General model for automatic design optimisation of aerodynamic components. Wind tunnel case study
Keywords:
aerodynamic optimisation, wind tunnel design, optimisation methodology, multi-attribute, structured optimisation, hybrid direct search, swarm search, variable hierarchy, geometry parameterisation, computational fluid dynamics.Abstract
Trial and error is still the current approach for the design of
many complex aerodynamic components, although extensive
research is being carried out in automated optimisation
methods. Thereafter these designs are computer simulated
using Computational Fluid Dynamics (CFD). Some optimisation
tools are used, at most, for the final fine-tuning. This paper
proposes the use of a robust, efficient and automated
optimisation methodology throughout the whole design
process. The use of these methodologies can yield improved
yet not conventional designs, while reducing the design cycle
time. This paper presents the development of an original,
general methodology based on a multi-attribute, structured
optimisation, following a so-called Hybrid Direct Search
(HDS), which combines genetic, gradient and swarm search
intelligence. An example case study of a wind tunnel shape
optimisation is presented. The main contributions of this paper
are the exploitation of the concepts of variable hierarchy
and variable value change (i.e. optimisation phases) and the
HDS optimisation method, which allows for an intelligent
and efficient direct search in complex aerodynamic problems
in which the use of surrogate based optimisation is not
accurate enough. This optimisation methodology is applicable
to advanced aerodynamic design in cars, aircraft, high-speed
trains, etc.
• Keywords: aerodynamic optimisation, wind tunnel design,
optimisation methodology, multi-attribute, structured
optimisation, hybrid direct search, swarm search, variable
hierarchy, geometry parameterisation, computational fluid
dynamics