A special and effective aerodynamics calculation method has been applied for the flow field around a body of revolution to find the drag coefficient for a wide range of Reynolds numbers. The body profile is described by a first order continuous axial singularity distribution. The solution of the direct problem then gives the radius and inviscid velocity distribution. Viscous effects are considered by means of an integral boundary layer procedure, and for determination of the transition location the forced transition criterion is applied. By avoiding those profiles, which result in the separation of the boundary layer, the drag can be calculated at the end of the body by using Young's formula. In this study, a powerful optimization procedure known as a Genetic Algorithms (GA) is used for the first time in the shape optimization of airship hulls. GA represents a particular artificial intelligence technique for large spaces, striking a remarkable balance between exploration and exploitation of search space. This method could reach to minimum objective function through a better path, and also could minimize the drag coefficient faster for different Reynolds number regimes. It was found that GA is a powerful method for such multi-dimensional, multi-modal and nonlinear objective function.
Aerodynamics design and genetic algorithms for optimization of airship bodies
Aerodynamischer Entwurf und Formoptimierung eines Luftschiffs mit einem genetischen Algorithmus
JSME International Journal, Series B (Fluids and Thermal Engineering) ; 46 , 4 ; 610-617
2003
8 Seiten, 11 Bilder, 1 Tabelle, 16 Quellen
Aufsatz (Zeitschrift)
Englisch
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