This course intends to provide the basic concepts and tools
behind this technology, both in single discipline and
multidisciplinary context. Subjects which will be treated in
detail include: gradient based and steepest descent methods,
adjoint methods, one shot or goal oriented methods,
evolutionary/differential evolution algorithms on parallel
environments, game strategies, parameterization, surrogate
and reduced-order
modeling, multifidelity modeling approaches, robust design.
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Innovative
optimization and design techniques for modern aircraft
(manned or UAV/UCAV) and engine systems aiming at maximum
performance in a multidisciplinary context (aerodynamic
efficiency, safety, drag, losses, weight, strength, heat
fluxes, emission, noise), are now rapidly moving from
research labs to industrial real and virtual platforms. To
reach concurrently this level of excellence, emergent
optimization methodologies require more and more robust and
efficient associated software for a daily use in industrial
collaborative design environments.
This course intends to
provide the basic concepts and tools behind this technology,
both in single discipline (single point or multi point
design) and multidisciplinary (fluid-structure interaction,
fluid-acoustics, conjugate heat transfer) context.
Subjects which will be treated in detail include: gradient
based and steepest descent methods, adjoint methods, one
shot or goal oriented methods, evolutionary/differential
evolution algorithms on parallel environments, game
strategies like Pareto Fronts and Nash Equilibrium,
parameterization, surrogate and reduced-order modeling
(Radial Basis functions, Artificial Neural Networks,
Kriging), multifidelity modeling approaches, robust design. The content of this Course is oriented towards junior and
experienced engineers and researchers involved in the field
of multi disciplinary design and looking for innovative
numerical solutions - or set of solutions- for complex multi
criteria optimization problems.
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