In recent years, the airfoil sections with blunt trailing edges (called flatback airfoils) have been proposed for the inboard regions of large wind-turbine blades because they provide several structural and aerodynamic performance advantages. In this paper, a genetic algorithm is used for shape optimization of flatback airfoils for generating maximum lift-to-drag ratio. The computational efficiency of a genetic algorithm can be significantly enhanced with an artificial neural network. The commercially available software FLUENT is used for calculation of the flowfield using the Reynolds-averaged Navier-Stokes equations in conjunction with a turbulence model. It is shown that the genetic algorithm optimization technique is capable of accurately and efficiently finding globally optimal flatback airfoils.= maximum thickness of airfoil = angle of attack = artificial neural network learning rate = dynamic viscosity of air = air density
Shape optimization of transonic airfoils requires creating an airfoil that reduces the drag due to transonic shocks by either eliminating them or reducing their strength at a given transonic cruise speed while maintaining the lift. The RAE 2822 and NACA 0012 airfoils are most widely used test cases for validation of computational modeling in transonic flow. This study employs a multi-objective genetic algorithm for shape optimization of RAE 2822 and NACA 0012 airfoils to achieve two objectives, namely eliminating shock and maintaining or increasing the lift at a given transonic Mach number and angle of attack. The commercially available software FLUENT is employed for calculation of the flow field using the Reynolds-averaged Navier–Stokes equations in conjunction with a two-equation turbulence model. It is shown that the multi-objective genetic algorithm can generate superior airfoils compared with the original airfoils by achieving both the objectives.
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