Abstract
Neural network models can quickly and accurately predict the aerodynamic performance of wind turbine airfoils based on existing data, but the construction of a large number of learning samples requires a high upfront time cost. To address this problem, a generalized regression neural network (GRNN) model of wind turbine airfoils based on a small sample set is established, and an optimal design method for airfoil aerodynamic performance under multiple constraints is proposed. This method is used to improve the prediction accuracy of the model in the optimization process and to solve the problem of insufficient learning caused by poor training data. Based on the established optimal design model, we applied the particle swarm optimization (PSO) algorithm to complete the optimal design of NACA44XX series airfoils and obtained the optimized airfoils with maximum relative thicknesses of 15 %, 18 %, 21 %, and 24 %, respectively. The aerodynamic characteristics of the new airfoils were analyzed in comparison with the baseline airfoils. The results show that the aerodynamic properties of the new airfoils are significantly improved, with the maximum lift coefficient and maximum lift-to-drag ratio increasing by up to 16.93 % and 10.41 %. Moreover, the optimization efficiency of the method is much higher than that of the traditional one. Thus, it was verified that the method is feasible and effective.
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Abbreviations
- C max :
-
Maximum relative camber
- T max :
-
Maximum relative thickness
- x C :
-
Maximum relative camber position
- x T :
-
Maximum relative thickness position
- R le :
-
Leading edge radius
- Re :
-
Reynolds number
- Ma :
-
Mach number
- C L :
-
Lift coefficient
- C D :
-
Drag coefficient
- C L/C D :
-
Lift-drag ratio
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Acknowledgements
This work is supported by the Chongqing Foundation and Frontier Project (Grant No. cstc2016jcyjA0448), Chongqing Municipal Education Commission Scientific Research Project (Grant No. KJ1600628) and Manufacturing Equipment Mechanism Design and Control Chongqing Key Laboratory Open Fund (Grant No. 1556031).
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Xudong Wang is a Professor at Chongqing Technology and Business University. He received his Ph.D. degree in Mechanical Design and Theory from Chongqing University, Chongqing, in Jun. 2009. From Sep. 2007 to Sep. 2008, he was a Joint Training Ph.D student with the School of Mechanical Engineering, the Technical University of Denmark. His research interests include dynamics of Machinery, optimization design and intelligent Vehicles.
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Wang, X., Ju, H. & Lu, J. Wind turbine airfoils optimization design by generalized regression neural network under small sample. J Mech Sci Technol 37, 217–228 (2023). https://doi.org/10.1007/s12206-022-1223-2
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DOI: https://doi.org/10.1007/s12206-022-1223-2