam, "Design and Numerical Optimization of Thick Airfoils Including Blunt Trailing Edges," Journal of Aircraft, vol. 44, pp. 240, 2007/01/01 2007.
- X. Mauclère, "Automatic 2D Airfoil Generation, Evaluation and Optimisation using MATLAB and XFOIL," Master of science, Mechanical Engineering Department section of fluid mechanics, Technical University of Denemark, 2009.
- C. Thumthae and T. Chitsomboon, "Optimal angle of attack for untwisted blade wind turbine," Renewable Energy, vol. 34, pp. 1279-1284, 5// 2009.
Details
Primary Language
English
Subjects
-
Journal Section
-
Publication Date
December 1, 2013
Submission Date
February 3, 2016
Acceptance Date
-
Published in Issue
Year 2013 Volume: 3 Number: 4
APA
Bidarouni, A. L., & Djavareshkian, M. H. (2013). An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network. International Journal Of Renewable Energy Research, 3(4), 993-1003. https://izlik.org/JA87TM57GB
AMA
1.Bidarouni AL, Djavareshkian MH. An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network. International Journal Of Renewable Energy Research. 2013;3(4):993-1003. https://izlik.org/JA87TM57GB
Chicago
Bidarouni, Amir Latifi, and Mohammad Hasan Djavareshkian. 2013. “An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network”. International Journal Of Renewable Energy Research 3 (4): 993-1003. https://izlik.org/JA87TM57GB.
EndNote
Bidarouni AL, Djavareshkian MH (December 1, 2013) An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network. International Journal Of Renewable Energy Research 3 4 993–1003.
IEEE
[1]A. L. Bidarouni and M. H. Djavareshkian, “An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network”, International Journal Of Renewable Energy Research, vol. 3, no. 4, pp. 993–1003, Dec. 2013, [Online]. Available: https://izlik.org/JA87TM57GB
ISNAD
Bidarouni, Amir Latifi - Djavareshkian, Mohammad Hasan. “An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network”. International Journal Of Renewable Energy Research 3/4 (December 1, 2013): 993-1003. https://izlik.org/JA87TM57GB.
JAMA
1.Bidarouni AL, Djavareshkian MH. An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network. International Journal Of Renewable Energy Research. 2013;3:993–1003.
MLA
Bidarouni, Amir Latifi, and Mohammad Hasan Djavareshkian. “An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network”. International Journal Of Renewable Energy Research, vol. 3, no. 4, Dec. 2013, pp. 993-1003, https://izlik.org/JA87TM57GB.
Vancouver
1.Amir Latifi Bidarouni, Mohammad Hasan Djavareshkian. An Optimization of Wind Turbine Airfoil Possessing Good Stall Characteristics by Genetic Algorithm Utilizing CFD and Neural Network. International Journal Of Renewable Energy Research [Internet]. 2013 Dec. 1;3(4):993-1003. Available from: https://izlik.org/JA87TM57GB